Title
Towards making HCS ear detection robust against rotation
Abstract
In identity retrieval from crime scene images, the outer ear (auricle) has ever since been regarded as a valuable characteristic. Because of its unique and permanent shape, the auricle also attracted the attention of researches in the field of biometrics over the last years. Since then, numerous pattern recognition techniques have been applied to ear images but similarly to face recognition, rotation and pose still pose problems to ear recognition systems. One solution for this is 3D ear imaging. the segmentation of the ear, prior to the actual feature extraction step, however, remains an unsolved problem. In 2010 Zhou at al. have proposed a solution for ear detection in 3D images, which incorporates a nave classifier using Shape Index Histogram. Histograms of Categorized Shapes (HCS) is reported to be efficient and accurate, but has difficulties with rotations. In our work, we extend the performance measures provided by Zhou et al. by evaluating the detection rate of the HCS detector under more realistic conditions. This includes performance measures with ear images under pose variations. Secondly, we propose to modify the ear detection approach by Zhou et al. towards making it invariant to rotation by using a rotation symmetric, circular detection window. Shape index histograms are extracted at different radii in order to get overlapping subsets within the circle. The detection performance of the modified HCS detector is evaluated on two different datasets, one of them containing images n various poses.
Year
DOI
Venue
2012
10.1109/CCST.2012.6393542
ICCST
Keywords
Field
DocType
biometrics (access control),ear,feature extraction,image retrieval,image segmentation,object detection,shape recognition,3d ear imaging,hcs ear detection,auricle,biometrics,circular detection window,crime scene images,detection performance,detection rate,histograms of categorized shapes,pattern recognition,pose variations,shape index histograms,vectors,shape,indexes,histograms,detectors
Facial recognition system,Computer vision,Histogram,Object detection,Pattern recognition,Computer science,Segmentation,Image retrieval,Image segmentation,Feature extraction,Artificial intelligence,Outer ear
Conference
ISSN
ISBN
Citations 
1071-6572 E-ISBN : 978-1-4673-2449-6
978-1-4673-2449-6
2
PageRank 
References 
Authors
0.40
6
3
Name
Order
Citations
PageRank
Pflug, A.1161.62
Back, P.M.220.40
Christoph Busch3796.50