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BRIEF: Backward Reduction of CNNs with Information Flow Analysis

机译:简介:通过信息流分析向后减少CNNS

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This paper proposes BRIEF, a backward reduction algorithm that explores compact CNN-model designs from the information flow perspective. This algorithm can remove substantial non-zero weighting parameters (redundant neural channels) of a network by considering its dynamic behavior, which traditional model-compaction techniques cannot achieve. With the aid of our proposed algorithm, we achieve significant model reduction on ResNet-34 in the ImageNet scale (32.3% reduction), which is 3X better than the previous result (10.8%). Even for highly optimized models such as SqueezeNet and MobileNet, we can achieve additional 10.81% and 37.56% reduction, respectively, with negligible performance degradation.
机译:本文提出了一种向后减少算法,探讨了信息流程透视的紧凑CNN模型设计。该算法通过考虑其动态行为,可以通过考虑其动态行为来除去网络的大量非零加权参数(冗余神经通道),传统的模型压缩技术无法实现。借助我们所提出的算法,我们在想象中心规模(减少32.3%)中的resnet-34对resnet-34进行了重大模型,这比上一个结果更好(10.8%)。即使对于高度优化的型号,如挤压仪和Mobilenet,我们也可以分别达到10.81%和37.56%的额外减少,性能下降可忽略不计。

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