超分辨率重构网络压缩优化算法研究

Xiaodong Zhao, Yanfang Fu, Feng Tian, Xunying Zhang
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引用次数: 1

摘要

在嵌入式系统资源有限的情况下,本文提出了一种基于剪枝和量化的压缩优化算法,以满足基于卷积神经网络(CNN)的超分辨率重构算法的计算需求。首先,多个正规化修剪优化算法基于模块和BatchNorm层提出了关注。然后,提出了一种面向FPGA架构的INT8训练与量化协调优化算法。在超分辨率CNN (SRCNN)、快速超分辨率CNN (FSRCNN)和甚深超分辨率CNN (VDSRCNN)上验证了剪叶优化算法的性能。针对SRCNN,在FPGA EC2硬件仿真平台上验证了量化优化算法的性能。结果表明,所提出的压缩优化算法能够很好地平衡网络精度和推理速度。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Research on Compression Optimization Algorithm for Super-resolution Reconstruction Network
Under the condition of limited resources of embedded systems, the paper proposes a compression optimization algorithm based on pruning and quantization, so that the computational requirements of the super-resolution reconstruction algorithm based on a Convolutional Neural Network (CNN) can be met. First, a multiple regularization pruning optimization algorithm based on an attention module and a BatchNorm layer is proposed. Then, a coordination optimization algorithm of INT8 training and quantization for FPGA architecture is proposed. The performance of the pruning optimization algorithm was verified for the Super-Resolution CNN (SRCNN), the Fast Super-Resolution CNN (FSRCNN), and the Very Deep Super-resolution CNN (VDSRCNN). As for SRCNN, the performance of the quantization optimization algorithm was verified on the FPGA EC2 hardware simulation platform. The results show that the proposed compression optimization algorithm can achieve a good balance between network accuracy and inference speed.
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