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Radar-Based Fall Detection Using Deep Machine Learning: System Configuration and Performance

机译:基于雷达的下落检测使用深机械学习:系统配置和性能

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Automatic fall-detection systems, saving time for the arrival of medical assistance, have the potential to reduce the risk of adverse health consequences. Fall-detection technologies are under continuous improvements in terms of both acceptability and performance. Ultra-wideband radar sensing is an interesting technology able to provide rich information in a privacy-preserving way, and thus well acceptable by end-users. In this study, a radar sensor compound of two ultra-wideband monostatic units in two different configurations (i.e., vertical and horizontal baseline) has been investigated in order to provide sensor data from which robust features can be automatically extracted by using deep learning. The achieved results show the potential of the suggested sensor data representation and the superiority of the double-unit vertical-baseline configuration. Indeed, while the horizontal configuration allows to discriminate the body's position around the radar system, the vertical one discriminates the body's height that is more important for fall detection.
机译:自动跌落系统,节省医疗援助的到来的时间有可能降低不良健康后果的风险。跌倒检测技术在可接受性和性能方面都在不断改进。超宽带雷达传感是一种有趣的技术,能够以隐私保存方式提供丰富的信息,因此可以通过最终用户可接受。在该研究中,已经研究了两种不同配置(即垂直和水平基线)的两个超宽带单位单元的雷达传感器化合物,以便提供通过使用深度学习来自动提取鲁棒特征的传感器数据。所达到的结果显示了建议的传感器数据表示的潜力和双单元垂直基线配置的优越性。实际上,虽然水平配置允许区分身体周围的雷达系统的位置,但是垂直的垂直形式识别身体的高度,对落后检测更为重要。

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