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A User-Adaptive Algorithm for Activity Recognition Based on K-Means Clustering Local Outlier Factor and Multivariate Gaussian Distribution

机译:基于K均值聚类局部离群因素和多元高斯分布的用户自适应活动识别算法

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摘要

Mobile activity recognition is significant to the development of human-centric pervasive applications including elderly care, personalized recommendations, etc. Nevertheless, the distribution of inertial sensor data can be influenced to a great extent by varying users. This means that the performance of an activity recognition classifier trained by one user’s dataset will degenerate when transferred to others. In this study, we focus on building a personalized classifier to detect four categories of human activities: light intensity activity, moderate intensity activity, vigorous intensity activity, and fall. In order to solve the problem caused by different distributions of inertial sensor signals, a user-adaptive algorithm based on K-Means clustering, local outlier factor (LOF), and multivariate Gaussian distribution (MGD) is proposed. To automatically cluster and annotate a specific user’s activity data, an improved K-Means algorithm with a novel initialization method is designed. By quantifying the samples’ informative degree in a labeled individual dataset, the most profitable samples can be selected for activity recognition model adaption. Through experiments, we conclude that our proposed models can adapt to new users with good recognition performance.
机译:移动活动识别对于以人为中心的普及应用(包括老人护理,个性化推荐等)的开发非常重要。尽管如此,惯性传感器数据的分布在很大程度上受不同用户的影响。这意味着由一个用户的数据集训练的活动识别分类器的性能在转移给其他用户时会退化。在这项研究中,我们专注于构建个性化分类器,以检测人类活动的四类:光照强度活动,中等强度活动,剧烈强度活动和跌倒。为了解决惯性传感器信号分布不均的问题,提出了一种基于K均值聚类,局部离群因子(LOF)和多元高斯分布(MGD)的用户自适应算法。为了自动聚类和注释特定用户的活动数据,设计了一种具有新颖初始化方法的改进的K-Means算法。通过在标记的单个数据集中量化样本的信息程度,可以选择利润最高的样本进行活动识别模型调整。通过实验,我们得出结论,我们提出的模型可以适应具有良好识别性能的新用户。

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