Vorbesprechung am , 15:20-17:00 Uhr

Size: px
Start display at page:

Download "Vorbesprechung am 17.10.2013, 15:20-17:00 Uhr"

Transcription

1 Programmierung eines graphischen Systems Fortgeschrittene Programmierung eines graphischen Systems Prof. Fellner, Prof. Goesele, Priv.-Doz. Kuijper, Hon.-Prof. Sakas, Hon.-Prof. Stork, Dr. von Landesberger Vorbesprechung am , 15:20-17:00 Uhr Graphisch-Interaktive Systeme (GRIS) Technische Universität Darmstadt Fraunhofer IGD Fraunhoferstraße 5 Fraunhoferstraße Darmstadt Darmstadt

2 Willkommen am Fachgebiet GRIS! GRIS Arbeitsgebiete Semantic Models, Immersive Systems (Prof. Dr.-techn. Dieter Fellner) Graphics, Capture and Massively Parallel Computing (Prof. Dr.-Ing. Michael Goesele) Visual Inference (Prof. Stefan Roth, Ph.D.) Medical Computing (Hon.-Prof. Dr.-Ing. Georgios Sakas) Virtual Engineering (Hon.-Prof. Dr.-Ing. Andre Stork) Mathematical and Applied Visual Computing (Priv.-Doz. Dr. Arjan Kuijper) Visual Search and Analysis (Dr.-Ing. Tatiana von Landesberger) FB Informatik GRIS Praktikums-Container WiSe 2013 /

3 Willkommen am Fraunhofer IGD! Interactive Multimedia Appliances Interactive Engineering Technologies Information Visualization and Visual Analytics Virtual and Augmented Reality Spatial Information Management Cognitive Computing & Medical Imaging Identification and Biometrics Visual Computing System Technologies Cultural Heritage Digitization Interactive Document Engineering Maritime Graphics 3D Druck Interactive Digital Media FB Informatik GRIS Praktikums-Container WiSe 2013 /

4 Allgemeines Semesterbegleitendes Praktikum (I und II) Typ P4, 4 SWS, 6 Credit Points Praktische Programmieraufgaben zu einem speziellen Anwendungsgebiet der graphischen Datenverarbeitung Breites Spektrum an Fragestellungen Breites Spektrum an Entwicklungsumgebungen Bezug aus aktuellen Forschungsprojekten bei GRIS und IGD Details: zu klären mit dem/r jeweiligen Betreuer/in des Themas Themenvorstellung gleich im Anschluss Organisatorisches: GRIS-Sekretariat Frau Carola Eichel, S , Tel , FB Informatik GRIS Praktikums-Container WiSe 2013 /

5 Jürgen Bernard Visuelle Suche in zeitbasierten Patientendaten FB Informatik GRIS Praktikums-Container WiSe 2013 /

6 Visual Search in Time-oriented Patient Data Motivation: Supporting Cancer Treatment research with Visual Analytics Identification of similar patient cohorts Problem: How to select Patients with similar hormone progressions? Task: Extend a patient analysis system with Timebox Widgets [1] for time series querying Pre-condition: good Java programming [1] Hochheiser, Harry, and Ben Shneiderman. "Dynamic query tools for time series data sets: timebox widgets for interactive exploration." Information Visualization 3.1 (2004): FB Informatik GRIS Praktikums-Container WiSe 2013 /

7 Kontakt Jürgen Bernard Abteilung IVA (IGD) Raum: 212 Tel.: FB Informatik GRIS Praktikums-Container WiSe 2013 /

8 Sebastian Maier Explorative Analysis FB Informatik GRIS Praktikums-Container WiSe 2013 /

9 Explorative Analysis Motivation Support the research process Task Optimize the visual representation Encode more data in the view Edge Bundling Multiple linked (switchable) views Adding more input data Adding additional Data Mining techniques in the preprocessing pipeline FB Informatik GRIS Praktikums-Container WiSe 2013 /

10 Contact IGD / Informationsvisualisierung und Visual Analytics Sebastian Maier Room: 214 Tel: Jürgen Bernard Room: 212 Tel: FB Informatik GRIS Praktikums-Container WiSe 2013 /

11 Betreuer: Matthias Bein Integration of ZSpace or LEAP Motion FB Informatik GRIS Praktikums-Container WiSe 2013 /

12 Integration of ZSpace or LEAP Motion Motivation: Immersive and natural interaction Task: Integrate the SDK of Zspace or LEAP Motion into our RPE framework and create a simple demonstration application Pre-condition: good C++ programming knowledge about transformation matrices scene graph representation of advantage interest in geometry processing and interactive applications FB Informatik GRIS Praktikums-Container WiSe 2013 /

13 Kontakt Matthias Bein IET - Interactive Engineering Technologies Raum: 210 Tel.: FB Informatik GRIS Praktikums-Container WiSe 2013 /

14 Andreas Stein Cloud-based apps for 3D models FB Informatik GRIS Praktikums-Container WiSe 2013 /

15 Topics Geospatial visualization Simulation Data management FB Informatik GRIS Praktikums-Container WiSe 2013 /

16 Cloud-based apps for 3D models Motivation: Real world data Problem: Huge data, complex algorithms Task: Develop app e.g. Shadow analysis Flooding simulation Magnetic fields of power infrastructure Noise transmission of wind turbines Pre-condition: good Java programming, interest in geoinformatics FB Informatik GRIS Praktikums-Container WiSe 2013 /

17 Kontakt Michel Krämer Abteilung: Geoinformationsmanagement Raum: 107 Tel.: Andreas Stein Abteilung: Geoinformationsmanagement Raum: 108 Tel.: FB Informatik GRIS Praktikums-Container WiSe 2013 /

18 Olga Kähm 2D FACE LIVENESS DETECTION FB Informatik GRIS Praktikums-Container WiSe 2013 /

19 2D Face Liveness Detection Motivation: Task: Prevention of spoof attacks on 2D face recognition systems Implement and test 2D face liveness detection algorithm Discuss possible improvements and modifications Pre condition: C++ skills Interest in Computer Vision FB Informatik GRIS Praktikums-Container WiSe 2013 /

20 Contact Olga Kähm Fraunhofer IGD Competence Center Identification and Biometrics FB Informatik GRIS Praktikums-Container WiSe 2013 /

21 Moazzam Butt IMAGE BASED DOCUMENT SEAL FB Informatik GRIS Praktikums-Container WiSe 2013 /

22 Image based Document Seal Motivation: Increase the security of ID or breeder documents Problem: Comparison of facial image in document with live face Task: Implement and test face verification algorithm Pre-condition: Interest in Biometrics C++ programming skills Feature Extraction FB Informatik GRIS Praktikums-Container WiSe 2013 /

