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arxiv: 1803.05909 · v1 · pith:MLE2NNRFnew · submitted 2018-03-15 · 💻 cs.CV

Efficient Hardware Realization of Convolutional Neural Networks using Intra-Kernel Regular Pruning

classification 💻 cs.CV
keywords pruningcnnscomputationalhardwareregularconvolutionalfine-grainedintra-kernel
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The recent trend toward increasingly deep convolutional neural networks (CNNs) leads to a higher demand of computational power and memory storage. Consequently, the deployment of CNNs in hardware has become more challenging. In this paper, we propose an Intra-Kernel Regular (IKR) pruning scheme to reduce the size and computational complexity of the CNNs by removing redundant weights at a fine-grained level. Unlike other pruning methods such as Fine-Grained pruning, IKR pruning maintains regular kernel structures that are exploitable in a hardware accelerator. Experimental results demonstrate up to 10x parameter reduction and 7x computational reduction at a cost of less than 1% degradation in accuracy versus the un-pruned case.

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