Jan SedmidubskyApril 7, 2014Face Recognition Technology Faculty of Informatics Masaryk University Brno, Czech Republic 1/11.

Slides:



Advertisements
Similar presentations
Image Retrieval With Relevant Feedback Hayati Cam & Ozge Cavus IMAGE RETRIEVAL WITH RELEVANCE FEEDBACK Hayati CAM Ozge CAVUS.
Advertisements

Pseudo-Relevance Feedback For Multimedia Retrieval By Rong Yan, Alexander G. and Rong Jin Mwangi S. Kariuki
Jan SedmidubskyOctober 28, 2011MUFIN: Large-scale Similarity Search Leader: prof. Pavel Zezula Members: Dr. Michal Batko Dr. Vlastislav.
Jan SedmidubskyOctober 28, 2011Scalability and Robustness in a Self-organizing Retrieval System Jan Sedmidubsky Vlastislav Dohnal Pavel Zezula On Investigating.
Location Recognition Given: A query image A database of images with known locations Two types of approaches: Direct matching: directly match image features.
Search in Source Code Based on Identifying Popular Fragments Eduard Kuric and Mária Bieliková Faculty of Informatics and Information.
Multimedia Database Systems
Three things everyone should know to improve object retrieval
Lecture 11 Search, Corpora Characteristics, & Lucene Introduction.
Query Specific Fusion for Image Retrieval
1 Entity Ranking Using Wikipedia as a Pivot (CIKM 10’) Rianne Kaptein, Pavel Serdyukov, Arjen de Vries, Jaap Kamps 2010/12/14 Yu-wen,Hsu.
1 CS 430: Information Discovery Lecture 22 Non-Textual Materials 2.
Object retrieval with large vocabularies and fast spatial matching
1 Adaptive relevance feedback based on Bayesian inference for image retrieval Reporter : Erica Li Date :
An efficient and effective region-based image retrieval framework Reporter: Francis 2005/5/12.
Video Google: Text Retrieval Approach to Object Matching in Videos Authors: Josef Sivic and Andrew Zisserman ICCV 2003 Presented by: Indriyati Atmosukarto.
Gimme’ The Context: Context- driven Automatic Semantic Annotation with CPANKOW Philipp Cimiano et al.
Presentation Outline  Project Aims  Introduction of Digital Video Library  Introduction of Our Work  Considerations and Approach  Design and Implementation.
1 Ranked Queries over sources with Boolean Query Interfaces without Ranking Support Vagelis Hristidis, Florida International University Yuheng Hu, Arizona.
Re-ranking Documents Segments To Improve Access To Relevant Content in Information Retrieval Gary Madden Applied Computational Linguistics Dublin City.
 Image Search Engine Results now  Focus on GIS image registration  The Technique and its advantages  Internal working  Sample Results  Applicable.
MANISHA VERMA, VASUDEVA VARMA PATENT SEARCH USING IPC CLASSIFICATION VECTORS.
Video Google: Text Retrieval Approach to Object Matching in Videos Authors: Josef Sivic and Andrew Zisserman University of Oxford ICCV 2003.
Presented by Zeehasham Rasheed
Information retrieval Finding relevant data using irrelevant keys Example: database of photographic images sorted by number, date. DBMS: Well structured.
Using Relevance Feedback in Multimedia Databases
MPEG-7 DCD Based Relevance Feedback Using Merged Palette Histogram Ka-Man Wong and Lai-Man Po ISIMP 2004 Poly U, Hong Kong Department of Electronic Engineering.
HYPERGEO 1 st technical verification ARISTOTLE UNIVERSITY OF THESSALONIKI Baseline Document Retrieval Component N. Bassiou, C. Kotropoulos, I. Pitas 20/07/2000,
Jan SedmidubskySeptember 23, 2014Motion Retrieval for Security Applications Jan Sedmidubsky Jakub Valcik Pavel Zezula Motion Retrieval for Security Applications.
Improving web image search results using query-relative classifiers Josip Krapacy Moray Allanyy Jakob Verbeeky Fr´ed´eric Jurieyy.
DIVINES – Speech Rec. and Intrinsic Variation W.S.May 20, 2006 Richard Rose DIVINES SRIV Workshop The Influence of Word Detection Variability on IR Performance.
Large-Scale Content-Based Image Retrieval Project Presentation CMPT 880: Large Scale Multimedia Systems and Cloud Computing Under supervision of Dr. Mohamed.