23 Contact Moazzam Butt Fraunhofer IGD Competence Center Identification and Biometrics FB Informatik GRIS Praktikums-Container WiSe 2013 /

24 Moazzam Butt FINGERPRINT ORIENTATION FIELD EXTRACTION FB Informatik GRIS Praktikums-Container WiSe 2013 /

25 Fingerprint orientation field extraction Motivation: Improving fingerprint fuzzy vault security Problem: Extract fingerprint orientation field to generate artificial minutes Task: Implement and test orientation field extraction algorithm Pre-condition: Interest in image processing C++ programming skills Orientation field extraction Ref. Securing Fingerprint Template: Fuzzy Vault with helper data, U. Uludag, A. Jain FB Informatik GRIS Praktikums-Container WiSe 2013 /

26 Contact Moazzam Butt Fraunhofer IGD Competence Center Identification and Biometrics FB Informatik GRIS Praktikums-Container WiSe 2013 /

27 Daniel Weber Streaming of Simulation Data FB Informatik GRIS Praktikums-Container WiSe 2013 /

28 Streaming of Simulation Data Motivation: Powerful hardware resources for interactive simulations are not present on every client Use resources on a remote computer and transmit simulation data to the client Task: 1) Design a binary protocol for transmitting (triangular / tetrahedral) simulation data. 2)Add transmission functionality to existing simulator and implement visualization in another framework Pre-condition: good C++ programming, interest in simulation and visualization FB Informatik GRIS Praktikums-Container WiSe 2013 /

29 Kontakt Daniel Weber Interactive Engineering Technologies Raum: 205 Tel.: FB Informatik GRIS Praktikums-Container WiSe 2013 /

30 Naser Damer MULTI BIOMETRIC SCORE LEVEL FUSION FB Informatik GRIS Praktikums-Container WiSe 2013 /

31 Multi-Biometric Score-Level Fusion Motivation: Increase the performance and security of biometrics Problem: Different normalization and combination methods Task: Implement and test normalization/combination algorithms Pre-condition: Interest in Biometrics C++ programming skills FB Informatik GRIS Praktikums-Container WiSe 2013 /

32 Contact Naser Damer Fraunhofer IGD Competence Center Identification and Biometrics FB Informatik GRIS Praktikums-Container WiSe 2013 /

33 Naser Damer and Alexander Opel BIOMETRIC AGE ESTIMATION FB Informatik GRIS Praktikums-Container WiSe 2013 /

34 BIOMETRIC AGE ESTIMATION Motivation: Automatically estimate a person s age from face images Task: Implement and test age estimation algorithms Pre-condition: Interest in Biometrics C++ programming skills Additional C# programming skills are preferred FB Informatik GRIS Praktikums-Container WiSe 2013 /

35 Contact Naser Damer / Alexander Opel Fraunhofer IGD Competence Center Identification and Biometrics FB Informatik GRIS Praktikums-Container WiSe 2013 /

36 Naser Damer and Alexander Opel BIOMETRIC GENDER RECOGNITION FB Informatik GRIS Praktikums-Container WiSe 2013 /

37 BIOMETRIC GENDER RECOGNITION Motivation: Automatically estimate a person s gender from face images Task: Implement and test gender estimation algorithms Pre-condition: Interest in Biometrics C++ programming skills Additional C# programming skills are preferred FB Informatik GRIS Praktikums-Container WiSe 2013 /

38 Contact Naser Damer / Alexander Opel Fraunhofer IGD Competence Center Identification and Biometrics FB Informatik GRIS Praktikums-Container WiSe 2013 /

39 Fabian Langguth, Simon Fuhrmann, Prof. Michael Goesele Plane Sweep Stereo FB Informatik GRIS Praktikums-Container WiSe 2013 /

40 Plane Sweep Stereo Goal : Reconstruct depth information for a single reference camera Algorithm: Sweep a family of planes with different depths with respect to the reference view Choose depth that is most consistent with neighboring views Sehr gute C++ Kenntnisse vorrausgesetzt! FB Informatik GRIS Praktikums-Container WiSe 2013 /

41 Kontakt Fabian Langguth Graphics, Capture, and massively parallel Computing (GCC) Raum: Rundeturmstrasse Tel.: Simon Fuhrmann Graphics, Capture, and massively parallel Computing (GCC) Raum: Rundeturmstrasse Tel.: FB Informatik GRIS Praktikums-Container WiSe 2013 /

42 Fabian Langguth, Jens Ackermann, Prof. Michael Goesele Float Image Viewer FB Informatik GRIS Praktikums-Container WiSe 2013 /

43 Float Image Viewer Goal: Fast viewer for stacks of float images Qt GUI with specific features: Various color mappings Interactive tone mapping Fast image switching Zooming of multiple images Color picker Sehr gute C++ Kenntnisse vorrausgesetzt! FB Informatik GRIS Praktikums-Container WiSe 2013 /

44 Kontakt Fabian Langguth Graphics, Capture, and massively parallel Computing (GCC) Raum: Rundeturmstrasse Tel.: Jens Ackermann Graphics, Capture, and massively parallel Computing (GCC) Raum: Rundeturmstrasse Tel.: FB Informatik GRIS Praktikums-Container WiSe 2013 /

45 Prof. Chris Biemann & Dr. Tatiana von Landesberger Time-dependent network of names FB Informatik GRIS Praktikums-Container WiSe 2013 /

46 Time-dependent network of names Motivation: Exploration of person/organisation relationships based on newspaper articles Problem: Identification of relationships Changes in time Task: extension of an existing system for interactive exploration and tagging of relationships with TIME dimension Pre-condition: good programming skills interest in visualization and NLP Technology: Vis: d3.js + JUNG (Java) NLP: scala, SQL, StanfordTools FB Informatik GRIS Praktikums-Container WiSe 2013 /

47 Kontakt Prof. Chris Biemann FG Sprachtechnologie Raum: S2 02 B106 Tel.: Tatiana von Landesberger GRIS Raum: 319 Tel: FB Informatik GRIS Praktikums-Container WiSe 2013 /

48 Dr. Tatiana von Landesberger Time-dependent clustering of networks FB Informatik GRIS Praktikums-Container WiSe 2013 /

49 Time-dependent clustering of networks Motivation: Large networks (companies, persons, computers, genes, tags, ) Find groups of nodes with similar behaviour clusters Problems: Networks change over time Cluster changes Task: Calculation and visualization of clusters in networks over time, free choice of dataset Pre-condition: good JAVA programming skills Technology: JUNG (Java) FB Informatik GRIS Praktikums-Container WiSe 2013 /

