A Classification Leveraged Object Detector

04/07/2016
by   Miao Sun, et al.
0

Currently, the state-of-the-art image classification algorithms outperform the best available object detector by a big margin in terms of average precision. We, therefore, propose a simple yet principled approach that allows us to leverage object detection through image classification on supporting regions specified by a preliminary object detector. Using a simple bag-of- words model based image classification algorithm, we leveraged the performance of the deformable model objector from 35.9 20 categories on standard PASCAL VOC 2007 detection dataset.

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