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Environmental Sound Classification on An Embedded Hardware Platform
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本文分析了大规模预训练音频神经网络在资源受限设备(如Raspberry Pi)上的性能变化,探讨了CPU温度、麦克风质量和音频信号音量对性能的影响,并指出针对边缘设备部署AI模型时应考虑的挑战。

arXiv:2306.09106v2 Announce Type: replace-cross Abstract: Convolutional neural networks (CNNs) have exhibited state-of-the-art performance in various audio classification tasks. However, their real-time deployment remains a challenge on resource constrained devices such as embedded systems. In this paper, we analyze how the performance of large-scale pre-trained audio neural networks designed for audio pattern recognition changes when deployed on a hardware such as a Raspberry Pi. We empirically study the role of CPU temperature, microphone quality and audio signal volume on performance. Our experiments reveal that the continuous CPU usage results in an increased temperature that can trigger an automated slowdown mechanism in the Raspberry Pi, impacting inference latency. The quality of a microphone, specifically with affordable devices such as the Google AIY Voice Kit, and audio signal volume, all affect the system performance. In the course of our investigation, we encounter substantial complications linked to library compatibility and the unique processor architecture requirements of the Raspberry Pi, making the process less straightforward compared to conventional computers (PCs). Our observations, while presenting challenges, pave the way for future researchers to develop more compact machine learning models, design heat-dissipative hardware, and select appropriate microphones when AI models are deployed for real-time applications on edge devices.

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卷积神经网络 音频识别 边缘设备 性能分析 Raspberry Pi
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