50 Kontakt Tatiana von Landesberger GRIS Raum: 319 Tel: FB Informatik GRIS Praktikums-Container WiSe 2013 /

51 Sepideh Samadzadegan 3D Simulation of 2.5D Prints for Soft Proofing FB Informatik GRIS Praktikums-Container WiSe 2013 /

52 3D Simulation of 2.5D Prints for Soft Proofing Motivation Supporting a collaborative European research project (http://cp70.org/) Task Implementation of an interactive 3D simulation tool for soft proofing of 2.5D prints Pre-condition Good C++ and OpenGL programing MATLAB programming is considered as an advantage Knowledge about shading/rendering techniques in computer graphics Being interested in learning new stuff via doing research by Shoji Tominaga surface shape and reflectance estimation of art paintings FB Informatik GRIS Praktikums-Container WiSe 2013 /

53 Expected Result & Contact Sepideh Samadzadegan by Shoji Tominaga surface shape and reflectance estimation of art paintings FB Informatik GRIS Praktikums-Container WiSe 2013 /

54 Themenliste Jürgen Bernard - VISUELLE SUCHE IN ZEITBASIERTEN PATIENTENDATEN Sebastian Maier - EXPLORATIVE ANALYSIS Matthias Bein - INTEGRATION OF ZSPACE OR LEAP MOTION Andreas Stein - CLOUD-BASED APPS FOR 3D MODELS Olga Kähm - 2D FACE LIVENESS DETECTION FB Informatik GRIS Praktikums-Container WiSe 2013 /

55 Themenliste Moazzam Butt - IMAGE BASED DOCUMENT SEAL - FINGERPRINT ORIENTATION FIELD EXTRACTION Daniel Weber - STREAMING OF SIMULATION DATA Naser Damer - MULTI-BIOMETRIC SCORE-LEVEL FUSION Naser Damer and Alexander Opel - BIOMETRIC AGE ESTIMATION - BIOMETRIC GENDER RECOGNITION Fabian Langguth, Simon Fuhrmann, Prof. Michael Goesele - PLANE SWEEP STEREO FB Informatik GRIS Praktikums-Container WiSe 2013 /

56 Themenliste Fabian Langguth, Jens Ackermann, Prof. Michael Goesele - FLOAT IMAGE VIEWER Prof. Chris Biemann & Dr. Tatiana von Landesberger - TIME-DEPENDENT NETWORK OF NAMES Dr. Tatiana von Landesberger - TIME-DEPENDENT CLUSTERING OF NETWORKS Sepideh Samadzadegan - 3D SIMULATION OF 2.5D PRINTS FOR SOFT PROOFING FB Informatik GRIS Praktikums-Container WiSe 2013 /

Interactive Data Mining and Visualization

Interactive Data Mining and Visualization Interactive Data Mining and Visualization Zhitao Qiu Abstract: Interactive analysis introduces dynamic changes in Visualization. On another hand, advanced visualization can provide different perspectives

More information

Emerging Geospatial Trends The Convergence of Technologies. Jim Steiner Vice President, Product Management

Emerging Geospatial Trends The Convergence of Technologies. Jim Steiner Vice President, Product Management Emerging Geospatial Trends The Convergence of Technologies Jim Steiner Vice President, Product Management United Nation Analysis Initiative on Global GeoSpatial Information Management Future Trends Technology

More information

Professional Organization Checklist for the Computer Science Curriculum Updates. Association of Computing Machinery Computing Curricula 2008

Professional Organization Checklist for the Computer Science Curriculum Updates. Association of Computing Machinery Computing Curricula 2008 Professional Organization Checklist for the Computer Science Curriculum Updates Association of Computing Machinery Computing Curricula 2008 The curriculum guidelines can be found in Appendix C of the report

More information

REGULATIONS FOR THE DEGREE OF MASTER OF SCIENCE IN COMPUTER SCIENCE (MSc[CompSc])

REGULATIONS FOR THE DEGREE OF MASTER OF SCIENCE IN COMPUTER SCIENCE (MSc[CompSc]) 305 REGULATIONS FOR THE DEGREE OF MASTER OF SCIENCE IN COMPUTER SCIENCE (MSc[CompSc]) (See also General Regulations) Any publication based on work approved for a higher degree should contain a reference

More information

What is Visualization? Information Visualization An Overview. Information Visualization. Definitions

What is Visualization? Information Visualization An Overview. Information Visualization. Definitions What is Visualization? Information Visualization An Overview Jonathan I. Maletic, Ph.D. Computer Science Kent State University Visualize/Visualization: To form a mental image or vision of [some

More information

School of Computer Science

School of Computer Science School of Computer Science Computer Science - Honours Level - 2014/15 October 2014 General degree students wishing to enter 3000- level modules and non- graduating students wishing to enter 3000- level

More information

Course 803401 DSS. Business Intelligence: Data Warehousing, Data Acquisition, Data Mining, Business Analytics, and Visualization

Course 803401 DSS. Business Intelligence: Data Warehousing, Data Acquisition, Data Mining, Business Analytics, and Visualization Oman College of Management and Technology Course 803401 DSS Business Intelligence: Data Warehousing, Data Acquisition, Data Mining, Business Analytics, and Visualization CS/MIS Department Information Sharing

More information

Service-Oriented Visualization of Virtual 3D City Models

Service-Oriented Visualization of Virtual 3D City Models Service-Oriented Visualization of Virtual 3D City Models Authors: Jan Klimke, Jürgen Döllner Computer Graphics Systems Division Hasso-Plattner-Institut, University of Potsdam, Germany http://www.hpi3d.de

More information

COMPUTER ENGINEERING GRADUTE PROGRAM FOR MASTER S DEGREE (With Thesis)

COMPUTER ENGINEERING GRADUTE PROGRAM FOR MASTER S DEGREE (With Thesis) COMPUTER ENGINEERING GRADUTE PROGRAM FOR MASTER S DEGREE (With Thesis) PREPARATORY PROGRAM* COME 27 Advanced Object Oriented Programming 5 COME 21 Data Structures and Algorithms COME 22 COME 1 COME 1 COME

More information

Course Syllabus For Operations Management. Management Information Systems

Course Syllabus For Operations Management. Management Information Systems For Operations Management and Management Information Systems Department School Year First Year First Year First Year Second year Second year Second year Third year Third year Third year Third year Third

More information

PSG College of Technology, Coimbatore-641 004 Department of Computer & Information Sciences BSc (CT) G1 & G2 Sixth Semester PROJECT DETAILS.

