Reconfigurable Architecture for Real-time Decoding of Canonical Huffman Codes

Rimsha Tariq, S. G. Khawaja, M. Akram, Farhan Hussain
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Abstract

Data compression is an important algorithm which has found its use in modern day algorithms such as Convolutional Neural Networks (CNNs). Reconfigurable platforms (like FPGAs) have strong capabilities to implement time complex tasks like CNNs, however, these algorithms present a big challenge due to high resource demand. Data compression is one of the most utilized techniques to reduce memory utilization in FPGAs. The weights of CNN architecture are usually encoded to store in FPGA. In this paper, we propose design of an efficient decoder based on Canonical Huffman that can be utilized for the efficient decompression of weights in CNN. The proposed design makes use of Hash functions to effectively decode the weights eliminating the need for searching dictionary. The proposed design decodes a single weight in a single clock cycle. Our proposed design has a maximum frequency of 408.97MHz utilizing 1% of system LUTs when tested for Aritix 7 platform.
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规范霍夫曼码实时解码的可重构结构
数据压缩是一种重要的算法,在卷积神经网络(cnn)等现代算法中得到了应用。可重构平台(如fpga)具有实现cnn等时间复杂任务的强大能力,然而,由于资源需求高,这些算法提出了很大的挑战。数据压缩是fpga中最常用的减少内存使用的技术之一。CNN体系结构的权值通常被编码存储在FPGA中。在本文中,我们提出了一种基于Canonical Huffman的高效解码器的设计,可以用于CNN中权值的有效解压缩。该设计利用哈希函数对权重进行有效解码,消除了搜索字典的需要。提出的设计在一个时钟周期内解码单个重量。在aritix7平台上测试时,我们提出的设计使用1%的系统lut,最大频率为408.97MHz。
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