TinyML for UWB-radar based presence detection

Massimo Pavan, Armando Caltabiano, M. Roveri
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引用次数: 3

Abstract

Tiny Machine Learning (TinyML) is a novel research area aiming at designing machine and deep learning models and algorithms able to be executed on tiny devices such as Internet-of-Things units, edge devices or embedded systems. In this paper we introduce, for the first time in the literature, a TinyML solution for presence-detection based on UltrawideBand (UWB) radar, which is a particularly promising radar technology for pervasive systems. To achieve this goal we introduce a novel family of tiny convolutional neural networks for the processing of UWB-radar data characterized by a reduced memory footprint and computational demand so as to satisfy the severe technological constraints of tiny devices. From this technological perspective, UWB-radars are particularly relevant in the presence-detection scenario since they do not acquire sensitive information of users (e.g., images, videos or audio), hence preserving their privacy. The proposed solution has been successfully tested on a public-available benchmark for the indoor presence detection and on a real-world application of in-car presence detection.
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TinyML用于基于uwb雷达的存在检测
微型机器学习(TinyML)是一个新颖的研究领域,旨在设计能够在微型设备(如物联网单元、边缘设备或嵌入式系统)上执行的机器和深度学习模型和算法。在本文中,我们首次在文献中介绍了一种基于超宽带(UWB)雷达的TinyML存在检测解决方案,这是一种特别有前途的普适系统雷达技术。为了实现这一目标,我们引入了一种新型的微型卷积神经网络,用于处理超宽带雷达数据,其特点是内存占用和计算需求减少,从而满足微型设备的严格技术限制。从这个技术角度来看,超宽带雷达在存在检测场景中尤为重要,因为它们不会获取用户的敏感信息(例如图像、视频或音频),从而保护了用户的隐私。所提出的解决方案已在室内存在检测的公共基准和车内存在检测的实际应用中成功测试。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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