PSG College of Technology, Coimbatore-641 004 Department of Computer & Information Sciences BSc (CT) G1 & G2 Sixth Semester PROJECT DETAILS. PSG College of Technology, Coimbatore-641 004 Department of Computer & Information Sciences BSc (CT) G1 & G2 Sixth Semester PROJECT DETAILS Project Project Title Area of Abstract No Specialization 1. Software

More information

Chapter 5 Business Intelligence: Data Warehousing, Data Acquisition, Data Mining, Business Analytics, and Visualization

Chapter 5 Business Intelligence: Data Warehousing, Data Acquisition, Data Mining, Business Analytics, and Visualization Turban, Aronson, and Liang Decision Support Systems and Intelligent Systems, Seventh Edition Chapter 5 Business Intelligence: Data Warehousing, Data Acquisition, Data Mining, Business Analytics, and Visualization

More information

Big Data Text Mining and Visualization. Anton Heijs

Big Data Text Mining and Visualization. Anton Heijs Copyright 2007 by Treparel Information Solutions BV. This report nor any part of it may be copied, circulated, quoted without prior written approval from Treparel7 Treparel Information Solutions BV Delftechpark

More information

Artificial Intelligence and Robotics @ Politecnico di Milano. Presented by Matteo Matteucci

Artificial Intelligence and Robotics @ Politecnico di Milano. Presented by Matteo Matteucci 1 Artificial Intelligence and Robotics @ Politecnico di Milano Presented by Matteo Matteucci What is Artificial Intelligence «The field of theory & development of computer systems able to perform tasks

More information

Advanced Volume Rendering Techniques for Medical Applications

Advanced Volume Rendering Techniques for Medical Applications Advanced Volume Rendering Techniques for Medical Applications Verbesserte Darstellungsmethoden für Volumendaten in medizinischen Anwendungen J. Georgii 1, J. Schneider 1, J. Krüger 1, R. Westermann 1,

More information

An Open Framework for Reverse Engineering Graph Data Visualization. Alexandru C. Telea Eindhoven University of Technology The Netherlands.

An Open Framework for Reverse Engineering Graph Data Visualization. Alexandru C. Telea Eindhoven University of Technology The Netherlands. An Open Framework for Reverse Engineering Graph Data Visualization Alexandru C. Telea Eindhoven University of Technology The Netherlands Overview Reverse engineering (RE) overview Limitations of current

More information

Colorado School of Mines Computer Vision Professor William Hoff

Colorado School of Mines Computer Vision Professor William Hoff Professor William Hoff Dept of Electrical Engineering &Computer Science http://inside.mines.edu/~whoff/ 1 Introduction to 2 What is? A process that produces from images of the external world a description

More information

UniGR Workshop: Big Data «The challenge of visualizing big data»

UniGR Workshop: Big Data «The challenge of visualizing big data» Dept. ISC Informatics, Systems & Collaboration UniGR Workshop: Big Data «The challenge of visualizing big data» Dr Ir Benoît Otjacques Deputy Scientific Director ISC The Future is Data-based Can we help?

More information

3D Client Software - Interactive, online and in real-time

3D Client Software - Interactive, online and in real-time 3D Client Software - Interactive, online and in real-time Dipl.Inform.Univ Peter Schickel CEO Bitmanagement Software Vice President Web3D Consortium, Mountain View, USA OGC/Web3D liaison manager Presentation

More information

HPC technology and future architecture

HPC technology and future architecture HPC technology and future architecture Visual Analysis for Extremely Large-Scale Scientific Computing KGT2 Internal Meeting INRIA France Benoit Lange benoit.lange@inria.fr Toàn Nguyên toan.nguyen@inria.fr

More information

Big Data from a Database Theory Perspective

Big Data from a Database Theory Perspective Big Data from a Database Theory Perspective Martin Grohe Lehrstuhl Informatik 7 - Logic and the Theory of Discrete Systems A CS View on Data Science Applications Data System Users 2 Us Data HUGE heterogeneous

More information

Advances in Face Recognition Research Second End-User Group Meeting - Feb 21, 2008 Dr. Stefan Gehlen, L-1 Identity Solutions AG, Bochum, Germany

Advances in Face Recognition Research Second End-User Group Meeting - Feb 21, 2008 Dr. Stefan Gehlen, L-1 Identity Solutions AG, Bochum, Germany Advances in Face Recognition Research Second End-User Group Meeting - Feb 21, 2008 Dr. Stefan Gehlen, L-1 Identity Solutions AG, Bochum, Germany L-1 Identity Solutions AG All rights reserved Outline Face

More information

Computer Animation and Visualisation. Lecture 1. Introduction

Computer Animation and Visualisation. Lecture 1. Introduction Computer Animation and Visualisation Lecture 1 Introduction 1 Today s topics Overview of the lecture Introduction to Computer Animation Introduction to Visualisation 2 Introduction (PhD in Tokyo, 2000,

More information

Immersive Medien und 3D-Video

Immersive Medien und 3D-Video Fraunhofer-Institut für Nachrichtentechnik Heinrich-Hertz-Institut Ralf Schäfer schaefer@hhi.de http://ip.hhi.de Immersive Medien und 3D-Video page 1 Outline Immersive Media Examples Interactive Media

More information

MEng, BSc Computer Science with Artificial Intelligence

MEng, BSc Computer Science with Artificial Intelligence School of Computing FACULTY OF ENGINEERING MEng, BSc Computer Science with Artificial Intelligence Year 1 COMP1212 Computer Processor Effective programming depends on understanding not only how to give

More information

Doctor of Philosophy in Computer Science

Doctor of Philosophy in Computer Science Doctor of Philosophy in Computer Science Background/Rationale The program aims to develop computer scientists who are armed with methods, tools and techniques from both theoretical and systems aspects

More information

Image Search by MapReduce

Image Search by MapReduce Image Search by MapReduce COEN 241 Cloud Computing Term Project Final Report Team #5 Submitted by: Lu Yu Zhe Xu Chengcheng Huang Submitted to: Prof. Ming Hwa Wang 09/01/2015 Preface Currently, there s

More information

MEng, BSc Applied Computer Science

MEng, BSc Applied Computer Science School of Computing FACULTY OF ENGINEERING MEng, BSc Applied Computer Science Year 1 COMP1212 Computer Processor Effective programming depends on understanding not only how to give a machine instructions

More information

Eastern Washington University Department of Computer Science. Questionnaire for Prospective Masters in Computer Science Students

