A holistic smart home demonstrator for anomaly detection and response

J. Lundström, W. O. D. Morais, M. Cooney
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引用次数: 10

Abstract

Applying machine learning methods in scenarios involving smart homes is a complex task. The many possible variations of sensors, feature representations, machine learning algorithms, middle-ware architectures, reasoning/decision schemes, and interactive strategies make research and development tasks non-trivial to solve. In this paper, the use of a portable, flexible and holistic smart home demonstrator is proposed to facilitate iterative development and the acquisition of feedback when testing in regard to the above-mentioned issues. Specifically, the focus in this paper is on scenarios involving anomaly detection and response. First a model for anomaly detection is trained with simulated data representing a priori knowledge pertaining to a person living in an apartment. Then a reasoning mechanism uses the trained model to infer and plan a reaction to deviating activities. Reactions are carried out by a mobile interactive robot to investigate if a detected anomaly constitutes a true emergency. The implemented demonstrator was able to detect and respond properly in 18 of 20 trials featuring normal and deviating activity patterns, suggesting the feasibility of the proposed approach for such scenarios.
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用于异常检测和响应的整体智能家居演示器
在涉及智能家居的场景中应用机器学习方法是一项复杂的任务。传感器、特征表示、机器学习算法、中间件架构、推理/决策方案和交互策略的许多可能的变化使得研究和开发任务不容易解决。本文提出使用便携、灵活、整体的智能家居演示器,便于迭代开发,并在测试时获取上述问题的反馈。具体来说,本文的重点是涉及异常检测和响应的场景。首先,用模拟数据训练异常检测模型,模拟数据代表与住在公寓里的人有关的先验知识。然后,推理机制使用训练过的模型来推断和计划对偏离活动的反应。反应由移动交互机器人执行,以调查检测到的异常是否构成真正的紧急情况。实施的演示器能够在20个具有正常和偏离活动模式的试验中的18个中检测并正确响应,表明所提出的方法在此类场景下的可行性。
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