Task-Driven Feature Pooling For Image Classification

2015 IEEE International Conference on Computer Vision (ICCV)(2015)

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摘要
Feature pooling is an important strategy to achieve high performance in image classification. However, most pooling methods are unsupervised and heuristic. In this paper, we propose a novel task-driven pooling (TDP) model to directly learn the pooled representation from data in a discriminative manner. Different from the traditional methods (e.g., average and max pooling), TDP is an implicit pooling method which elegantly integrates the learning of representations into the given classification task. The optimization of TDP can equalize the similarities between the descriptors and the learned representation, and maximize the classification accuracy. TDP can be combined with the traditional BoW models (coding vectors) or the recent state-of-the-art CNN models (feature maps) to achieve a much better pooled representation. Furthermore, a self-training mechanism is used to generate the TDP representation for a new test image. A multi-task extension of TDP is also proposed to further improve the performance. Experiments on three databases (Flower-17, Indoor-67 and Caltech-101) well validate the effectiveness of our models.
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关键词
task-driven feature pooling,image classification,TDP model,pooled representation learning,implicit pooling method,BoW model,coding vector,CNN model,feature map,self-training mechanism,test image,Flower-17 database,Indoor-67 database,Caltech-101 database
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