Eastern Washington University Department of Computer Science. Questionnaire for Prospective Masters in Computer Science Students Eastern Washington University Department of Computer Science Questionnaire for Prospective Masters in Computer Science Students I. Personal Information Name: Last First M.I. Mailing Address: Permanent

More information

An example. Visualization? An example. Scientific Visualization. This talk. Information Visualization & Visual Analytics. 30 items, 30 x 3 values

An example. Visualization? An example. Scientific Visualization. This talk. Information Visualization & Visual Analytics. 30 items, 30 x 3 values Information Visualization & Visual Analytics Jack van Wijk Technische Universiteit Eindhoven An example y 30 items, 30 x 3 values I-science for Astronomy, October 13-17, 2008 Lorentz center, Leiden x An

More information

Information Management course

Information Management course Università degli Studi di Milano Master Degree in Computer Science Information Management course Teacher: Alberto Ceselli Lecture 01 : 06/10/2015 Practical informations: Teacher: Alberto Ceselli (alberto.ceselli@unimi.it)

More information

TIETS34 Seminar: Data Mining on Biometric identification

TIETS34 Seminar: Data Mining on Biometric identification TIETS34 Seminar: Data Mining on Biometric identification Youming Zhang Computer Science, School of Information Sciences, 33014 University of Tampere, Finland Youming.Zhang@uta.fi Course Description Content

More information

VISUALIZATION STRATEGIES AND TECHNIQUES FOR HIGH-DIMENSIONAL SPATIO- TEMPORAL DATA

VISUALIZATION STRATEGIES AND TECHNIQUES FOR HIGH-DIMENSIONAL SPATIO- TEMPORAL DATA VISUALIZATION STRATEGIES AND TECHNIQUES FOR HIGH-DIMENSIONAL SPATIO- TEMPORAL DATA Summary B. Schmidt, U. Streit and Chr. Uhlenküken University of Münster Institute of Geoinformatics Robert-Koch-Str. 28

More information

Information Visualization and Visual Analytics

Information Visualization and Visual Analytics Information Visualization and Visual Analytics Pekka Wartiainen University of Jyväskylä pekka.wartiainen@jyu.fi 23.4.2014 Outline Objectives Introduction Visual Analytics Information Visualization Our

More information

Assessment of Workforce Demands to Shape GIS&T Education

Assessment of Workforce Demands to Shape GIS&T Education Assessment of Workforce Demands to Shape GIS&T Education Gudrun Wallentin, Barbara Hofer, Christoph Traun gudrun.wallentin@sbg.ac.at University of Salzburg, Dept. of Geoinformatics Z_GIS, Austria www.gi-n2k.eu

More information

ANALYTICS IN BIG DATA ERA

ANALYTICS IN BIG DATA ERA ANALYTICS IN BIG DATA ERA ANALYTICS TECHNOLOGY AND ARCHITECTURE TO MANAGE VELOCITY AND VARIETY, DISCOVER RELATIONSHIPS AND CLASSIFY HUGE AMOUNT OF DATA MAURIZIO SALUSTI SAS Copyr i g ht 2012, SAS Ins titut

More information

Introduction to Computer Graphics

Introduction to Computer Graphics Introduction to Computer Graphics Torsten Möller TASC 8021 778-782-2215 torsten@sfu.ca www.cs.sfu.ca/~torsten Today What is computer graphics? Contents of this course Syllabus Overview of course topics

More information

A bachelor of science degree in electrical engineering with a cumulative undergraduate GPA of at least 3.0 on a 4.0 scale

A bachelor of science degree in electrical engineering with a cumulative undergraduate GPA of at least 3.0 on a 4.0 scale What is the University of Florida EDGE Program? EDGE enables engineering professional, military members, and students worldwide to participate in courses, certificates, and degree programs from the UF

More information

Final Year Projects at itm. Topics 2010/2011

Final Year Projects at itm. Topics 2010/2011 Final Year Projects at itm Topics 2010/2011 Chair of Information Technology in Mechanical Engineering Prof. Dr.-Ing. B. Vogel-Heuser Prof. Dr.-Ing. Frank Schiller Prof. Dr.-Ing. Klaus Bender Technische

More information

Chapter 5. Warehousing, Data Acquisition, Data. Visualization

Chapter 5. Warehousing, Data Acquisition, Data. Visualization Decision Support Systems and Intelligent Systems, Seventh Edition Chapter 5 Business Intelligence: Data Warehousing, Data Acquisition, Data Mining, Business Analytics, and Visualization 5-1 Learning Objectives

More information

Visual Support for Analyzing Network Traffic and Intrusion Detection Events using TreeMap and Graph Representations

Visual Support for Analyzing Network Traffic and Intrusion Detection Events using TreeMap and Graph Representations Visual Support for Analyzing Network Traffic and Intrusion Detection Events using TreeMap and Graph Representations Florian Mansmann 1 Fabian Fischer 1 Daniel A. Keim 1 Stephen C. North 2 1 University

More information

Graduate Co-op Students Information Manual. Department of Computer Science. Faculty of Science. University of Regina

Graduate Co-op Students Information Manual. Department of Computer Science. Faculty of Science. University of Regina Graduate Co-op Students Information Manual Department of Computer Science Faculty of Science University of Regina 2014 1 Table of Contents 1. Department Description..3 2. Program Requirements and Procedures

More information

Professor, D.Sc. (Tech.) Eugene Kovshov MSTU «STANKIN», Moscow, Russia

Professor, D.Sc. (Tech.) Eugene Kovshov MSTU «STANKIN», Moscow, Russia Professor, D.Sc. (Tech.) Eugene Kovshov MSTU «STANKIN», Moscow, Russia As of today, the issue of Big Data processing is still of high importance. Data flow is increasingly growing. Processing methods

More information

BIG DATA IN THE CLOUD : CHALLENGES AND OPPORTUNITIES MARY- JANE SULE & PROF. MAOZHEN LI BRUNEL UNIVERSITY, LONDON

BIG DATA IN THE CLOUD : CHALLENGES AND OPPORTUNITIES MARY- JANE SULE & PROF. MAOZHEN LI BRUNEL UNIVERSITY, LONDON BIG DATA IN THE CLOUD : CHALLENGES AND OPPORTUNITIES MARY- JANE SULE & PROF. MAOZHEN LI BRUNEL UNIVERSITY, LONDON Overview * Introduction * Multiple faces of Big Data * Challenges of Big Data * Cloud Computing

More information

Published International Standards Developed by ISO/IEC JTC 1/SC 37 - Biometrics

Published International Standards Developed by ISO/IEC JTC 1/SC 37 - Biometrics Published International Standards Developed by ISO/IEC JTC 1/SC 37 - Biometrics Revised October 25, 2007 These standards can be obtained (for a fee) at ANSI s estandards Store: http://webstore.ansi.org/

