Unobtrusive intake actions monitoring through RGB and depth information fusion

Enea Cippitelli, Samuele Gasparrini, E. Gambi, S. Spinsante
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引用次数: 10

Abstract

This paper presents a solution, based on the data fusion approach, to monitor the food and drink intake actions of elderly people during their activities of daily living. The system is non-intrusive and completely transparent to the user. The developed monitor technique is able to overcome the need of relying on direct assistance or diary-based self-monitoring. The proposed solution exploits a depth and RGB camera placed on the ceiling, in top-down view. Starting from the depth information, an adapted version of the Self-Organized Map algorithm is applied to a defined skeleton model, to track the person's movements. The RGB stream is used to recognize specific elements located on the table during eating-related activities, such as glasses. The fusion of these processed data leads to the identification of specific intake behaviours. The system performances have been successfully tested with healthy volunteers of different age and height; the results are promising and confirm the system capacity to recognize the intake activity.
通过RGB和深度信息融合监测不显眼的吸入动作
本文提出了一种基于数据融合方法的解决方案,用于监测老年人在日常生活活动中的饮食摄入行为。该系统是非侵入性的,对用户完全透明。开发的监测技术能够克服依赖直接援助或基于日记的自我监测的需要。提出的解决方案利用了放置在天花板上的深度和RGB相机,以自上而下的视角。从深度信息出发,将自组织地图算法应用于已定义的骨骼模型,以跟踪人的运动。RGB流用于识别与饮食有关的活动中桌子上的特定元素,例如眼镜。这些经过处理的数据的融合导致了特定摄入行为的识别。系统性能已在不同年龄和身高的健康志愿者中成功测试;结果令人鼓舞,并证实了系统识别进气活动的能力。
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