A Review of Wearable Sensor-based Human Activity Recognition using Deep Learning

Yaojie Zhu, L. Mo
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引用次数: 1

Abstract

Human activity recognition is an important direction in pattern recognition that learns from low-level raw signals acquired from smartphones and commercially available and customizable wearable devices to acquire high-level knowledge. HAR plays an essential role in providing smart healthcare to physically impaired older adults, with potential applications for elderly care, fall detection physical rehabilitation, clinical assessment and surveillance. Numerous researchers and scholars have conducted HAR based on conventional pattern recognition (PR) approaches and deep models. Conventional PR methods rely on the heuristic hand-crafted feature, which needs to pre-process the raw signals. Deep learning models can automatically learn features end-to-end, compared with the conventional PR approaches have achieved promising performance. Therefore, this paper reviews the progress of activity recognition based on wearable sensor devices, and discussed the potential application areas of human motion recognition technology. Finally, this paper discussed the related problems that can be further studied in the field of activity recognition.
基于穿戴式传感器的深度学习人体活动识别研究综述
人体活动识别是模式识别的一个重要方向,它从智能手机和可定制的可穿戴设备获取的低级原始信号中学习,以获得高级知识。HAR在为身体受损的老年人提供智能医疗保健方面发挥着至关重要的作用,在老年人护理、跌倒检测、身体康复、临床评估和监测方面具有潜在的应用前景。许多研究人员和学者基于传统的模式识别方法和深度模型进行了HAR。传统的PR方法依赖于启发式手工特征,需要对原始信号进行预处理。深度学习模型可以端到端自动学习特征,与传统的PR方法相比取得了令人满意的性能。因此,本文综述了基于可穿戴传感器设备的活动识别研究进展,并探讨了人体运动识别技术的潜在应用领域。最后,对活动识别领域有待进一步研究的相关问题进行了讨论。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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