More information

Computer Graphics in Real World Applications

Computer Graphics in Real World Applications Innovation in Theory Computer Graphics in Real World Applications scientists researchers publications patents developers at companies solutions for the real world, stable products Werner Purgathofer Institute

More information

NVIDIA IndeX Enabling Interactive and Scalable Visualization for Large Data Marc Nienhaus, NVIDIA IndeX Engineering Manager and Chief Architect

NVIDIA IndeX Enabling Interactive and Scalable Visualization for Large Data Marc Nienhaus, NVIDIA IndeX Engineering Manager and Chief Architect SIGGRAPH 2013 Shaping the Future of Visual Computing NVIDIA IndeX Enabling Interactive and Scalable Visualization for Large Data Marc Nienhaus, NVIDIA IndeX Engineering Manager and Chief Architect NVIDIA

More information

USING SELF-ORGANIZING MAPS FOR INFORMATION VISUALIZATION AND KNOWLEDGE DISCOVERY IN COMPLEX GEOSPATIAL DATASETS

USING SELF-ORGANIZING MAPS FOR INFORMATION VISUALIZATION AND KNOWLEDGE DISCOVERY IN COMPLEX GEOSPATIAL DATASETS USING SELF-ORGANIZING MAPS FOR INFORMATION VISUALIZATION AND KNOWLEDGE DISCOVERY IN COMPLEX GEOSPATIAL DATASETS Koua, E.L. International Institute for Geo-Information Science and Earth Observation (ITC).

More information

Big Data: Image & Video Analytics

Big Data: Image & Video Analytics Big Data: Image & Video Analytics How it could support Archiving & Indexing & Searching Dieter Haas, IBM Deutschland GmbH The Big Data Wave 60% of internet traffic is multimedia content (images and videos)

More information

Facts about Visualization Pipelines, applicable to VisIt and ParaView

Facts about Visualization Pipelines, applicable to VisIt and ParaView Facts about Visualization Pipelines, applicable to VisIt and ParaView March 2013 Jean M. Favre, CSCS Agenda Visualization pipelines Motivation by examples VTK Data Streaming Visualization Pipelines: Introduction

More information

ISSN: 2348 9510. A Review: Image Retrieval Using Web Multimedia Mining

ISSN: 2348 9510. A Review: Image Retrieval Using Web Multimedia Mining A Review: Image Retrieval Using Web Multimedia Satish Bansal*, K K Yadav** *, **Assistant Professor Prestige Institute Of Management, Gwalior (MP), India Abstract Multimedia object include audio, video,

More information

Master of Science in Computer Science

Master of Science in Computer Science Master of Science in Computer Science Background/Rationale The MSCS program aims to provide both breadth and depth of knowledge in the concepts and techniques related to the theory, design, implementation,

More information

Outline. Fundamentals. Rendering (of 3D data) Data mappings. Evaluation Interaction

Outline. Fundamentals. Rendering (of 3D data) Data mappings. Evaluation Interaction Outline Fundamentals What is vis? Some history Design principles The visualization process Data sources and data structures Basic visual mapping approaches Rendering (of 3D data) Scalar fields (isosurfaces

More information

Virtual Environments - Basics -

Virtual Environments - Basics - Virtual Environments - Basics - What Is Virtual Reality? A Web-Based Introduction Version 4 Draft 1, September, 1998 Jerry Isdale http://www.isdale.com/jerry/vr/whatisvr.html Virtual Environments allow

More information

IC05 Introduction on Networks &Visualization Nov. 2009.

IC05 Introduction on Networks &Visualization Nov. 2009. <mathieu.bastian@gmail.com> IC05 Introduction on Networks &Visualization Nov. 2009 Overview 1. Networks Introduction Networks across disciplines Properties Models 2. Visualization InfoVis Data exploration

More information

How to use Big Data in Industry 4.0 implementations. LAURI ILISON, PhD Head of Big Data and Machine Learning

How to use Big Data in Industry 4.0 implementations. LAURI ILISON, PhD Head of Big Data and Machine Learning How to use Big Data in Industry 4.0 implementations LAURI ILISON, PhD Head of Big Data and Machine Learning Big Data definition? Big Data is about structured vs unstructured data Big Data is about Volume

More information

Study Regulations for the Master Course Visual Computing

Study Regulations for the Master Course Visual Computing Study Regulations for the Master Course Visual Computing As of January 26 th, 2006 Pursuant to 54 of Act No. 1556 on Saarland University (University Act UG) from June 23 rd, 2004 (Official Gazette p. 1782)

More information

The Scientific Data Mining Process

The Scientific Data Mining Process Chapter 4 The Scientific Data Mining Process When I use a word, Humpty Dumpty said, in rather a scornful tone, it means just what I choose it to mean neither more nor less. Lewis Carroll [87, p. 214] In

More information

Please consult the Department of Engineering about the Computer Engineering Emphasis.

Please consult the Department of Engineering about the Computer Engineering Emphasis. COMPUTER SCIENCE Computer science is a dynamically growing discipline. ABOUT THE PROGRAM The Department of Computer Science is committed to providing students with a program that includes the basic fundamentals

More information

Bangladesh Voter Registration Duplicate Search System Implemented by the Bangladesh Army and Dohatec Based on MegaMatcher Technology

Bangladesh Voter Registration Duplicate Search System Implemented by the Bangladesh Army and Dohatec Based on MegaMatcher Technology MegaMattcher g Ma Case a Sttudy Bangladesh Voter Registration Duplicate Search System Implemented by the Bangladesh Army and Dohatec Based on MegaMatcher Technology Bangladesh selected MegaMatcher multi-biometric

More information

Introduction to Data Mining

Introduction to Data Mining Introduction to Data Mining 1 Why Data Mining? Explosive Growth of Data Data collection and data availability Automated data collection tools, Internet, smartphones, Major sources of abundant data Business:

More information

IDL. Get the answers you need from your data. IDL

IDL. Get the answers you need from your data. IDL Get the answers you need from your data. IDL is the preferred computing environment for understanding complex data through interactive visualization and analysis. IDL Powerful visualization. Interactive

More information

Masters in Human Computer Interaction

Masters in Human Computer Interaction Masters in Human Computer Interaction Programme Requirements Taught Element, and PG Diploma in Human Computer Interaction: 120 credits: IS5101 CS5001 CS5040 CS5041 CS5042 or CS5044 up to 30 credits from

