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On the Use of Ultra Wideband Radar and Stacked LSTM-RNN for at Home Fall Detection

机译:关于超宽带雷达和堆叠LSTM-RNN在家庭坠落检测中的使用

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Fail detection problem for smart home-care systems using an ultra wideband radar is considered in this paper. The goal is to identify the occurrence of fall from the radar return signals through a supervised learning approach. To this end, a new framework is proposed based on stacked long-short-term memory (LSTM) recurrent neural network to develop a robust method for feature extraction and classification of radar data of human daily activity. It is noted that the proposed method do not require heavy preprocessing on the data or feature engineering. It is known that LSTM networks are capable of capturing dependencies in time series data. In view of this, the radar time series data are directly fed into a stacked LSTM network for automatic feature extraction. Experiments are conducted on radar data collected from different subjects, when performing fall and non-fall activities. It is shown that the proposed method can provide a classification accuracy higher than that yielded by the other existing methods.
机译:本文考虑了使用超宽带雷达的智能家庭护理系统的故障检测问题。目标是通过监督学习方法识别从雷达返回信号的秋季的发生。为此,基于堆叠的长短期存储器(LSTM)经常性神经网络提出了一种新框架,以开发一种用于人类日常活动的雷达数据的特征提取和分类的鲁棒方法。应注意,所提出的方法不需要在数据或特征工程上进行重预处理。众所周知,LSTM网络能够在时间序列数据中捕获依赖性。鉴于此,雷达时间序列数据直接进入堆叠的LSTM网络以进行自动特征提取。在进行秋季和非秋季活动时,实验在不同受试者收集的雷达数据进行。结果表明,该方法可以提供比其他现有方法产生的分类精度高。

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