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Improving the Accuracy of Erroneous-Plan Recognition System for Activities of Daily Living

机译:提高日常生活活动的错误计划识别系统的准确性

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Using ambient intelligence to assist people with dementia in carrying out their Activities of Daily Living (ADLs) independently in smart home environment is an important research area, due to the projected increasing number of people with dementia. We present herein, a system and algorithms for the automated recognition of ADLs; the ADLs are in terms of plans made up encoded sequences of micro-context information gathered by sensors in a smart home. Previously, the Erroneous-Plan Recognition (EPR) system was developed to specifically handle the wide spectrum of micro contexts from multiple sensing modalities. The EPR system monitors the person with dementia and determines if he has executed a correct or erroneous ADL. However, due to the noisy readings of the sensing modalities, the EPR system has problems in accurately detecting the erroneous ADLs. We propose to improve the accuracy of the EPR system by two new key components. First, we model the smart home environment as a Markov decision process (MDP), with the EPR system built upon it. Simple referencing of this model allows us to filter erroneous readings of the sensing modalities. Second, we use the reinforcement learning concept of probability and reward to infer erroneous readings that are not filtered by the first key component. We conducted extensive experiments and showed that the accuracy of the new EPR system is 26.2% higher than the previous system, and is therefore a better system for ambient assistive living applications.
机译:利用环境智慧在智能家庭环境中独立在智能家庭环境中独立在开展日常生活(ADLS)活动中,帮助痴呆症是一个重要的研究领域,这是一个重要的研究领域,因为痴呆症的人数增加。我们在此存在,一种用于ADL的自动识别的系统和算法; ADL符合计划,由智能家居中的传感器聚集的微观上下文信息编码序列。以前,开发了错误计划识别(EPR)系统以具体处理来自多个感测模式的宽频谱。 EPR系统监控患有痴呆症的人,并确定他是否已经执行了正确或错误的ADL。然而,由于感测模式的嘈杂读数,EPR系统在准确地检测错误的ADL时存在问题。我们建议通过两个新的关键组件提高EPR系统的准确性。首先,我们将智能家庭环境模拟为Markov决策过程(MDP),内置EPR系统。简单参考此模型允许我们过滤传感方式的错误读数。其次,我们使用概率和奖励的强化学习概念来推断出由第一关键组件未过滤的错误读数。我们进行了广泛的实验,并表明新的EPR系统的准确性比上一个系统高出26.2%,因此是环境辅助生活应用的更好系统。

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