More information

Masters in Advanced Computer Science

Masters in Advanced Computer Science Masters in Advanced Computer Science Programme Requirements Taught Element, and PG Diploma in Advanced Computer Science: 120 credits: IS5101 CS5001 up to 30 credits from CS4100 - CS4450, subject to appropriate

More information

Masters in Artificial Intelligence

Masters in Artificial Intelligence Masters in Artificial Intelligence Programme Requirements Taught Element, and PG Diploma in Artificial Intelligence: 120 credits: IS5101 CS5001 CS5010 CS5011 CS4402 or CS5012 in total, up to 30 credits

More information

Remote Graphical Visualization of Large Interactive Spatial Data

Remote Graphical Visualization of Large Interactive Spatial Data Remote Graphical Visualization of Large Interactive Spatial Data ComplexHPC Spring School 2011 International ComplexHPC Challenge Cristinel Mihai Mocan Computer Science Department Technical University

More information

Volume 3, Issue 6, June 2015 International Journal of Advance Research in Computer Science and Management Studies

Volume 3, Issue 6, June 2015 International Journal of Advance Research in Computer Science and Management Studies Volume 3, Issue 6, June 2015 International Journal of Advance Research in Computer Science and Management Studies Research Article / Survey Paper / Case Study Available online at: www.ijarcsms.com Image

More information

APPLICATIONS AND USAGE

APPLICATIONS AND USAGE APPLICATIONS AND USAGE http://www.tutorialspoint.com/dip/applications_and_usage.htm Copyright tutorialspoint.com Since digital image processing has very wide applications and almost all of the technical

More information

Dynamix: An Open Plug-and-Play Context Framework for Android

Dynamix: An Open Plug-and-Play Context Framework for Android Dynamix: An Open Plug-and-Play Context Framework for Android Darren Carlson and Andreas Schrader Ambient Computing Group / Institute of Telematics University of Lübeck, Germany www.ambient.uni-luebeck.de

More information

Bachelor of Games and Virtual Worlds (Programming) Subject and Course Summaries

Bachelor of Games and Virtual Worlds (Programming) Subject and Course Summaries First Semester Development 1A On completion of this subject students will be able to apply basic programming and problem solving skills in a 3 rd generation object-oriented programming language (such as

More information

Big Data Mining Services and Knowledge Discovery Applications on Clouds

Big Data Mining Services and Knowledge Discovery Applications on Clouds Big Data Mining Services and Knowledge Discovery Applications on Clouds Domenico Talia DIMES, Università della Calabria & DtoK Lab Italy talia@dimes.unical.it Data Availability or Data Deluge? Some decades

More information

Machine Learning over Big Data

Machine Learning over Big Data Machine Learning over Big Presented by Fuhao Zou fuhao@hust.edu.cn Jue 16, 2014 Huazhong University of Science and Technology Contents 1 2 3 4 Role of Machine learning Challenge of Big Analysis Distributed

More information

Big Data in Pictures: Data Visualization

Big Data in Pictures: Data Visualization Big Data in Pictures: Data Visualization Huamin Qu Hong Kong University of Science and Technology What is data visualization? Data visualization is the creation and study of the visual representation of

More information

Time Series Data Visualization

Time Series Data Visualization Time Series Data Visualization Time Series Data Fundamental chronological component to the data set Random sample of 4000 graphics from 15 of world s newspapers and magazines from 74-80 found that 75%

More information

Information Visualisation and Visual Analytics for Governance and Policy Modelling

Information Visualisation and Visual Analytics for Governance and Policy Modelling Information Visualisation and Visual Analytics for Governance and Policy Modelling Jörn Kohlhammer 1, Tobias Ruppert 1, James Davey 1, Florian Mansmann 2, Daniel Keim 2 1 Fraunhofer IGD, Fraunhoferstr.

More information

School of Computer Science

School of Computer Science School of Computer Science Computer Science - Honours Level - 2015/6 - August 2015 General degree students wishing to enter 3000- level modules and non- graduating students wishing to enter 3000- level

More information

Geovisualization. Geovisualization, cartographic transformation, cartograms, dasymetric maps, scientific visualization (ViSC), PPGIS

Geovisualization. Geovisualization, cartographic transformation, cartograms, dasymetric maps, scientific visualization (ViSC), PPGIS 13 Geovisualization OVERVIEW Using techniques of geovisualization, GIS provides a far richer and more flexible medium for portraying attribute distributions than the paper mapping which is covered in Chapter

More information

Introduction. Selim Aksoy. Bilkent University saksoy@cs.bilkent.edu.tr

Introduction. Selim Aksoy. Bilkent University saksoy@cs.bilkent.edu.tr Introduction Selim Aksoy Department of Computer Engineering Bilkent University saksoy@cs.bilkent.edu.tr What is computer vision? What does it mean, to see? The plain man's answer (and Aristotle's, too)

More information

A Declarative Definition Language for the Representation of Three-Dimensional Information Visualization

A Declarative Definition Language for the Representation of Three-Dimensional Information Visualization A Declarative Definition Language for the Representation of Three-Dimensional Information Visualization Gerald Jäschke Fachgebiet Informationssysteme, Universität Duisburg-Essen, Campus Duisburg 2005-06-15

More information

The University of Jordan

The University of Jordan The University of Jordan Master in Web Intelligence Non Thesis Department of Business Information Technology King Abdullah II School for Information Technology The University of Jordan 1 STUDY PLAN MASTER'S

More information

Image Analytics on Big Data In Motion Implementation of Image Analytics CCL in Apache Kafka and Storm

Image Analytics on Big Data In Motion Implementation of Image Analytics CCL in Apache Kafka and Storm Image Analytics on Big Data In Motion Implementation of Image Analytics CCL in Apache Kafka and Storm Lokesh Babu Rao 1 C. Elayaraja 2 1PG Student, Dept. of ECE, Dhaanish Ahmed College of Engineering,

More information

Agreement on. Dual Degree Master Program in Computer Science KAIST. Technische Universität Berlin

Agreement on. Dual Degree Master Program in Computer Science KAIST. Technische Universität Berlin Agreement on Dual Degree Master Program in Computer Science between KAIST Department of Computer Science and Technische Universität Berlin Fakultät für Elektrotechnik und Informatik (Fakultät IV) 1 1 Subject

More information

CS171 Visualization. The Visualization Alphabet: Marks and Channels. Alexander Lex alex@seas.harvard.edu. [xkcd]

CS171 Visualization. The Visualization Alphabet: Marks and Channels. Alexander Lex alex@seas.harvard.edu. [xkcd] CS171 Visualization Alexander Lex alex@seas.harvard.edu The Visualization Alphabet: Marks and Channels [xkcd] This Week Thursday: Task Abstraction, Validation Homework 1 due on Friday! Any more problems

