Co-consistent regularization with discriminative feature for zero-shot learning, Proc. of Int'l Conf
Yanling Tian; Weitong Zhang; Qieshi Zhang; Jun Cheng; Pengyi Hao; ang Lu
2018
会议日期2018
会议地点柬埔寨
英文摘要Abstract. With the development of deep learning, zero-shot learning(ZSL) issues deserve more attention. Due to the problems of projection domain shift and discriminative feature extraction, we propose an end-to[1]end framework, which is different from traditional ZSL methods in the following two aspects: 1) we use a cascaded network to automatically locate discriminative regions, which can better extract latent features and contribute to the representation of key semantic attributes. 2) our framework achieves mapping in visual-semantic embedding space and calculation procedure of the dot product in deep learning framework. In addition, a joint loss function is designed for the regularization constraint of the whole method and achieves supervised learning, which enhances generalization ability in test set. In this paper, we make some experiments on Animals with Attributes 2 (AwA2), Caltech-UCSD Birds 200-2011 (CUB) and SUN datasets, which achieves better results compared to the state-of-the-art methods.
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内容类型会议论文
源URL[http://ir.siat.ac.cn:8080/handle/172644/13784]  
专题深圳先进技术研究院_集成所
推荐引用方式
GB/T 7714
Yanling Tian,Weitong Zhang,Qieshi Zhang,et al. Co-consistent regularization with discriminative feature for zero-shot learning, Proc. of Int'l Conf[C]. 见:. 柬埔寨. 2018.
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