Xception: Deep Learning With Depthwise Separable …
ules and depthwise separable convolutions are also possible: in effect, there is a discrete spectrum between regular convo-lutions and depthwise separable convolutions, parametrized by the number of independent channel-space segments used for performing spatial convolutions. A regular convolution (preceded by a 1x1 convolution), at one extreme ...
With, Learning, Convolutions, Separable, Lution, Depthwise, Convos, Learning with depthwise separable, Convo lutions
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What Have We Learned From Deep Representations for …
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