More information

Promotionen. Promotionen

Promotionen. Promotionen Promotionen Herr Dr.-Ing. Ribeiro Leonardo Andrade A Framework for XML Similarity Joins Prof. Härder; AG Datenbanken und Informationssysteme Prof. Böhlen; Universität Zürich Herr Dr.-Ing. Ove Armbrust

More information

Challenges for Data Driven Systems

Challenges for Data Driven Systems Challenges for Data Driven Systems Eiko Yoneki University of Cambridge Computer Laboratory Quick History of Data Management 4000 B C Manual recording From tablets to papyrus to paper A. Payberah 2014 2

More information

Introduction of Information Visualization and Visual Analytics. Chapter 2. Introduction and Motivation

Introduction of Information Visualization and Visual Analytics. Chapter 2. Introduction and Motivation Introduction of Information Visualization and Visual Analytics Chapter 2 Introduction and Motivation Overview! 2 Overview and Motivation! Information Visualization (InfoVis)! InfoVis Application Areas!

More information

System Control. Virtuelle Realität Wintersemester 2007/08. Overview. Part 10: Virtuelle Realität. Prof. Bernhard Jung

System Control. Virtuelle Realität Wintersemester 2007/08. Overview. Part 10: Virtuelle Realität. Prof. Bernhard Jung Part 10: System Control Virtuelle Realität Wintersemester 2007/08 Prof. Bernhard Jung Overview Definition Categorization Description of different techniques Design guidelines Myths Conclusion Further information:

More information

International Journal of Advanced Information in Arts, Science & Management Vol.2, No.2, December 2014

International Journal of Advanced Information in Arts, Science & Management Vol.2, No.2, December 2014 Efficient Attendance Management System Using Face Detection and Recognition Arun.A.V, Bhatath.S, Chethan.N, Manmohan.C.M, Hamsaveni M Department of Computer Science and Engineering, Vidya Vardhaka College

More information

REGULATIONS FOR THE DEGREE OF MASTER OF SCIENCE IN COMPUTER SCIENCE (MSc[CompSc])

REGULATIONS FOR THE DEGREE OF MASTER OF SCIENCE IN COMPUTER SCIENCE (MSc[CompSc]) 299 REGULATIONS FOR THE DEGREE OF MASTER OF SCIENCE IN COMPUTER SCIENCE (MSc[CompSc]) (See also General Regulations) Any publication based on work approved for a higher degree should contain a reference

More information

Improving Data Processing Speed in Big Data Analytics Using. HDFS Method

Improving Data Processing Speed in Big Data Analytics Using. HDFS Method Improving Data Processing Speed in Big Data Analytics Using HDFS Method M.R.Sundarakumar Assistant Professor, Department Of Computer Science and Engineering, R.V College of Engineering, Bangalore, India

More information

AMPLIO VQA A Web Based Visual Query Analysis System for Micro Grid Energy Mix Planning

AMPLIO VQA A Web Based Visual Query Analysis System for Micro Grid Energy Mix Planning International Workshop on Visual Analytics (2012) K. Matkovic and G. Santucci (Editors) AMPLIO VQA A Web Based Visual Query Analysis System for Micro Grid Energy Mix Planning A. Stoffel 1 and L. Zhang

More information

CPIT-285 Computer Graphics

CPIT-285 Computer Graphics Department of Information Technology B.S.Information Technology ABET Course Binder CPIT-85 Computer Graphics Prepared by Prof. Alhasanain Muhammad Albarhamtoushi Page of Sunday December 4 0 : PM Cover

More information

Data Mining mit der JMSL Numerical Library for Java Applications

Data Mining mit der JMSL Numerical Library for Java Applications Data Mining mit der JMSL Numerical Library for Java Applications Stefan Sineux 8. Java Forum Stuttgart 07.07.2005 Agenda Visual Numerics JMSL TM Numerical Library Neuronale Netze (Hintergrund) Demos Neuronale

More information

Personalized Fall Risk Assessment Tool by using the Data Treasure contained in Mobile Electronic Patient Records

Personalized Fall Risk Assessment Tool by using the Data Treasure contained in Mobile Electronic Patient Records Personalized Fall Risk Assessment Tool by using the Data Treasure contained in Mobile Electronic Patient Records Elif ERYILMAZ a,1, Sebastian AHRNDT a, Johannes FÄHNDRICH a and Sahin ALBAYRAK a a DAI Lab,

More information

Computer Science. Master of Science

Computer Science. Master of Science Computer Science Master of Science The Master of Science in Computer Science program at UALR reflects current trends in the computer science discipline and provides students with a solid theoretical and

More information

Applications of Dynamic Representation Technologies in Multimedia Electronic Map

Applications of Dynamic Representation Technologies in Multimedia Electronic Map Applications of Dynamic Representation Technologies in Multimedia Electronic Map WU Guofeng CAI Zhongliang DU Qingyun LONG Yi (School of Resources and Environment Science, Wuhan University, Wuhan, Hubei.

More information

Big Data Analytics. Chances and Challenges. Volker Markl

Big Data Analytics. Chances and Challenges. Volker Markl Volker Markl Professor and Chair Database Systems and Information Management (DIMA), Technische Universität Berlin www.dima.tu-berlin.de Big Data Analytics Chances and Challenges Volker Markl DIMA BDOD

More information

Visualisatie BMT. Introduction, visualization, visualization pipeline. Arjan Kok Huub van de Wetering (h.v.d.wetering@tue.nl)

Visualisatie BMT. Introduction, visualization, visualization pipeline. Arjan Kok Huub van de Wetering (h.v.d.wetering@tue.nl) Visualisatie BMT Introduction, visualization, visualization pipeline Arjan Kok Huub van de Wetering (h.v.d.wetering@tue.nl) 1 Lecture overview Goal Summary Study material What is visualization Examples

More information

Consolidated Visualization of Enormous 3D Scan Point Clouds with Scanopy

Consolidated Visualization of Enormous 3D Scan Point Clouds with Scanopy Consolidated Visualization of Enormous 3D Scan Point Clouds with Scanopy Claus SCHEIBLAUER 1 / Michael PREGESBAUER 2 1 Institute of Computer Graphics and Algorithms, Vienna University of Technology, Austria

More information

Computer Science Electives and Clusters

Computer Science Electives and Clusters Course Number CSCI- Computer Science Electives and Clusters Computer Science electives belong to one or more groupings called clusters. Undergraduate students with the proper prerequisites are permitted

More information