基于可穿戴传感器的运动数据处理和分类技术概览

IgMin Research Pub Date : 2023-12-04 DOI:10.61927/igmin123
Xiaoqiong Xiong, Xuemei Xiong, Zeng Keda, Lian Chao
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引用次数: 0

摘要

可穿戴技术的快速发展为动作数据处理和分类技术提供了新的机遇。可穿戴传感器可以实时监测人体的生理和运动信号,为健康监测、运动分析和人机交互提供丰富的数据源。本文全面综述了基于可穿戴传感器的动作数据处理与分类技术,主要包括特征提取技术、分类技术以及未来的发展与挑战。首先,本文介绍了可穿戴传感器的研究背景,强调了其在健康监测、运动分析和人机交互方面的重要应用。然后,阐述了动作数据处理和分类技术的工作内容,包括特征提取、模型构建和活动识别。在特征提取技术方面,本文重点研究了浅层特征提取和深层特征提取的内容;在分类技术方面,主要研究了传统机器学习模型和深度学习模型。最后,本文指出了当前面临的挑战,并对未来的研究方向进行了展望。通过深入探讨可穿戴技术中传感器时间序列数据的特征提取技术和分类技术,本文有助于推动可穿戴技术在健康监测、运动分析和人机交互等领域的应用和发展。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A Survey of Motion Data Processing and Classification Techniques Based on Wearable Sensors
The rapid development of wearable technology provides new opportunities for action data processing and classification techniques. Wearable sensors can monitor the physiological and motion signals of the human body in real-time, providing rich data sources for health monitoring, sports analysis, and human-computer interaction. This paper provides a comprehensive review of motion data processing and classification techniques based on wearable sensors, mainly including feature extraction techniques, classification techniques, and future development and challenges. First, this paper introduces the research background of wearable sensors, emphasizing their important applications in health monitoring, sports analysis, and human-computer interaction. Then, it elaborates on the work content of action data processing and classification techniques, including feature extraction, model construction, and activity recognition. In feature extraction techniques, this paper focuses on the content of shallow feature extraction and deep feature extraction; in classification techniques, it mainly studies traditional machine learning models and deep learning models. Finally, this paper points out the current challenges and prospects for future research directions. Through in-depth discussions of feature extraction techniques and classification techniques for sensor time series data in wearable technology, this paper helps promote the application and development of wearable technology in health monitoring, sports analysis, and human-computer interaction.
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