State-of-Art Analysis of Multiplier designs for Image processing and Convolutional Neural Network Applications

Zainab Aizaz, K. Khare
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Abstract

Recently, due to the immense growth of computing power, image processing and Convolutional neural networks (CNN) have regained gigantic attention because of the exemplary performance in Image modification and classification applications. The multipliers are the indispensable circuit components in improving energy efficiency of hardware implementations of CNN and image processing techniques. In this paper, we have presented a comprehensive study on state-of-the-art multipliers for these applications. Hardware platforms for deploying image processing and CNN are briefly described and multiplier implementation on these are discussed. A detailed discussion on FPGA based embedded multipliers and ASIC based multipliers is presented. Emerging multiplier architectures for CNN applications are compared. The strategies used for designing approximate multipliers and error compensation are also summarized.
图像处理和卷积神经网络应用的乘法器设计现状分析
最近,由于计算能力的巨大增长,图像处理和卷积神经网络(CNN)由于在图像修改和分类应用中的典型表现而重新获得了巨大的关注。乘法器是提高CNN硬件实现和图像处理技术的能效必不可少的电路元件。在本文中,我们对这些应用的最先进的乘数器进行了全面的研究。简要描述了部署图像处理和CNN的硬件平台,并讨论了在这些平台上实现乘法器的方法。详细讨论了基于FPGA的嵌入式乘法器和基于ASIC的乘法器。对CNN应用中出现的乘法器架构进行了比较。总结了近似乘法器的设计策略和误差补偿策略。
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