Dynamic Multi-Path Neural Network

arXiv: Computer Vision and Pattern Recognition(2020)

引用 23|浏览99
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摘要
Although deeper and larger neural networks have achieved better performance, due to overwhelming burden on computation, they cannot meet the demands of deployment on resource-limited devices. An effective strategy to address this problem is to make use of dynamic inference mechanism, which changes the inference path for different samples at runtime. Existing methods only reduce the depth by skipping an entire specific layer, which may lose important information in this layer. In this paper, we propose a novel method called Dynamic Multipath Neural Network (DMNN), which provides more topology choices in terms of both width and depth on the fly. For better modelling the inference path selection, we further introduce previous state and object category information to guide the training process. Compared to previous dynamic inference techniques, the proposed method is more flexible and easier to incorporate into most modern network architectures. Experimental results on ImageNet and CIFAR-100 demonstrate the superiority of our method on both efficiency and classification accuracy.
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关键词
dynamic inference techniques,modern network architectures,deeper networks,dynamic inference mechanism,entire specific layer,inference path selection,previous state,object category information,dynamic multipath neural network
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