超低功耗音频处理器件的硬件加速器与神经网络协同优化

Christoph Gerum, Adrian Frischknecht, T. Hald, Paul Palomero Bernardo, Konstantin Lübeck, O. Bringmann
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引用次数: 3

摘要

人工神经网络的日益普及并不局限于超低功耗的边缘设备。然而,这些通常具有很高的计算需求,并且需要专门的硬件加速器来确保设计满足功率和性能限制。人工优化神经网络以及相应的硬件加速器是非常具有挑战性的。本文介绍了HANNAH(硬件加速器和神经网络搜索),这是一个用于资源和功率受限边缘设备的深度神经网络和硬件加速器的自动化和组合硬件/软件协同设计的框架。优化方法采用基于进化的搜索算法、神经网络模板技术和分析KPI模型,对可配置的UltraTrail硬件加速器模板进行优化,以找到优化的神经网络和加速器配置。我们证明了HANNAH可以在单类唤醒词检测、多类关键字检测和语音活动检测等不同的音频分类任务中找到功耗最小、准确率高的合适神经网络,优于相关工作。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Hardware Accelerator and Neural Network Co-Optimization for Ultra-Low-Power Audio Processing Devices
The increasing spread of artificial neural networks does not stop at ultralow-power edge devices. However, these very often have high computational demand and require specialized hardware accelerators to ensure the design meets power and performance constraints. The manual optimization of neural networks along with the corresponding hardware accelerators can be very challenging. This paper presents HANNAH (Hardware Accelerator and Neural Network seArcH), a framework for automated and combined hardware/software co-design of deep neural networks and hardware accelerators for resource and power-constrained edge devices. The optimization approach uses an evolution-based search algorithm, a neural network template technique and analytical KPI models for the configurable UltraTrail hardware accelerator template in order to find an optimized neural network and accelerator configuration. We demonstrate that HANNAH can find suitable neural networks with minimized power consumption and high accuracy for different audio classification tasks such as single-class wake word detection, multi-class keyword detection and voice activity detection, which are superior to the related work.
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