1 Compact Descriptors for Visual Search Lab Multimedia Architecture and Processing Lab (MAPL) Department of Computer Science December, 2014 Hsinchu, Taiwan.
Text- and Content-based Approaches to Image Retrieval for the ImageCLEF 2009 Medical Retrieval Track Matthew Simpson, Md Mahmudur Rahman, Dina Demner-Fushman,
1 Faculty of Information Technology Generic Fourier Descriptor for Shape-based Image Retrieval Dengsheng Zhang, Guojun Lu Gippsland School of Comp. & Info.
Multimedia Databases (MMDB)
INTELLIGENT ORACLE CEMNET, SCE, NTU Speaker: Zeng Zinan
April 14, 2003Hang Cui, Ji-Rong Wen and Tat- Seng Chua 1 Hierarchical Indexing and Flexible Element Retrieval for Structured Document Hang Cui School of.
Ontologies and Lexical Semantic Networks, Their Editing and Browsing Pavel Smrž and Martin Povolný Faculty of Informatics,
Video Google: A Text Retrieval Approach to Object Matching in Videos Josef Sivic and Andrew Zisserman.
80 million tiny images: a large dataset for non-parametric object and scene recognition CS 4763 Multimedia Systems Spring 2008.
An MPEG-7 Based Content- aware Album System for Consumer Photographs 2003/12/18 Chen-Hsiu Huang, Chih-Hao Shen, Chun-Hsiang Huang and Ja-Ling Wu Communication.
Intelligent Bilddatabassökning Reiner Lenz, Thanh H. Bui, (Linh V. Tran) ITN, Linköpings Universitet David Rydén, Göran Lundberg Matton AB, Stockholm.
INTERACTIVELY BROWSING LARGE IMAGE DATABASES Ronald Richter, Mathias Eitz and Marc Alexa.
Competence Centre on Information Extraction and Image Understanding for Earth Observation 29th March 2007 Category - based Semantic Search Engine 1 Mihai.
1 A Compact Feature Representation and Image Indexing in Content- Based Image Retrieval A presentation by Gita Das PhD Candidate 29 Nov 2005 Supervisor:
C.Watterscs64031 Evaluation Measures. C.Watterscs64032 Evaluation? Effectiveness? For whom? For what? Efficiency? Time? Computational Cost? Cost of missed.
Data Mining, ICDM '08. Eighth IEEE International Conference on Duy-Dinh Le National Institute of Informatics Hitotsubashi, Chiyoda-ku Tokyo,
Information Retrieval
Comparing Document Segmentation for Passage Retrieval in Question Answering Jorg Tiedemann University of Groningen presented by: Moy’awiah Al-Shannaq
Supplementary Slides. More experimental results MPHSM already push out many irrelevant images Query image QHDM result, 4 of 36 ground truth found ANMRR=
+ Speed Up Texture Classification in Clothing Retrieval System 電機三 吳瑋凌.
An MPEG-7 Based Semantic Album for Home Entertainment Presented by Chen-hsiu Huang 2003/08/12 Presented by Chen-hsiu Huang 2003/08/12.
Divided Pretreatment to Targets and Intentions for Query Recommendation Reporter: Yangyang Kang /23.
Identifying “Best Bet” Web Search Results by Mining Past User Behavior Author: Eugene Agichtein, Zijian Zheng (Microsoft Research) Source: KDD2006 Reporter:
1 Faculty of Information Technology Enhanced Generic Fourier Descriptor for Object-Based Image Retrieval Dengsheng Zhang, Guojun Lu Gippsland School of.
Semantic search-based image annotation Petra Budíková, FI MU CEMI meeting, Plzeň,
Xiang Li,1 Lili Mou,1 Rui Yan,2 Ming Zhang1
Search Engine Architecture
Color-Texture Analysis for Content-Based Image Retrieval
Multimedia Information Retrieval
V. Mezaris, I. Kompatsiaris, N. V. Boulgouris, and M. G. Strintzis
Improving Retrieval Performance of Zernike Moment Descriptor on Affined Shapes Dengsheng Zhang, Guojun Lu Gippsland School of Comp. & Info Tech Monash.
موضوع پروژه : بازیابی اطلاعات Information Retrieval
Data Mining Chapter 6 Search Engines
Evaluation of IR Performance
CSE 635 Multimedia Information Retrieval
Agro Hackathon Hack 5: Agro Portal and VEST Registry
Face Detection Gender Recognition 1 1 (19) 1 (1)
Information Retrieval and Web Design
Presentation transcript:

