DocumentCode :
254358
Title :
Randomized Max-Margin Compositions for Visual Recognition
Author :
Eigenstetter, Angela ; Takami, Miho ; Ommer, Bjorn
Author_Institution :
Heidelberg Collaboratory for Image Process. & IWR, Univ. of Heidelberg, Heidelberg, Germany
fYear :
2014
fDate :
23-28 June 2014
Firstpage :
3590
Lastpage :
3597
Abstract :
A main theme in object detection are currently discriminative part-based models. The powerful model that combines all parts is then typically only feasible for few constituents, which are in turn iteratively trained to make them as strong as possible. We follow the opposite strategy by randomly sampling a large number of instance specific part classifiers. Due to their number, we cannot directly train a powerful classifier to combine all parts. Therefore, we randomly group them into fewer, overlapping compositions that are trained using a maximum-margin approach. In contrast to the common rationale of compositional approaches, we do not aim for semantically meaningful ensembles. Rather we seek randomized compositions that are discriminative and generalize over all instances of a category. Our approach not only localizes objects in cluttered scenes, but also explains them by parsing with compositions and their constituent parts. We conducted experiments on PASCAL VOC´07, on the VOC´10 evaluation server, and on the MITIndoor scene dataset. To the best of our knowledge, our randomized max-margin compositions (RM2C) are the currently best performing single class object detector using only HOG features. Moreover, the individual contributions of compositions and their parts are evaluated in separate experiments that demonstrate their potential.
Keywords :
image classification; image sampling; natural scenes; object detection; object recognition; random processes; HOG features; MITIndoor scene dataset; PASCAL VOC07; RM2C; VOC10 evaluation server; classifier training; cluttered scenes; discriminative part-based model; maximum-margin approach; object detection; parsing; randomized compositions; randomized max-margin composition; randomly sampling; single class object detector; visual recognition; Deformable models; Object detection; Object recognition; Pattern recognition; Support vector machines; Training; Visualization; compositionality; mid-level representation; object detection; part-based models; randomized models; scene classification; visual parsing; visual recognition;
fLanguage :
English
Publisher :
ieee
Conference_Titel :
Computer Vision and Pattern Recognition (CVPR), 2014 IEEE Conference on
Conference_Location :
Columbus, OH
Type :
conf
DOI :
10.1109/CVPR.2014.459
Filename :
6909854
Link To Document :
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