DocumentCode :
112175
Title :
Contextualizing Object Detection and Classification
Author :
Qiang Chen ; Zheng Song ; Jian Dong ; Zhongyang Huang ; Yang Hua ; Shuicheng Yan
Author_Institution :
IBM Res., Melbourne, VIC, Australia
Volume :
37
Issue :
1
fYear :
2015
fDate :
Jan. 1 2015
Firstpage :
13
Lastpage :
27
Abstract :
We investigate how to iteratively and mutually boost object classification and detection performance by taking the outputs from one task as the context of the other one. While context models have been quite popular, previous works mainly concentrate on co-occurrence relationship within classes and few of them focus on contextualization from a top-down perspective, i.e. high-level task context. In this paper, our system adopts a new method for adaptive context modeling and iterative boosting. First, the contextualized support vector machine (Context-SVM) is proposed, where the context takes the role of dynamically adjusting the classification score based on the sample ambiguity, and thus the context-adaptive classifier is achieved. Then, an iterative training procedure is presented. In each step, Context-SVM, associated with the output context from one task (object classification or detection), is instantiated to boost the performance for the other task, whose augmented outputs are then further used to improve the former task by Context-SVM. The proposed solution is evaluated on the object classification and detection tasks of PASCAL Visual Object Classes Challenge (VOC) 2007, 2010 and SUN09 data sets, and achieves the state-of-the-art performance.
Keywords :
Pascal; image classification; iterative methods; object detection; support vector machines; Context-SVM; PASCAL visual object class challenge; VOC; adaptive context modeling; classification score; co-occurrence relationship; context-adaptive classifier; contextualized support vector machine; iterative boosting; iterative training procedure; object classification contextualization; object detection contextualization; sample ambiguity; Computational modeling; Context; Context modeling; Data models; Feature extraction; Object detection; Support vector machines; Object classification; context modeling; object detection;
fLanguage :
English
Journal_Title :
Pattern Analysis and Machine Intelligence, IEEE Transactions on
Publisher :
ieee
ISSN :
0162-8828
Type :
jour
DOI :
10.1109/TPAMI.2014.2343217
Filename :
6866901
Link To Document :
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