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Sensor Signals-Based Early Dementia Detection System Using Travel Pattern Classification

机译:基于传感器信号的早期痴呆症检测系统使用旅行模式分类

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Dementia is becoming more prevalent due to the aging population in which there is deterioration in memory, thinking, behaviour, and the ability to perform everyday activities. A significant challenge in dementia is achieving an accurate and timely diagnosis. If the patient can have proper medical treatment at an early stage, then the dementia growth can be delayed by months to years. Inefficient travel patterns are one of the first indicators of progressive dementia. In this paper, we propose an early dementia detection system using inhabitant travel pattern classification. We use the environmental passive sensor signals for sensing the movement of the inhabitant. The system segments the movements into travel episodes and classifies them using a recurrent neural network. The advantage of using a recurrent neural network is that it directly deals with the raw movement sensory data and does not require any domain-specific knowledge. Finally, the system handles the unbalanced classes of travel patterns by using the focal loss and enhances the discriminative power of the deeply learned features by the center loss function. We conduct several experiments on real-life datasets to verify the accuracy of the system.
机译:由于衰老人口,痴呆症患者变得越来越普遍,因为内存,思维,行为以及执行日常活动的能力恶化。痴呆症的重大挑战是实现准确和及时的诊断。如果患者在早期阶段具有适当的医疗,那么痴呆增长可以延迟数月达到多年。低效的旅行模式是渐进性痴呆的第一指标之一。在本文中,我们提出了一种利用居民旅行模式分类的早期痴呆检测系统。我们使用环境被动传感器信号来感测居民的运动。系统将运动分段到旅行剧集中,并使用经常性神经网络对它们进行分类。使用经常性神经网络的优点是它直接处理原始运动感官数据,并且不需要任何特定于域的知识。最后,系统通过使用焦点损耗来处理不平衡的旅行模式,并通过中心损耗功能增强深度学习特征的辨别力。我们对现实生活数据集进行了几个实验,以验证系统的准确性。

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