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Automatic Annotation for Human Activity Recognition in Free Living Using a Smartphone

机译:使用智能手机在自由生活中自动识别人类活动的注释

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摘要

Data annotation is a time-consuming process posing major limitations to the development of Human Activity Recognition (HAR) systems. The availability of a large amount of labeled data is required for supervised Machine Learning (ML) approaches, especially in the case of online and personalized approaches requiring user specific datasets to be labeled. The availability of such datasets has the potential to help address common problems of smartphone-based HAR, such as inter-person variability. In this work, we present (i) an automatic labeling method facilitating the collection of labeled datasets in free-living conditions using the smartphone, and (ii) we investigate the robustness of common supervised classification approaches under instances of noisy data. We evaluated the results with a dataset consisting of 38 days of manually labeled data collected in free living. The comparison between the manually and the automatically labeled ground truth demonstrated that it was possible to obtain labels automatically with an 80–85% average precision rate. Results obtained also show how a supervised approach trained using automatically generated labels achieved an 84% f-score (using Neural Networks and Random Forests); however, results also demonstrated how the presence of label noise could lower the f-score up to 64–74% depending on the classification approach (Nearest Centroid and Multi-Class Support Vector Machine).
机译:数据注释是一个耗时的过程,对人类活动识别(HAR)系统的开发造成了主要限制。有监督的机器学习(ML)方法需要大量标记的数据,特别是在在线和个性化方法需要标记用户特定数据集的情况下。此类数据集的可用性可能有助于解决基于智能手机的HAR的常见问题,例如人际差异。在这项工作中,我们介绍(i)使用智能手机促进在自由生活条件下收集标记数据集的自动标记方法,以及(ii)研究在嘈杂数据实例下常见的监督分类方法的鲁棒性。我们使用包含38天自由生活中手工标记的数据的数据集评估了结果。手动和自动标记的地面真相之间的比较表明,可以自动获得平均准确率达80-85%的标签。获得的结果还表明,使用自动生成的标签训练的监督方法如何获得84%的f分数(使用神经网络和随机森林);但是,结果也证明了标签噪声的存在如何根据分类方法(最近质心和多类支持向量机)将f分数降低高达64-74%。

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