Data Entry: Please note that the research database will be replaced by UNIverse by the end of October 2023. Please enter your data into the system https://universe-intern.unibas.ch. Thanks

Login for users with Unibas email account...

Login for registered users without Unibas email account...

 
Unsupervised footwear impression analysis and retrieval from crime scene data
ConferencePaper (Artikel, die in Tagungsbänden erschienen sind)
 
ID 2738559
Author(s) Kortylewski, Adam; Albrecht, Thomas; Vetter, Thomas
Author(s) at UniBasel Vetter, Thomas
Kortylewski, Adam
Year 2015
Title Unsupervised footwear impression analysis and retrieval from crime scene data
Book title (Conference Proceedings) Computer Vision - ACCV 2014 : 12th Asian Conference on Computer Vision, Singapore, Singapore, November 1-5, 2014 ; revised selected papers
Volume 9008
Place of Conference Singapore
Publisher Springer International Publishing
Place of Publication Cham
Pages S. 644-658
Abstract Footwear impressions are one of the most frequently securedtypes of evidence at crime scenes. For the investigation of crime seriesthey are among the major investigative notes. In this paper, we introducean unsupervised footwear retrieval algorithm that is able to cope withunconstrained noise conditions and is invariant to rigid transformations.A main challenge for the automated impression analysis is the separationof the actual shoe sole information from the structured backgroundnoise. We approach this issue by the analysis of periodic patterns. Givenunconstrained noise conditions, the redundancy within periodic patternsmakes them the most reliable information source in the image. In thiswork, we present four main contributions: First, we robustly measurelocal periodicity by fitting a periodic pattern model to the image. Second,based on the model, we normalize the orientation of the image andcompute the window size for a local Fourier transformation. In this way,we avoid distortions of the frequency spectrum through other structuresor boundary artefacts. Third, we segment the pattern through robustpoint-wise classification, making use of the property that the amplitudesof the frequency spectrum are constant for each position in a periodicpattern. Finally, the similarity between footwear impressions is measuredby comparing the Fourier representations of the periodic patterns. Wedemonstrate robustness against severe noise distortions as well as rigidtransformations on a database with real crime scene impressions. Moreover,we make our database available to the public, thus enabling standardizedbenchmarking for the first time.
edoc-URL http://edoc.unibas.ch/dok/A6328777
Full Text on edoc Restricted
Digital Object Identifier DOI 10.1007/978-3-319-16628-5_46
ISI-Number WOS:000362452500046
 
   

MCSS v5.8 PRO. 0.525 sec, queries - 0.000 sec ©Universität Basel  |  Impressum   |    
18/04/2024