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Optimizing the configuration of an heterogeneous architecture of sensors for activity recognition, using the extended belief rule-based inference methodology

机译:使用扩展的基于信念规则的推理方法,优化用于活动识别的异构传感器架构的配置

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Smart environments are heterogeneous architectures with a broad range of heterogeneous electronic devices that are with high in processing capabilities for computing, considering low power consumption. They have the ability to record information about the behavior of the people by means of their interactions with the objects within an environment. This kind of environments are providing solutions to address some of the problems associated with the growing size and ageing of the population by means of the recognition of activities that can offer monitoring activities of daily living and adapting the environment. In order to deploy low-cost smart environments and reduce the computational complexity for activity recognition, it is a key issue to know the subset of sensors which are relevant for activity recognition. By using feature selection methods to optimize the subset of initial sensors in a smart environment, this paper proposes the adaption of the extended belief rule-based inference methodology (RIMER+) to handle data binary sensors and its use as the suitable classifier for activity recognition that keeps the accuracy of results even in situations where an essential sensor fails. A case study is presented in which a smart environment dataset for activity recognition with 14 sensors is set. Two optimizations with 7 and 10 sensors are obtained with two feature selection methods in which the adaptation of RIMER+ for smart environment provides an encouraged performance against the most popular classifiers in terms of robustness. (C) 2016 Elsevier B.V. All rights reserved.
机译:智能环境是具有多种异构电子设备的异构体系结构,考虑到低功耗,它们具有很高的计算处理能力。他们具有通过与环境中的对象进行交互来记录有关人员行为的信息的能力。这种环境通过识别可以提供监视日常生活和适应环境活动的活动,为解决与人口增长和人口老龄化相关的一些问题提供了解决方案。为了部署低成本的智能环境并降低活动识别的计算复杂度,关键的问题是了解与活动识别相关的传感器子集。通过使用特征选择方法在智能环境中优化初始传感器的子集,本文提出了基于扩展信念规则的推理方法(RIMER +)的适应性,以处理数据二进制传感器,并将其用作进行活动识别的合适分类器,即使在基本传感器发生故障的情况下也能保持结果的准确性。提出了一个案例研究,其中设置了一个用于14个传感器进行活动识别的智能环境数据集。使用两种特征选择方法获得了7个传感器和10个传感器的两个优化,其中RIMER +在智能环境中的适应性在鲁棒性方面与最流行的分类器相比,具有令人鼓舞的性能。 (C)2016 Elsevier B.V.保留所有权利。

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