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Multi-resident Location Tracking in Smart Home through Non-wearable Unobtrusive Sensors

机译:通过非佩戴的不引人注目的传感器在智能家居中的多居民位置跟踪

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Tracking indoor locations of residents is a prerequisite of accurate monitoring and advanced understanding of human activities in smart homes. Without using any indoor video surveillance devices in terms of preserving privacy and security, majority of existing approaches often utilise wearable BLE/RFID sensor tags to track locations of residents through analysing variations of received signal strength and angle of sensor tags. In a multi-residential environment, these tags can also be used as unique identifiers to help distinguish individuals. However, the extra burdens of remembering and wearing sensor tags all day along restrict them to be widely accepted by senior communities, let alone by people with neurodegenerative diseases. In this study, we propose a novel indoor tracking technique for smart homes with multiple residents, through relying only on non-wearable, environmentally deployed sensors such as passive infrared motion sensors. We design a multi-tracker system that uses multiple, independent probabilistic models, such as Naive Bayes and hidden Markov model, to track different residents' movements separately. We evaluate our tracking technique on real sensor data acquired from a dual-occupancy smart home in our clinical trials. The experiment results, through comparing with location details acquired by wearable tags, demonstrate that our proposed technique is a simple yet feasible solution to tracking multi-residents' indoor movements.
机译:跟踪居民的室内地点是准确监测和高级了解智能家居活动的先进。在不使用任何室内视频监控设备方面,在保护隐私和安全性方面,大多数现有方法通常通过分析接收信号强度和传感器标签的角度来跟踪居民的位置。在多住宅环境中,这些标签也可以用作唯一标识符来帮助区分个人。然而,整天限制他们的记忆和佩戴传感器标签的额外负担,以限制高级社区广泛接受,并由神经退行性疾病的人别的人别选。在这项研究中,我们提出了一种新颖的室内跟踪技术,为具有多个居民的智能家庭,只能仅依赖于不可穿戴的环境部署的传感器,例如被动红外运动传感器。我们设计了一种多追踪系统,使用多个独立的概率模型,如天真贝叶斯和隐藏的马尔可夫模型,以分别跟踪不同的居民的运动。我们评估我们在临床试验中的双占智能家庭获取的真实传感器数据的跟踪技术。通过与可佩戴标签获得的位置细节进行比较,实验结果表明我们的提出技术是跟踪多居民室内运动的简单而可行的解决方案。

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