2017
DOI: 10.12783/dtetr/icamm2016/7342
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Adapting Convolutional Neural Network to Multi-label Image Classification

Abstract: Abstract. Previous Multi-label image classification is largely limited by the representation power of the hand-crafted features. The convolutional neural network (CNN) has achieved successes in many computer vision tasks. In this work, we adapt the CNN to the multi-label image classification, where three approaches are used including end-to-end training on the target dataset, pre-training on Image Net and fine-tuning on the target dataset, CNN features extracted from Image Net for the AdaBoost.MH classifier. T… Show more

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