Dynamic Convolution: Attention Over Convolution Kernels
wise convolution, channel shuffle, squeeze-and-excitation [12], asymmetric convolution [5]) and architecture search ([27, 6, 2]) are important for designing efficient convolu-tional neural networks. However, even the state-of-the-art efficient CNNs (e.g. MobileNetV3 [10]) suffer significant performance degrada-
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