Effect of data representations on deep learning in fall detection

B. Jokanović, M. Amin, F. Ahmad
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引用次数: 27

Abstract

Fall-related injuries can have a significant impact on the quality of life of the elderly population. Because of the upward trend in the elderly for continued independent living, there is a growing need for reliable fall detectors that can enable prompt assistance in case of falls. Doppler radar technology offers a number of desirable attributes for realization of fall detection and health monitoring systems that can facilitate self-dependent living. Human motions generate changes in Doppler frequencies that can be accurately captured using time-frequency representations. A variety of time-frequency distributions have been proposed in the literature. In this paper, we investigate the impact of different time-frequency representations on the performance of a deep neural network based fall detector. Using real data, we demonstrate that the choice of data representation in the time-frequency domain is important for enhancing the accuracy of the fall detector.
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数据表示对跌倒检测中深度学习的影响
与跌倒相关的损伤会对老年人的生活质量产生重大影响。由于老年人继续独立生活的趋势越来越多,因此越来越需要可靠的跌倒探测器,以便在跌倒时能够及时提供帮助。多普勒雷达技术为实现跌倒检测和健康监测系统提供了许多理想的属性,可以促进自主生活。人体运动产生多普勒频率的变化,可以使用时频表示精确捕获。文献中提出了多种时频分布。在本文中,我们研究了不同的时频表示对基于深度神经网络的跌倒检测器性能的影响。利用实际数据,我们证明了时频域数据表示的选择对于提高跌落检测器的精度是非常重要的。
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