Feature combination with Multi-Kernel Learning for fine-grained visual classification

WACV(2014)

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摘要
This paper addresses the problem of fine-grained recognition in which local, mid-level features are used for classification. We propose to use the Multi-Kernel Learning framework to learn the relative importance of the features and to select optimal features with regards to the classification performance, in a principled way. Our results show improved classification results on common benchmarks for fine-grained classification, as compared to the best prior state-of-the-art methods. The proposed learning-based combination method also improves the concatenation combination approach which has been the standard practice in combining features so far.
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关键词
fine-grained visual classification,local mid-level feature classification,multikernel learning framework,learning (artificial intelligence),concatenation combination approach,optimal feature selection,feature combination,image classification,fine-grained recognition problem,learning-based combination method,feature selection,accuracy,learning artificial intelligence,kernel,feature extraction,dictionaries
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