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Toward Personalized Activity Recognition Systems With a Semipopulation Approach

机译:使用半人口方法走向个性化活动识别系统

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摘要

Activity recognition is a key component of context-aware computing to support people's physical activity, but conventional approaches often lack in their generalizability and scalability due to problems of diversity in how individuals perform activities, overfitting when building activity models, and collection of a large amount of labeled data from end users. To address these limitations, we propose a semipopulation-based approach that exploits activity models trained from other users; therefore, a new user does not need to provide a large volume of labeled activity data. Instead of relying on any additional information from users like their weight or height, our approach directly measures the fitness of others’ models on a small amount of labeled data collected from the new user. With these shared activity models among users, we compose a hybrid model of Bayesian networks and support vector machines to accurately recognize the activity of the new user. On activity data collected from 28 people with a diversity in gender, age, weight, and height, our approach produced an average accuracy of 83.4% (kappa: 0.852), compared with individual and (standard) population models that had accuracies of 77.3% (kappa: 0.79) and 77.7% (kappa: 0.743), respectively. Through an analysis on the performance of our approach and users’ demographic information, our approach outperforms others that rely on users’ demographic information for recognizing their activities, which may contradict the commonly held belief that physically similar people would have similar activity patterns.
机译:活动识别是上下文感知计算中支持人们的身体活动的关键组成部分,但是传统方法通常缺乏通用性和可扩展性,原因是个人执行活动的方式存在多样性,在构建活动模型时过度拟合以及大量收集的问题。来自最终用户的标记数据。为了解决这些限制,我们提出了一种基于半人口的方法,该方法利用了从其他用户训练而来的活动模型。因此,新用户不需要提供大量带标签的活动数据。我们的方法不再依赖用户的其他信息(例如体重或身高),而是直接根据从新用户那里收集的少量带标签数据来衡量其他人的模型的适应性。利用用户之间的这些共享活动模型,我们构成了贝叶斯网络的混合模型并支持向量机以准确识别新用户的活动。根据从28个性别,年龄,体重和身高不同的人收集的活动数据,我们的方法得出的平均准确性为83.4%(kappa:0.852),而个人和(标准)人口模型的准确性为77.3% (kappa:0.79)和77.7%(kappa:0.743)。通过对我们的方法和用户的人口统计信息的性能进行分析,我们的方法要优于其他依靠用户的人口统计信息来识别其活动的人,这可能与普遍认为身体相似的人会具有相似的活动模式的观点相矛盾。

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