Local Relation Networks for Image Recognition
Local Relation Networks for Image Recognition ... recognition tasks1. By learning how to adaptively compose 1For example, geometric priors are intrinsically encoded in the con- ... is also achieved with basic residual blocks and on deeper networks (50 and 101 layers).
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