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Latent-Dynamic Conditional Random Fields for recognizing activities in smart homes

机译:潜在动态条件随机场,用于识别智能家居中的活动

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摘要

As the number of elderly people in our society increases, the need of assistive technologies in home becomes urgent. Existing techniques allow elderly people to be better assisted through monitoring what goes on in smart homes and inferring their activities from sensor data via a recognition model. However, there are various cases that existing models have difficulties in accommodating relational data. In this paper, we present an application of probabilistic graphical model - Latent-Dynamic Conditional Random Field - to detect the goals of the individual subjects when observations have long range dependencies or multiple overlapping features. To validate the proposed method, we apply it to recognize activities in two different datasets which were collected in smart homes. The results demonstrate that Latent-Dynamic Conditional Random Fields favorably outperform other models, especially when there are extrinsic dynamic activities changes and intrinsic actions (sub-activities).
机译:随着我们社会中老年人的数量增加,在家中对辅助技术的需求变得迫切。现有技术可以通过监视智能家居中发生的事情并通过识别模型从传感器数据中推断出他们的活动,从而为老年人提供更好的帮助。但是,在各种情况下,现有模型难以容纳关系数据。在本文中,我们提出了一种概率图形模型的应用-潜在动态条件随机场-当观测值具有远距离依赖性或多个重叠特征时,可以检测单个对象的目标。为了验证所提出的方法,我们将其应用于识别在智能家居中收集的两个不同数据集中的活动。结果表明,潜在动态条件随机场的性能优于其他模型,尤其是当存在外部动态活动变化和内在作用(子活动)时。

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