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A Reconfigurable Winograd CNN Accelerator with Nesting Decomposition Algorithm for Computing Convolution with Large Filters

2021-02-26 02:42:42
Jingbo Jiang, Xizi Chen, Chi-Ying Tsui

Abstract

Recent literature found that convolutional neural networks (CNN) with large filters perform well in some applications such as image semantic segmentation. Winograd transformation helps to reduce the number of multiplications in a convolution but suffers from numerical instability when the convolution filter size gets large. This work proposes a nested Winograd algorithm to iteratively decompose a large filter into a sequence of 3x3 tiles which can then be accelerated with a 3x3 Winograd algorithm. Compared with the state-of-art OLA-Winograd algorithm, the proposed algorithm reduces the multiplications by 1.41 to 3.29 times for computing 5x5 to 9x9 convolutions.

Abstract (translated)

URL

https://arxiv.org/abs/2102.13272

PDF

https://arxiv.org/pdf/2102.13272.pdf


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