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Abnormal Behaviour Detection for Dementia Sufferers via Transfer Learning and Recursive Auto-Encoders

机译:通过转移学习和递归自动编码器检测痴呆症患者的异常行为

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Cognitive impairment is one of the crucial problems elderly people face. Tracking their daily life activities and detecting early indicators of cognitive decline would be necessary for further diagnosis. Depending on the decline magnitude, monitoring may need to be done over long periods of time to detect abnormal behaviour. In the absence of training data, it would be helpful to learn the normal behaviour and daily life patterns of a (cognitively) healthy person and use them as a basis for tracking other patients. In this paper, we propose to investigate Recursive Auto-Encoders (RAE)-based transfer learning to cope with the problem of scarcity of data in the context of abnormal behaviour detection. We present a method for generating synthetic data to reflect on some behavior of people with dementia. An RAE model is trained on data of a healthy person in a source household. Then, the resulting RAE is used to detect abnormal behavior in a target house. To evaluate the proposed approach, we compare the results with the-state-of-the-art supervised methods. The results indicate that transfer learning is promising when there is lack of training data.
机译:认知障碍是老年人面临的关键问题之一。追踪其日常生活活动并检测认知能力下降的早期指标对于进一步诊断是必要的。根据下降幅度,可能需要长时间进行监视以检测异常行为。在没有训练数据的情况下,了解(认知)健康人的正常行为和日常生活模式并将其用作跟踪其他患者的基础将是有帮助的。在本文中,我们建议研究基于递归自动编码器(RAE)的传输学习,以解决异常行为检测情况下的数据短缺问题。我们提出了一种生成综合数据以反映痴呆症患者某些行为的方法。根据来源家庭中健康人的数据训练RAE模型。然后,将所得的RAE用于检测目标房屋中的异常行为。为了评估所提出的方法,我们将结果与最新的监督方法进行了比较。结果表明,在缺乏培训数据的情况下,转移学习很有希望。

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