Pedestrian Detection under Progressive Occlusion

Pedestrian detection is a very promising area in computer vision, since it enables interesting and a variety of applications such as car assistance, surveillance systems and robot vision. During the last years, a variety of new techniques were proposed which greatly improved the detection rates. How...

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Hauptverfasser: Santos, Silvio G. O., Tsang Ing Ren, Cavalcanti, George D. C., Tsang Ing Jyh, Sijbers, Jan
Format: Tagungsbericht
Sprache:eng
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Zusammenfassung:Pedestrian detection is a very promising area in computer vision, since it enables interesting and a variety of applications such as car assistance, surveillance systems and robot vision. During the last years, a variety of new techniques were proposed which greatly improved the detection rates. However, the performance of such systems rapidly deteriorates when pedestrians are under occlusion. This paper analyze how the detection rates of HOG, HOG-LBP, and two new combinations, HOG-LTP and HOG-LMEBP, are affected when occlusion area are progressively added to pedestrian images. Using the INRIA dataset, occlusions were synthetically generated by merging different sizes of non-pedestrian images from different directions. We show that detection of pedestrian under occlusion can be improved by simply combining features.
ISSN:1062-922X
2577-1655
DOI:10.1109/SMC.2013.737