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Generic Object Detection with Dense Neural Patterns and Regionlets
Author(s) -
Will Y. Zou,
Xiaoyu Wang,
Miao Sun,
Yuanqing Lin
Publication year - 2014
Language(s) - English
Resource type - Conference proceedings
DOI - 10.5244/c.28.72
Subject(s) - pascal (unit) , convolutional neural network , computer science , artificial intelligence , object detection , pattern recognition (psychology) , deep neural networks , object (grammar) , deep learning , artificial neural network , programming language
This paper addresses the challenge of establishing a bridge between deep convolutional neural networks and conventional object detection frameworks for accurate and efficient generic object detection. We introduce Dense Neural Patterns , short for DNPs, which are dense local features derived from discriminatively trained deep convolutional neural networks. DNPs can be easily plugged into conventional detection frameworks in the same way as other dense local features(like HOG or LBP). The effectiveness of the proposed approach is demonstrated with the Regionlets object detection framework. It achieved 46.1% mean average precision on the PASCAL VOC 2007 dataset, and 44.1% on the PASCAL VOC 2010 dataset, which dramatically improves the original Regionlets approach without DNPs. It is the first approach efficiently applying dee p convolutional features for conventional object detection models.

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