人类活动识别:边缘AIoT应用的神经形态方法的适用性

V. Fra, Evelina Forno, Riccardo Pignari, T. Stewart, E. Macii, Gianvito Urgese
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引用次数: 7

摘要

人体活动识别(HAR)是一种涉及人体监测产生的时变信号的分类问题,其应用领域涵盖了人类生活的方方面面,从医疗保健到运动,从安全到智能环境。因此,它自然非常适合个性化护理点(POC)分析的边缘部署或为用户定制的其他服务。然而,典型的智能和可穿戴设备在能耗方面存在相关限制,这极大地阻碍了边缘计算在HAR等任务中成功应用的可能性。在本文中,我们研究了如何通过采用神经形态方法来缓解这个问题。通过比较基于传统深度神经网络(DNN)架构的优化分类器以及最近的替代方案,如Legendre记忆单元(LMU),我们展示了尖峰神经网络(snn)如何有效地处理HAR典型的时间信号,以低能量成本提供高性能。通过进行面向应用的超参数优化,提出了一种灵活扩展到不同领域的方法,以扩大适用于边缘人工智能(AIoT)应用的神经启发分类器领域。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Human activity recognition: suitability of a neuromorphic approach for on-edge AIoT applications
Human activity recognition (HAR) is a classification problem involving time-dependent signals produced by body monitoring, and its application domain covers all the aspects of human life, from healthcare to sport, from safety to smart environments. As such, it is naturally well suited for on-edge deployment of personalized point-of-care (POC) analyses or other tailored services for the user. However, typical smart and wearable devices suffer from relevant limitations regarding energy consumption, and this significantly hinders the possibility for successful employment of edge computing for tasks like HAR. In this paper, we investigate how this problem can be mitigated by adopting a neuromorphic approach. By comparing optimized classifiers based on traditional deep neural network (DNN) architectures as well as on recent alternatives like the Legendre Memory Unit (LMU), we show how spiking neural networks (SNNs) can effectively deal with the temporal signals typical of HAR providing high performances at a low energy cost. By carrying out an application-oriented hyperparameter optimization, we also propose a methodology flexible to be extended to different domains, to enlarge the field of neuro-inspired classifier suitable for on-edge artificial intelligence of things (AIoT) applications.
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