Low power implementation of Geometric High-order Decorrelation-based Source Separation on an FPGA board

Ziquan Qin, Kaijie Wei, H. Amano, K. Nakadai
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Abstract

Open source software for robot audition called HARK aims to make “OpenCV” in audio signal processing, providing comprehensive functions from multichannel audio input to sound localization, sound source separation, and au-tomatic speech recognition. Since each of these HARK modules takes considerable energy when executed on PC, we propose to implement each module on an FPGA board called M-KUBOS connected. Here, we focus on the most computationally expensive function of HARK; the sound source separation, and implement it on a Zynq Ultrascale+ board. More than twice a performance improvement was achieved by using the sound frequency level parallelization in the HLS description compared to the software execution on the Ryzen 3990X64-core server. Power evaluation of the real board showed that the energy consumption is only 1/23.4 of the server.
基于几何高阶去相关的源分离在FPGA板上的低功耗实现
机器人试听开源软件HARK,旨在将音频信号处理做到“OpenCV”,提供从多声道音频输入到声音定位、声源分离、语音自动识别等全面功能。由于这些HARK模块在PC上执行时都需要消耗相当大的能量,因此我们建议在称为M-KUBOS连接的FPGA板上实现每个模块。在这里,我们关注的是HARK中计算成本最高的函数;声源分离,并在Zynq Ultrascale+板上实现。与Ryzen 3990x64核服务器上的软件执行相比,在HLS描述中使用声音频率级并行化实现了两倍以上的性能改进。实板功耗评估显示,能耗仅为服务器的1/23.4。
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