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Deep Learning for Monitoring of Human Gait: A Review

机译:监测人类步态的深度学习:回顾

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摘要

The essential human gait parameters are briefly reviewed, followed by a detailed review of the state of the art in deep learning for the human gait analysis. The modalities for capturing the gait data are grouped according to the sensing technology: video sequences, wearable sensors, and floor sensors, as well as the publicly available datasets. The established artificial neural network architectures for deep learning are reviewed for each group, and their performance are compared with particular emphasis on the spatiotemporal character of gait data and the motivation for multi-sensor, multi-modality fusion. It is shown that by most of the essential metrics, deep learning convolutional neural networks typically outperform shallow learning models. In the light of the discussed character of gait data, this is attributed to the possibility to extract the gait features automatically in deep learning as opposed to the shallow learning from the handcrafted gait features.
机译:简要回顾了基本的人体步态参数,然后详细综述了深度学习中用于人体步态分析的最新技术。捕获步态数据的方式根据传感技术进行分组:视频序列,可穿戴传感器和地面传感器,以及公开可用的数据集。对每组建立的用于深度学习的人工神经网络体系结构进行了回顾,并对它们的性能进行了比较,并特别着重于步态数据的时空特性和多传感器,多模式融合的动机。结果表明,通过大多数基本指标,深度学习卷积神经网络通常优于浅层学习模型。根据所讨论的步态数据的特征,这归因于在深度学习中自动提取步态特征的可能性,这与从手工步态特征中进行浅层学习相反。

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