面向认知评估的室内轨迹视觉分析

Samaneh Zolfaghari, E. Khodabandehloo, Daniele Riboni
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引用次数: 3

摘要

在我们的社会中,老年人口的迅速增加需要创新的工具来早期发现认知能力下降的症状。为此,最近提出了几种利用物联网数据和人工智能技术来识别异常行为的方法。特别是,位置轨迹的分析可以使认知能力下降的早期检测成为可能。然而,室内运动分析带来了一些挑战。事实上,室内运动受到环境形状和障碍物的限制,并受到活动执行的可变性的影响。在本文中,我们提出了一种新的方法来识别异常的室内运动模式,可能表明认知能力下降,根据众所周知的临床模型。我们的方法依赖于轨迹分割,从轨迹段中提取视觉特征,以及基于视觉的边缘深度学习。为了避免隐私问题,我们依靠室内定位技术,而不使用摄像头。从认知健康人群和痴呆症患者中收集的真实世界数据集的初步实验结果表明,这一研究方向是有希望的。
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Towards Vision-based Analysis of Indoor Trajectories for Cognitive Assessment
The rapid increase of the senior population in our societies calls for innovative tools to early detect symptoms of cognitive decline. To this aim, several methods have been recently proposed that exploit Internet of Things data and artificial intelligence techniques to recognize abnormal behaviors. In particular, the analysis of position traces may enable early detection of cognitive decline. However, indoor movement analysis introduces several challenges. Indeed, indoor movements are constrained by the ambient shape and by the presence of obstacles, and are affected by variability of activity execution. In this paper, we propose a novel method to identify abnormal indoor movement patterns that may indicate cognitive decline according to well known clinical models. Our method relies on trajectory segmentation, visual feature extraction from trajectory segments, and vision-based deep learning on the edge. In order to avoid privacy issues, we rely on indoor localization technologies without the use of cameras. Preliminary experimental results with a real-world dataset gathered from cognitively healthy persons and people with dementia show that this research direction is promising.
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