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首页> 外文期刊>IEEE Transactions on Consumer Electronics >CMFALL: A Cascade and Parallel Multi-State Fall Detection Algorithm Using Waist-Mounted Tri-Axial Accelerometer Signals
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CMFALL: A Cascade and Parallel Multi-State Fall Detection Algorithm Using Waist-Mounted Tri-Axial Accelerometer Signals

机译:CMFALL:使用腰部安装的三轴加速度计信号级联和并联多状态下降检测算法

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摘要

As one of the main threats to people's health, especially for the elderly, falls have caused a large number of accidents. Detecting falls in time can minimize the severity of the injury and save lives. Therefore, designing fall detection algorithms to assist people's daily life has been a hot research topic. In the last decade, different fall detection approaches based on wearable sensors have been proposed. However, since the hardware resources of wearable sensors are very limited, designing accurate but energy-efficient fall detection algorithms remains an open challenge. To deal with this, an accurate but low-cost fall detection algorithm is proposed in this paper. Particularly, a novel cascade and parallel method that efficiently employs the characteristics of human falls and the advanced modeling ability of the neural network is proposed. Also, a novel design of a lightweight convolutional neural network with self-attention is proposed to achieve the best recognitionumerical complexity tradeoff. The proposed method, namely CMFALL, is evaluated together with a multitude of state-of-the-art models on a large dataset, where it performs the best with an F1-score exceeding 99%. Meanwhile, its computational cost and model size are only a few thousandths of other models. Such low computational cost and small size not only enable to embed it in a wearable sensor but also make the system power requirements quite low, which can enhance the autonomy of the wearable fall detector.
机译:作为对人民健康的主要威胁之一,特别是对于老年人来说,瀑布造成了大量的事故。检测及时跌落可以最大限度地减少伤害的严重程度并挽救生命。因此,设计秋季检测算法以帮助人们日常生活是一个热门的研究主题。在过去的十年中,已经提出了基于可穿戴传感器的不同坠落检测方法。然而,由于可穿戴传感器的硬件资源非常有限,因此设计精确但节能的落后检测算法仍然是一个开放的挑战。为此处理这一点,本文提出了一种准确但低成本的下降检测算法。特别是,提出了一种新的级联和并行方法,其有效地采用人跌落的特征和神经网络的先进建模能力。此外,提出了一种具有自我关注的轻质卷积神经网络的新颖设计,以实现最佳识别/数值复杂性权衡。所提出的方法,即CMFAMP,在大型数据集上与众多最先进的模型一起评估,在那里它以超过99%的F1分数执行最佳。同时,其计算成本和模型大小仅占千分之一的其他型号。这种低计算成本和小尺寸不仅可以使其在可穿戴传感器中嵌入它,而且使系统功率要求相当低,这可以增强可穿戴坠落探测器的自主权。

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