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Run Time Adaptive Network Slimming for Mobile Environments

机译:运行时间自适应网络用于移动环境的减肥

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Modern convolutional neural network (CNN) models offer significant performance improvement over previous methods, but suffer from high computational complexity and are not able to adapt to different run-time needs. To solve above problem, this paper proposes an inference-stage pruning method that offers multiple operation points in a single model, which can provide computational power-accuracy modulation during run time. This method can perform on shallow CNN models as well as very deep networks such as Resnet101. Experimental results show that up to 50% savings in the FLOP are available by trading away less than 10% of the top-1 accuracy.
机译:现代卷积神经网络(CNN)模型对以前的方法提供了显着的性能改进,但遭受了高的计算复杂性,并且无法适应不同的运行时间需求。为了解决上述问题,本文提出了一种推断级修剪方法,其在单个模型中提供多个操作点,其可以在运行时提供计算功率准确度调制。该方法可以在浅CNN模型以及诸如Resnet101之类的非常深的网络上执行。实验结果表明,牌牌中可节省高达50%,交易价格低于前1个精度的10%。

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