Encoder-DecoderwithAtrous Separable Convolution for ...
Depthwise separable convolution: Depthwise separable convolution, fac-torizing a standard convolution into a depthwiseconvolutionfollowed by a point-wiseconvolution (i.e., 1×1 convolution), drastically reduces computation com-plexity. Specifically, the depthwise convolution performs a spatial convolution
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What Have We Learned From Deep Representations for …
openaccess.thecvf.comwhat these powerful models actually have learned. In this paper we shed light on deep spatiotemporal net-works by visualizing what excites the learned models us-ing activation maximization by backpropagating on the in-put. We are the first to visualize the hierarchical features
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