Transcription of Residual Attention Network for Image Classification
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Residual Attention Network for Image ClassificationFei Wang1, Mengqing Jiang2, Chen Qian1, Shuo Yang3, Cheng Li1,Honggang Zhang4, Xiaogang Wang3, Xiaoou Tang31 SenseTime Group Limited,2 Tsinghua University,3 The Chinese University of Hong Kong,4 Beijing University of Posts and Telecommunications1{wangfei, qianchen, this work, we propose Residual Attention Network ,a convolutional neural Network using Attention mechanismwhich can incorporate with state-of-art feed forward net-work architecture in an end-to-end training fashion. OurResidual Attention Network is built by stacking AttentionModules which generate Attention -aware features.}
sources (query and query context) are captured using atten-tion mechanism to assist each other in their work. While in our work, a single information source (image) is split into two different ones and combined repeatedly. And residual learning is applied to alleviate the problem brought by re-peated splitting and combining.
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