使用无线运动传感器和数据挖掘算法识别日常生活活动

A. Dalton, G. Ó. Laighin
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引用次数: 4

摘要

本研究的目的是比较基本水平和元水平分类器对活动识别任务的影响。五个无线运动传感器被安装在25名受试者身上,每个受试者被要求在受控的实验室环境中完成一系列基本活动。然后,研究对象被要求在一个没有监督的环境中以随机顺序进行类似的自我注释活动。采用滑动窗分割技术计算时域和频域特征。利用包装子集评估技术和线性前向搜索生成了一个简化的特征集。元级分类器AdaBoostM1以C4.5 Graft作为其基级分类器,总体准确率达到95%。使用主题独立数据和主题相关数据等大小的数据集来训练该分类器,发现无需用户特定训练即可获得较高的识别率。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Identifying Activities of Daily Living Using Wireless Kinematic Sensors and Data Mining Algorithms
The objective of this study was to compare base-level and meta-level classifiers on the task of activity recognition. Five wireless kinematic sensors were attached to 25 subjects with each subject asked to complete a range of basic activities in a controlled laboratory setting. Subjects were then asked to carry out similar self-annotated activities in a random order and in an unsupervised environment. A combination of time-domain and frequency-domain features were calculated using a sliding window segmentation technique. A reduced feature set was generated using a wrapper subset evaluation technique with a linear forward search.The meta-level classifier AdaBoostM1 with C4.5 Graft as its base-level classifier achieved an overall accuracy of 95%. Equal sized datasets of subject independent data and subject dependent data were used to train this classifier and it was found that high recognition rates can be achieved without the need of user specific training.
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