Kaisei Kimura, Shota Yatabe, Sora Isobe, Yoichi Tomioka, H. Saito, Y. Kohira, Qiangfu Zhao
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引用次数: 1
Abstract
In recent years, the demand for faster inference of convolutional neural networks with a smaller and low-power accelerator is increasing to realize low-latency control of robots and reduce network load. In this paper, we propose a random-forest-based approximation layer unit (RFA-LU) for binary and ternary CNNs to realize faster inference. This unit introduces a novel technique predicting output feature maps using random forest models instead of directly calculating multiply-accumulate (MAC) operations. We demonstrate that the proposed RFA-LU can reduce the number of adaptive logic modules (ALMs) by 56.2% (61.3%) and the number of registers by 85.3% (84.9%) compared with conventional binary (ternary) CNN circuits of the same performance on an Intel Cyclone V SX FPGA.
近年来,为了实现机器人的低延迟控制和降低网络负载,人们越来越需要用更小、更低功耗的加速器对卷积神经网络进行更快的推理。在本文中,我们提出了一种基于随机森林的近似层单元(RFA-LU),用于二进制和三元cnn来实现更快的推理。本单元介绍了一种使用随机森林模型来预测输出特征映射的新技术,而不是直接计算乘法累积(MAC)操作。我们证明,与Intel Cyclone V SX FPGA上具有相同性能的传统二进制(三元)CNN电路相比,所提出的RFA-LU可以将自适应逻辑模块(ALMs)的数量减少56.2%(61.3%),寄存器的数量减少85.3%(84.9%)。