Jan SedmidubskyApril 7, 2014Face Recognition Technology Faculty of Informatics Masaryk University Brno, Czech Republic 1/11

Jan Sedmidubsky Face recognition technology April 7, 2014Face Recognition Technology Motivation query face Face recognition technology ranked list of the most similar faces “Jack Daniels” – query person name Database of faces 2/11

Jan Sedmidubsky Components of face recognition technology –Detection – automatic localization of faces in images –Recognition – calculation of similarity of two faces –Retrieval – search for the most similar faces from a large database April 7, 2014Face Recognition Technology Motivation 3/11

Jan Sedmidubsky Our objective – to effectively and efficiently retrieve the most similar faces to a query face Approach –Multi-technology – more effective detection/recognition Combination of existing techniques for detection and recognition –Multi-query – more effective retrieval Query composed of a number of reference objects –Scalability – more efficient retrieval Indexing MPEG-7 descriptors + effective re-ranking April 7, 2014Face Recognition Technology Motivation 4/11

Jan Sedmidubsky Efficiency –Time necessary for detection of faces in an image –Time necessary for retrieval of the most similar faces Effectiveness –Detection – recall 75%, precision 100% –Recognition/retrieval – recall 50%, precision 40% when 8 relevant faces are in the database April 7, 2014Face Recognition Technology Motivation query 5/11

Jan SedmidubskyApril 7, 2014Face Recognition Technology Multi-technology – Face Detection Multi-technology approach for face detection –Combination of OpenCV, Luxand, Neurotechnology –Agreement of at least 2 techniques out of 3 Low-quality datasetHigh-quality dataset RecallPrecisionRecallPrecision OpenCV Luxand Neurotechnology Combination /11

Jan SedmidubskyApril 7, 2014Face Recognition Technology Multi-technology – Face Recognition Multi-technology approach for face recognition –Combination of MPEG-7, Luxand, Neurotechnology –Combination based on normalization of techniques Low-quality dataset (1k database faces) High-quality dataset (10k database faces) Recall precision=85% Recall precision=95% Recall precision=85% Recall precision=95% MPEG Luxand Neurotechnology Combination /11

Jan SedmidubskyApril 7, 2014Face Recognition Technology Multi-query –Query composed of a number of reference objects –Relevance feedback on 1.3M dataset: Manual selection of positive (correct) retrieval results Iterative search where positive results represent query objects 1st iteration: R=P=6%, 5th iteration: R=P=30% (k=60) query 8/11

Jan SedmidubskyApril 7, 2014Face Recognition Technology Scalability –Efficient search + re-ranking –Candidate set retrieved by the metric MPEG-7 function –Re-ranking of candidate set by multi-technology approach 9/11

Jan SedmidubskyApril 7, 2014Face Recognition Technology Face Recognition Technology – API Technology can be controlled by API –Management of faces/images: detectFaces, getImageFaces insertImage, insertFace, getAllFaces –Retrieval: searchByFaceId, searchByFaceDescriptor –Multi-query retrieval: multiSearchByFaceId, multiSearchByFaceDescriptor 10/11

Jan SedmidubskyApril 7, 2014Face Recognition Technology GUI Design Thank Petra and her husband very much: 11/11