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首页> 外文期刊>IEEE Transactions on Systems, Man, and Cybernetics >Physical Activity Recognition From Smartphone Accelerometer Data for User Context Awareness Sensing
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Physical Activity Recognition From Smartphone Accelerometer Data for User Context Awareness Sensing

机译:从智能手机加速度计数据进行身体活动识别,以实现用户上下文感知感测

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摘要

Physical activity recognition of everyday activities such as sitting, standing, laying, walking, and jogging was performed, through the use of smartphone accelerometer data. Activity classification was done on a remote server through the use of machine learning algorithms, data was received from the smartphone wirelessly. The smartphone was placed in the subject's trouser pocket while data was gathered. A large sample set was used to train the classifiers and then a test set was used to verify the algorithm accuracies. Ten different classifier algorithm configurations were evaluated to determine which performed best overall, as well as, which algorithms performed best for specific activity classes. Based on the results obtained, very accurate predictions could be made for offline activity recognition. The kNN and kStar algorithms both obtained an overall accuracy of 99.01%.
机译:通过使用智能手机的加速度计数据,可以进行日常活动的身体活动识别,例如坐着,站着,躺着,走路和慢跑。通过使用机器学习算法在远程服务器上进行活动分类,从智能手机以无线方式接收数据。收集数据时,将智能手机放在对象的裤子口袋中。使用大样本集来训练分类器,然后使用测试集来验证算法的准确性。评估了十种不同的分类器算法配置,以确定哪种方法总体上效果最佳,以及哪种算法对于特定活动类别效果最佳。根据获得的结果,可以对脱机活动进行非常准确的预测。 kNN和kStar算法均获得了99.01%的总体准确度。

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