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Accidental Fall Detection Based on Skeleton Joint Correlation and Activity Boundary

机译:基于骨架关节相关性和活动边界的意外跌倒检测

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We propose a system to detect accidental fall from walking or sitting activity in a nursing home. Differing from the trajectory tracing techniques, which detects periodic movements, our algorithm explores secondary features (angle and distance), focusing on the correlation between joints and the boundary of this correlation. We generated skeleton joint data using the Kinect sensor because it is affordable and supports sufficiently large capture space. However, other similar smart sensors can also be used. The angle feature denotes the correlation between the normal vector of the floor and the vector formed by linking the knee and ankle (on the left and right leg separately). The distance feature denotes the correlation between the floor and each of several important joints. A fall is reported when the angle is greater than and the distance is less than the respective threshold value. We created an activity database to evaluate our technique. The activities simulate elderly people walking, sitting and falling. Experimental results show that our algorithm is simple to implement, has low computational cost and is able to detect 36/37 falling events, and 57/57 walking and sitting activities accurately.
机译:我们提出了一种系统,用于检测养老院中步行或坐着活动时意外摔倒的情况。与检测周期性运动的轨迹跟踪技术不同,我们的算法探索了次要特征(角度和距离),着眼于关节之间的相关性以及此相关性的边界。我们使用Kinect传感器生成骨骼关节数据,因为它价格合理并且支持足够大的捕获空间。但是,也可以使用其他类似的智能传感器。角度特征表示地板的法线向量与通过链接膝盖和脚踝(分别在左腿和右腿上)形成的向量之间的相关性。距离特征表示地板与几个重要关节中的每个之间的相关性。当角度大于且距离小于相应的阈值时,将报告下降。我们创建了一个活动数据库来评估我们的技术。这些活动模拟老年人走路,坐下和摔倒。实验结果表明,该算法简单易行,计算量小,能够准确检测出36/37跌倒事件和57/57的步行和就座活动。

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