3D-NWA: A Nested-Winograd Accelerator for 3D CNNs

Huafeng Ye, Huipeng Deng, Jian Wang, Mingyu Wang, Zhiyi Yu
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引用次数: 1

Abstract

3D Convolutional neural networks (3D CNNs) perform better in some scenarios, such as video understanding and 3D medical image diagnosis. With the increase in the dimension and size of the convolution kernel, CNN's computational complexity and implementation difficulty increase severely. Winograd transformation can significantly reduce the number of multiplications in convolution operations. However, large convolution filters will bring numerical instability. In this article, we presented a novel method called 3D nested Winograd algorithm to address the problem. Compared with the state-of-art OLA-Winograd algorithm, the proposed algorithm reduces the multiplications by 1.72 to 5.83× for computing 5 × 5 × 5 to 9 × 9 × 9 convolutions. Finally, we demonstrate the efficiency of 3D-NWA on the FPGA platform (Xilinx VCU118) and achieve highest DSP efficiency up to 4.67× compared with the state-of-art accelerators.
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3D- nwa:用于3D cnn的嵌套winograd加速器
3D卷积神经网络(3D cnn)在视频理解和3D医学图像诊断等场景中表现更好。随着卷积核的维数和大小的增加,CNN的计算复杂度和实现难度急剧增加。Winograd变换可以显著减少卷积运算中的乘法次数。然而,大卷积滤波器会带来数值的不稳定性。在本文中,我们提出了一种称为3D嵌套Winograd算法的新方法来解决这个问题。与目前最先进的OLA-Winograd算法相比,该算法在计算5 × 5 × 5到9 × 9 × 9个卷积时,将乘法次数减少了1.72至5.83×。最后,我们在FPGA平台(Xilinx VCU118)上演示了3D-NWA的效率,与最先进的加速器相比,DSP效率高达4.67倍。
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