使用单个加速度计进行人类活动分类

Hamzah S. AlZu'bi, Simon Gerrard-Longworth, W. Al-Nuaimy, J. Goulermas, S. Preece
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引用次数: 9

摘要

人体活动识别是一个日益引起人们兴趣的领域,这得益于当前穿戴式传感器的革命。活动识别允许应用程序为每个主题构建活动配置文件,这些配置文件可以有效地用于医疗保健和安全应用程序。自动化人类活动识别系统面临许多挑战,如传感器数量、传感器精度、步态风格差异等。这项工作提出了一种机器学习系统,可以基于单个穿戴式加速度计自动识别人类活动。内部收集的数据集包含50个受试者执行10种不同活动的3D加速。数据集的产生是为了确保稳健性和防止受试者偏差的结果。特征向量来源于简单的统计特征。该方法利用rgb - yiq颜色空间变换作为核,将特征向量转化为更容易识别的特征。该分类技术基于自适应增强集成分类器。该系统在50个主题中表现出一致性的分类性能,准确率高达95%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Human activity classification using a single accelerometer
Human activity recognition is an area of growing interest facilitated by the current revolution in body-worn sensors. Activity recognition allows applications to construct activity profiles for each subject which could be used effectively for healthcare and safety applications. Automated human activity recognition systems face several challenges such as number of sensors, sensor precision, gait style differences, and others. This work proposes a machine learning system to automatically recognise human activities based on a single body-worn accelerometer. The in-house collected dataset contains 3D acceleration of 50 subjects performing 10 different activities. The dataset was produced to ensure robustness and prevent subject-biased results. The feature vector is derived from simple statistical features. The proposed method benefits from RGB-to-YIQ colour space transform as kernel to transform the feature vector into more discriminable features. The classification technique is based on an adaptive boosting ensemble classifier. The proposed system shows consistent classification performance up to 95% accuracy among the 50 subjects.
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