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Autonomous Fall Detection With Wearable Cameras by Using Relative Entropy Distance Measure

机译:基于相对熵距离测量的可穿戴式摄像机自主跌倒检测

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摘要

Timely, precise, and reliable detection of fall events is very important for systems monitoring activities of elderly people, especially the ones living independently. In this paper, we propose an autonomous fall detection system by taking a completely different view compared with existing vision-based activity monitoring systems and applying a reverse approach. In our system, in contrast with static sensors installed at fixed locations, the camera is worn by the subject, and thus, monitoring is not limited only to areas where the sensors are located and extends to wherever the subject may travel. Moreover, the camera provides a richer set of data and helps lower the false positive rates compared with accelerometer-only systems. We employ a modified version of the histograms of oriented gradients (HOG) approach together with the gradient local binary patterns (GLBP). It is shown that, with the same training set, the GLBP feature is more descriptive and discriminative than HOG, histograms of template, and semantic local binary patterns. Moreover, we autonomously compute a threshold, for the detection of fall events, from the training data based on relative entropy, which is a member of Ali-Silvey distance measures. Experiments are performed with ten different people and a total of around 300 associated fall events indoors and outdoors. Experimental results show that, with the autonomously computed threshold, the proposed method provides 93.78% and 89.8% accuracy for detecting falls with indoor and outdoor experiments, respectively.
机译:及时,准确和可靠地检测跌倒事件对于监控老年人(尤其是独立生活的老年人)活动的系统非常重要。在本文中,我们提出了一种自主跌倒检测系统,该方法与现有的基于视觉的活动监视系统相比具有完全不同的观点,并采用了相反的方法。在我们的系统中,与固定位置安装的静态传感器相反,摄像机会被对象佩戴,因此,监视不仅限于​​传感器所处的区域,还可以扩展到对象可能行进的任何地方。此外,与仅使用加速度计的系统相比,该摄像机可提供更丰富的数据集并有助于降低误报率。我们采用定向梯度直方图(HOG)方法的改进版本以及梯度局部二进制模式(GLBP)。结果表明,在相同的训练集下,GLBP功能比HOG,模板的直方图和语义局部二进制模式更具描述性和区分性。此外,我们基于相对熵(这是Ali-Silvey距离测量的成员)从训练数据中自主计算阈值,以用于检测跌倒事件。实验是由十个不同的人进行的,室内和室外总共进行了约300个相关的跌倒事件。实验结果表明,利用自主计算的阈值,该方法在室内和室外实验中的跌倒检测准确率分别为93.78%和89.8%。

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