DocumentCode :
3332000
Title :
Detection Evolution with Multi-order Contextual Co-occurrence
Author :
Guang Chen ; Yuanyuan Ding ; Jing Xiao ; Han, Tony X.
Author_Institution :
Dept. of ECE, Univ. of Missouri, Columbia, MO, USA
fYear :
2013
fDate :
23-28 June 2013
Firstpage :
1798
Lastpage :
1805
Abstract :
Context has been playing an increasingly important role to improve the object detection performance. In this paper we propose an effective representation, Multi-Order Contextual co-Occurrence (MOCO), to implicitly model the high level context using solely detection responses from a baseline object detector. The so-called (1st-order) context feature is computed as a set of randomized binary comparisons on the response map of the baseline object detector. The statistics of the 1st-order binary context features are further calculated to construct a high order co-occurrence descriptor. Combining the MOCO feature with the original image feature, we can evolve the baseline object detector to a stronger context aware detector. With the updated detector, we can continue the evolution till the contextual improvements saturate. Using the successful deformable-part-model detector [13] as the baseline detector, we test the proposed MOCO evolution framework on the PASCAL VOC 2007 dataset [8] and Caltech pedestrian dataset [7]: The proposed MOCO detector outperforms all known state-of-the-art approaches, contextually boosting deformable part models (ver. 5) [13] by 3.3% in mean average precision on the PASCAL 2007 dataset. For the Caltech pedestrian dataset, our method further reduces the log-average miss rate from 48% to 46% and the miss rate at 1 FPPI from 25% to 23%, compared with the best prior art [6].
Keywords :
feature extraction; image representation; object detection; ubiquitous computing; Caltech pedestrian dataset; MOCO feature; baseline object detector; context aware detector; context feature; cooccurrence descriptor; detection evolution; image feature; multiorder contextual cooccurrence; Accuracy; Context; Context modeling; Deformable models; Detectors; Feature extraction; Training; Context; Detection;
fLanguage :
English
Publisher :
ieee
Conference_Titel :
Computer Vision and Pattern Recognition (CVPR), 2013 IEEE Conference on
Conference_Location :
Portland, OR
ISSN :
1063-6919
Type :
conf
DOI :
10.1109/CVPR.2013.235
Filename :
6619079
Link To Document :
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