Energy Efficient Software-hardware Co-design of Quantized Recurrent Convolutional Neural Network for Continuous Cardiac Monitoring

Jinhai Hu, Cong Sheng Leow, W. Goh, Yuan Gao
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Abstract

This paper presents an electrocardiogram (ECG) signal classification model based on Recurrent Convolutional Neural Network (RCNN). With recurrent connections and data buffers, a single convolutional layer is reused to implement multiple layers function. Using a 5-layers CNN network as an example, this approach reduces the number of parameters by more than 50% while achieving the same feature extraction size. Furthermore, quantized RCNN (QRCNN) is proposed where the input signal, interlayer output, and kernel weights are quantized to unsigned INT8, INT4, and signed INT4 respectively. For hardware implementation, pipelining and data reuse within the 1-D convolution kernel can potentially reduce latency. QRCNN model achieved 98.08% validation accuracy on MIT-BIH datasets with only 1% degradation due to quantization. The estimated dynamic power consumption of the QRCNN is less than 60% of a conventional quantized CNN when implemented on a Xilinx Artix-7 FPGA, showing the potential for resource-constraint edge devices.
用于心脏连续监测的量化循环卷积神经网络节能软硬件协同设计
提出了一种基于递归卷积神经网络(RCNN)的心电信号分类模型。通过循环连接和数据缓冲区,可以重用单个卷积层来实现多层功能。以5层CNN网络为例,该方法在实现相同特征提取规模的同时,将参数数量减少了50%以上。在此基础上,提出了量化RCNN (QRCNN),将输入信号、层间输出和核权分别量化为无符号INT8、INT4和有符号INT4。对于硬件实现,1-D卷积内核中的流水线和数据重用可以潜在地减少延迟。QRCNN模型在MIT-BIH数据集上获得了98.08%的验证准确率,仅因量化而降低了1%。在Xilinx Artix-7 FPGA上实现时,QRCNN的估计动态功耗低于传统量化CNN的60%,显示了资源约束边缘设备的潜力。
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