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基于超宽带雷达和卷积神经网络-长短期记忆网络架构的跌倒检测

Fall Detection With UWB Radars and CNN-LSTM Architecture.

作者信息

Maitre Julien, Bouchard Kevin, Gaboury Sebastien

出版信息

IEEE J Biomed Health Inform. 2021 Apr;25(4):1273-1283. doi: 10.1109/JBHI.2020.3027967. Epub 2021 Apr 6.

DOI:10.1109/JBHI.2020.3027967
PMID:33017299
Abstract

Fall detection is a major challenge for researchers. Indeed, a fall can cause injuries such as femoral neck fracture, brain hemorrhage, or skin burns, leading to significant pain. However, in some cases, trauma caused by an undetected fall can get worse with the time and conducts to painful end of life or even death. One solution is to detect falls efficiently to alert somebody (e.g., nurses) as quickly as possible. To respond to this need, we propose to detect falls in a real apartment of 40 square meters by exploiting three ultra-wideband radars and a deep neural network model. The deep neural network is composed of a convolutional neural network stacked with a long-short term memory network and a fully connected neural network to identify falls. In other words, the problem addressed in this paper is a binary classification attempting to differentiate fall and non-fall events. As it can be noticed in real cases, the falls can have different forms. Hence, the data to train and test the classification model have been generated with falls (four types) simulated by 10 participants in three locations in the apartment. Finally, the train and test stages have been achieved according to three strategies, including the leave-one-subject-out method. This latter method allows for obtaining the performances of the proposed system in a generalization context. The results are very promising since we reach almost 90% of accuracy.

摘要

跌倒检测对研究人员来说是一项重大挑战。确实,跌倒可能导致诸如股骨颈骨折、脑出血或皮肤烧伤等伤害,从而引发剧痛。然而,在某些情况下,未被检测到的跌倒所造成的创伤会随着时间的推移而恶化,导致痛苦的生命终结甚至死亡。一种解决方案是高效地检测跌倒,以便尽快提醒他人(如护士)。为了满足这一需求,我们建议通过利用三个超宽带雷达和一个深度神经网络模型,在一个40平方米的真实公寓中检测跌倒。深度神经网络由一个卷积神经网络与一个长短期记忆网络和一个全连接神经网络堆叠组成,用于识别跌倒。换句话说,本文所解决的问题是一个二分类问题,试图区分跌倒事件和非跌倒事件。正如在实际案例中可以注意到的那样,跌倒可能有不同的形式。因此,用于训练和测试分类模型的数据是由10名参与者在公寓的三个位置模拟的跌倒(四种类型)生成的。最后,根据三种策略完成了训练和测试阶段,包括留一法。后一种方法允许在泛化环境中获得所提出系统的性能。结果非常有前景,因为我们达到了近90%的准确率。

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