2014
DOI: 10.1587/transinf.2014edp7092
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Improving Hough Based Pedestrian Detection Accuracy by Using Segmentation and Pose Subspaces

Abstract: SUMMARYThe Hough voting framework is a popular approach to parts based pedestrian detection. It works by allowing image features to vote for the positions and scales of pedestrians within a test image. Each vote is cast independently from other votes, which allows for strong occlusion robustness. However this approach can produce false pedestrian detections by accumulating votes inconsistent with each other, especially in cluttered scenes such as typical street scenes. This work aims to reduce the sensibility … Show more

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