基于传感器的定向统计模型Dirichlet过程混合人类活动挖掘

L. Fang, Juan Ye, S. Dobson
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引用次数: 0

摘要

我们已经看到越来越多的活动感知应用程序部署在现实环境中,包括智能家居和移动医疗保健。这些应用的关键促成因素是基于传感器的人类活动识别;也就是说,通过可穿戴和环境传感器识别和分析人类的日常活动。借助机器学习的力量,我们可以识别各种类型的传感器数据和被观察到的活动之间的复杂相关性。然而,挑战仍然存在:(1)它们通常依赖于大量标记的训练数据来构建模型;(2)它们不能随着时间的推移动态地适应新出现或变化的活动模式。为了直接解决这些挑战,我们提出了一个贝叶斯非参数模型,即条件独立的von Mises Fisher模型的Dirichlet过程混合物,以实现人类活动的无监督和半监督动态学习。贝叶斯非参数模型可以在没有人为干预的情况下动态适应不断变化的活动模式,并且学习结果可以用来减轻注释工作。我们针对现实世界的第三方智能家居数据集评估了我们的方法,并在无监督和有监督设置中展示了比最先进技术的重大改进。
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Sensor-Based Human Activity Mining Using Dirichlet Process Mixtures of Directional Statistical Models
We have witnessed an increasing number of activity-aware applications being deployed in real-world environments, including smart home and mobile healthcare. The key enabler to these applications is sensor-based human activity recognition; that is, recognising and analysing human daily activities from wearable and ambient sensors. With the power of machine learning we can recognise complex correlations between various types of sensor data and the activities being observed. However the challenges still remain: (1) they often rely on a large amount of labelled training data to build the model, and (2) they cannot dynamically adapt the model with emerging or changing activity patterns over time. To directly address these challenges, we propose a Bayesian nonparametric model, i.e. Dirichlet process mixture of conditionally independent von Mises Fisher models, to enable both unsupervised and semi-supervised dynamic learning of human activities. The Bayesian nonparametric model can dynamically adapt itself to the evolving activity patterns without human intervention and the learning results can be used to alleviate the annotation effort. We evaluate our approach against real-world, third-party smart home datasets, and demonstrate significant improvements over the state-of-the-art techniques in both unsupervised and supervised settings.
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