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Online Guest Detection in a Smart Home Using Pervasive Sensors and Probabilistic Reasoning

机译:使用普适传感器和概率推理在智能家居中进行在线访客检测

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Smart home environments equipped with distributed sensor networks are capable of helping people by providing services related to health, emergency detection or daily routine management. A backbone to these systems relies often on the system's ability to track and detect activities performed by the users in their home. Despite the continuous progress in the area of activity recognition in smart homes, many systems make a strong underlying assumption that the number of occupants in the home at any given moment of time is always known. Estimating the number of persons in a Smart Home at each time step remains a challenge nowadays. Indeed, unlike most (crowd) counting solution which are based on computer vision techniques, the sensors considered in a Smart Home are often very simple and do not offer individually a good overview of the situation. The data gathered needs therefore to be fused in order to infer useful information. This paper aims at addressing this challenge and presents a probabilistic approach able to estimate the number of persons in the environment at each time step. This approach works in two steps: first, an estimate of the number of persons present in the environment is done using a Constraint Satisfaction Problem solver, based on the topology of the sensor network and the sensor activation pattern at this time point. Then, a Hidden Markov Model refines this estimate by considering the uncertainty related to the sensors. Using both simulated and real data, our method has been tested and validated on two smart homes of different sizes and configuration and demonstrates the ability to accurately estimate the number of inhabitants.
机译:配备有分布式传感器网络的智能家居环境能够通过提供与健康,紧急情况检测或日常管理相关的服务来帮助人们。这些系统的骨干网通常依赖于系统跟踪和检测用户在家中执行的活动的能力。尽管智能家居中的活动识别领域取得了持续的进步,但许多系统还是做出了一个强有力的基本假设,即始终知道在任何给定时间的家庭中的居住人数。如今,在每个时间步长估计智能家居中的人数仍然是一个挑战。实际上,与大多数基于计算机视觉技术的(人群)计数解决方案不同,智能家居中考虑的传感器通常非常简单,无法单独提供有关情况的良好概览。因此,需要融合收集的数据以推断出有用的信息。本文旨在解决这一挑战,并提出一种概率方法,该方法能够估计每个时间步长环境中的人数。该方法分两个步骤工作:首先,根据传感器网络的拓扑结构和此时的传感器激活模式,使用约束满足问题求解器对环境中存在的人数进行估算。然后,隐马尔可夫模型通过考虑与传感器相关的不确定性来完善此估计。使用模拟和真实数据,我们的方法已在两个大小和配置不同的智能家居中进行了测试和验证,并演示了准确估算居民数量的能力。

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