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AUTOMATED PATTERN RECOGNITION SYSTEM FOR SHOE TRACKS

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Presentation on theme: "AUTOMATED PATTERN RECOGNITION SYSTEM FOR SHOE TRACKS"— Presentation transcript:

1 AUTOMATED PATTERN RECOGNITION SYSTEM FOR SHOE TRACKS
10th European Meeting for SP/TM - ENFSI Marks WG Bled, 7th June 2013

2 Origin of the Project Titel: NEXT GENERATION OF AUTOMATIC PATTERN RECOGNITION SYSTEMS FOR FORENSIC SHOE TRACK APPLICATIONS Core Target: Development of an automated footwear retrieval system Participation: forensity (industry partner) - Knows the challenges and needs of shoe track specialists - Responsible for a praxis oriented research (e.g. testing material) - Makes from the research results an application University of Basel, Computer Vision Group (research institute) - Has profound technological know-how in visual computing - Does the research - Delivers a practical procedure in image matching Financning: Commission of Technology and Innovation of the Swiss Government

3 2006 Ghouti Wavelet Decomposition 100%
Overview Previous Research Synthetic Data 2005 De Chazal DFT 81% 2005 Zhang Edge Histogram 88% 2006 Pavlou SIFT 85% 2006 Ghouti Wavelet Decomposition 100% 2007 Crookes Phase Only Correlation 82% 2008 Gueham Correlation Filter 94% 2008 Patil Gabor Feature Maps 91% 2008 AlGarni Hu Moments 99% 2008 Pavlou SIFT codebook 92% 2009 Nibouche SIFT + RANSAC 97% 2013 Wei SIFT + Correlation 96%

4 2006 Ghouti Wavelet Decomposition 100%
Overview Previous Research Synthetic Data VS Real Case Data 2005 De Chazal DFT 81% 2005 Zhang Edge Histogram 88% 2006 Pavlou SIFT 85% 2006 Ghouti Wavelet Decomposition 100% 2007 Crookes Phase Only Correlation 82% 2008 Gueham Correlation Filter 94% 2008 Patil Gabor Feature Maps 91% 2008 AlGarni Hu Moments 99% 2008 Pavlou SIFT codebook 92% 2009 Nibouche SIFT + RANSAC 97% 2013 Wei SIFT + Correlation 96%

5 = ≠ 2009 Dardi Mahalanobis Map 50% Cervelli Spectral Analysis 17%
Overview Previous Research Real Case Data 2009 Dardi Mahalanobis Map 50% Cervelli Spectral Analysis 17% database not publicly available no tolerance to rotation, scale, translation =

6 2009 Dardi Mahalanobis Map 50% Cervelli Spectral Analysis 17%
Overview Previous Research Real Case Data 2009 Dardi Mahalanobis Map 50% Cervelli Spectral Analysis 17% database not publicly available no tolerance to rotation, scale, translation 2009 Dardi Mahalanobis Map 50% Cervelli Spectral Analysis 17% database not publicly available no tolerance to rotation, scale, translation 2011 Tang Graph Embedding 70% too strong assumptions ( lines, ellipses, circles )

7 Shoeprint Matching System Overview
Input Data: Database: User Interaction: Rotation Cropping Scale Normalization Mark Outsole Mark Regions of Interest Classification: User Interface: Get rid of those challanges which are easy to solve for a human and make overall task of matching - Feature Extraction and Matching

8 Input Data - Issues Input Data User Interaction DB Classification
User Interface: Get rid of those challanges which are easy to solve for a human and make overall task of matching Adapted from Cervelli et al. 2009

9 Over 20’000 crime scene shoeprints and reference prints provided by:
Input Data - Source Over 20’000 crime scene shoeprints and reference prints provided by: Test-Database currently contains 220 shoeprints & 1115 reference prints Still under development 9

10 User Interaction I/II Input Data User Interaction DB Classification
User Interface: Get rid of those challanges which are easy to solve for a human and make overall task of matching

11 User Interaction II/II
Input Data User Interaction DB Classification User Interface: Get rid of those challanges which are easy to solve for a human and make overall task of matching

12 Realignment scale rotation Input Data User Interaction Realignment DB
User Interface: Get rid of those challanges which are easy to solve for a human and make overall task of matching Classification

13 Classification Results
Cumulative Match Score 220 Shoeprints / 1115 Reference Prints Input Data User Interaction Realignment DB User Interface: Get rid of those challanges which are easy to solve for a human and make overall task of matching Classification

14 Overall promising results in the research field
Conclusion Overall promising results in the research field Still a variety of challanges Unconstrained Noise, Photos, Transformation invariance Need for standard datasets & research projects

15 Questions


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