Convolutional Block Attention Module
Convolutional Block Attention Module Input Feature Refined Feature Fig.1: The overview of CBAM. The module has two sequential sub-modules: channel and spatial. The intermediate feature map is adaptively refined through our module (CBAM) at every convolutional block of deep networks. 2 Related Work Network engineering.
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