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Personal models for eHealth - improving user-dependent human activity recognition models using noise injection

机译:eHealth的个人模型 - 使用噪声注入改善用户依赖的人类活动识别模型

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In this paper, a noise injection method to improve personal recognition models is presented. The idea of the method is to build more general recognition models for eHealth using a small original data set and by expanding the area covered by training data using noise injection. This way, it is possible to train models that are less vulnerable to changing conditions, and thus more accurate, but still the data gathering phase can be non-burdensome. The proposed method was tested using two classifiers (linear discriminant analysis and quadratic discriminant analysis) and three human activity recognition data sets collected using inertial sensors of a smartphone. Two of these data sets are open data sets. The results show that noise injection improves the true positive recognition rates. With first data set the improvement varies from 1.3 to 2.0 percentage units, with second from 1.4 to 4.5 percentage units, and with third the highest improvement was 2.5 percentage units. Moreover, the results show that the method improves precision and reduces false positive rates. In addition, experiments were made using different training set sizes to show that the improvement in true positive rate is bigger if the original training data set is small. In this study, the method is experimented using human activity data sets but it is not limited to this application area and can be used with any time series data.
机译:本文提出了一种改进个人识别模型的噪声注入方法。该方法的思想是使用小型原始数据集来构建更多的eHealth的识别模型,并通过使用噪声注入扩展培训数据所涵盖的区域。这样,可以训练更容易受到改变条件的模型,从而更准确,但仍然数据收集阶段可以是非沉重的。使用两个分类器(线性判别分析和二次判别分析)测试所提出的方法,并使用智能手机的惯性传感器收集的三个人类活动识别数据集。这些数据集中的两个是打开的数据集。结果表明,噪声注入提高了真正的正识别率。首次数据集,改善从1.3到2.0个百分点单位各不相同,第二个单位为1.4到4.5个百分点,第三个改善是2.5个百分点。此外,结果表明该方法提高了精度并降低了假阳性率。此外,使用不同的训练设定尺寸进行实验,以表明如果原始训练数据集很小,则会提高真正的阳性率更大。在本研究中,使用人类活动数据集进行实验,但不限于该应用区域,并且可以与任何时间序列数据一起使用。

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