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Drop an Octave: Reducing Spatial Redundancy in Convolutional Neural Networks With Octave Convolution

机译:删除八度音阶:使用八度音阶卷积减少卷积神经网络中的空间冗余

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In natural images, information is conveyed at different frequencies where higher frequencies are usually encoded with fine details and lower frequencies are usually encoded with global structures. Similarly, the output feature maps of a convolution layer can also be seen as a mixture of information at different frequencies. In this work, we propose to factorize the mixed feature maps by their frequencies, and design a novel Octave Convolution (OctConv) operation to store and process feature maps that vary spatially “slower” at a lower spatial resolution reducing both memory and computation cost. Unlike existing multi-scale methods, OctConv is formulated as a single, generic, plug-and-play convolutional unit that can be used as a direct replacement of (vanilla) convolutions without any adjustments in the network architecture. It is also orthogonal and complementary to methods that suggest better topologies or reduce channel-wise redundancy like group or depth-wise convolutions. We experimentally show that by simply replacing convolutions with OctConv, we can consistently boost accuracy for both image and video recognition tasks, while reducing memory and computational cost. An OctConv-equipped ResNet-152 can achieve 82.9% top-1 classification accuracy on ImageNet with merely 22.2 GFLOPs.
机译:在自然图像中,信息以不同的频率传送,其中较高的频率通常使用精细的细节编码,而较低的频率通常使用全局结构编码。类似地,卷积层的输出特征图也可以看作是不同频率信息的混合。在这项工作中,我们建议将混合特征图的频率分解,并设计一种新颖的Octave卷积(OctConv)操作来存储和处理以较低空间分辨率在空间上“变慢”的特征图,从而降低内存和计算成本。与现有的多尺度方法不同,OctConv被公式化为一个单一的通用即插即用卷积单元,可以直接替换(原始)卷积,而无需对网络体系结构进行任何调整。它与建议更好的拓扑或减少像组或深度卷积这样的通道冗余的方法正交且互补。我们通过实验证明,通过简单地用OctConv替换卷积,我们可以不断提高图像和视频识别任务的准确性,同时减少内存和计算成本。配备OctConv的ResNet-152在ImageNet上仅22.2 GFLOP即可达到82.9%的top-1分类精度。

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