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首页> 外文期刊>Frontiers in Bioengineering and Biotechnology >A Novel Hybrid Deep Neural Network to Predict Pre-impact Fall for Older People Based on Wearable Inertial Sensors
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A Novel Hybrid Deep Neural Network to Predict Pre-impact Fall for Older People Based on Wearable Inertial Sensors

机译:基于可穿戴惯性传感器的老年人预测杂交深神经网络的新型杂交深神经网络

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摘要

Falls in the elderly is a major public health concern due to its high prevalence, serious consequences and heavy burden on the society. Many falls in older people happen within a very short time, which makes it difficult to predict a fall before it occurs and then to provide protection for the person who is falling. The primary objective of this study was to develop deep neural networks for predicting a fall during its initiation and descending but before the body impacts to the ground so that a safety mechanism can be enabled to prevent fall-related injuries. We divided the falling process into three stages (non-fall, pre-impact fall and fall) and developed deep neutral networks to perform three-class classification. Three deep learning models, Convolutional Neural Network (CNN), Long Short Term Memory (LSTM), and a novel hybrid model integrating both Convolution and Long Short Term Memory (ConvLSTM) were proposed and evaluated on a large public dataset of various falls and activities of daily living acquired with wearable inertial sensors (accelerometer and gyroscope). 5-fold cross validation results showed that the hybrid ConvLSTM model had mean sensitivities of 93.15%, 93.78% and 96.00% for non-fall, pre-impact fall and fall respectively, which were higher than both LSTM (except the fall class) and CNN models. ConvLSTM model also showed higher specificities for all three classes (96.59%, 94.49% and 98.69%) than LSTM and CNN models. In addition, latency test on a microcontroller unit showed that ConvLSTM model had a short latency of 1.06ms, which was much lower than LSTM model (3.15ms) and comparable with CNN model (0.77ms). High prediction accuracy (especially for pre-impact fall) and low latency on the microboard indicated that the proposed hybrid ConvLSTM model outperformed both LSTM and CNN models. These findings suggest that our proposed novel hybrid ConvLSTM model has great potential to be embedded into wearable inertial sensor-based systems to predict pre-impact fall in real-time so that protective devices could be triggered in time to prevent fall-related injuries for older people.
机译:老年人跌落是主要的公共卫生所关注,因为它的普遍存在,严重后果和对社会的沉重负担。许多人在一个很短的时间内发生了老年人,这使得在它发生之前难以预测,然后为正在落下的人提供保护。本研究的主要目的是开发深度神经网络,以预测其在其启动和下降期间,但在身体对地面冲击之前,可以使安全机制能够防止患有患有患有患有患有患有坠毁伤害的伤害。我们将下降的过程分为三个阶段(非秋季,预冲击和跌倒),并开发了深度中立网络以执行三类分类。三个深度学习模型,卷积神经网络(CNN),长短短期记忆(LSTM)以及集成卷积和长短期内存(CONNLSTM)的新型混合模型,并在各种瀑布和活动的大公共数据集上进行评估用可穿戴惯性传感器(加速度计和陀螺仪)获得的日常生活。 5倍交叉验证结果表明,杂交Convlstm模型的敏感性为93.15%,93.78%和96.00%,分别分别比LSTM(秋季除外除外)高93.15%,93.78%和96.00%。 CNN模型。 Convlstm模型还表现出所有三个课程的比特异性高于LSTM和CNN型号的所有三类(96.59%,94.49%和98.69%)。此外,微控制器单元的延迟测试显示Convlstm模型的短期延迟为1.06ms,远低于LSTM模型(3.15ms),与CNN模型相当(0.77ms)。高预测精度(特别是对于预冲击落后)和微生物上的低延迟表明,所提出的混合动力Convlstm模型表现出LSTM和CNN模型。这些发现表明,我们所提出的新型混合Convlstm模型具有很大的潜力,可以嵌入到可穿戴惯性传感器的系统中,以实时地预测预冲击性,以便可以及时触发保护装置以防止较老的患有患有患有患有患有患有患有患有患者伤害人们。

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