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A pervasive and sensor-free Deep Learning system for Parkinsonian gait analysis

机译:帕金森斯步态分析的普遍和无传感器的深度学习系统

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Parkinsonian gait is associated with life-threatening consequences such as fall risk in Parkinson patients. Conventional Parkinsonian gait analysis heavily relies on expensive sensors and human labor. In this work, we propose a sensor-free end-to-end system which enables the automated and accurate Parkinsonian gait detection and analysis upon the videos recorded by pervasive cameras. Specifically, we leverage Deep Learning technologies to extract the human skeleton in the video frame and address the camera random angle challenge. By analyzing the gait features, we train a classifier based on a binary decision tree. Out of 16 Parkinsonian gait and 13 healthy gait videos, our system is able to detect the Parkinsonian Gait with 93.75% accuracy and healthy gait with 100% accuracy.
机译:Parkinsonian步态与帕金森患者的危险性危及危险后果有关。传统的Parkinsonian步态分析严重依赖于昂贵的传感器和人工劳动力。在这项工作中,我们提出了一种无传感器端到端系统,它可以实现自动化和准确的帕金翁式步态检测和分析普及摄像机录制的视频。具体而言,我们利用深度学习技术在视频框架中提取人力骨架并解决相机随机角挑战。通过分析步态功能,我们根据二进制决策树训练分类器。在16个Parkinsonian步态和13个健康的步态视频中,我们的系统能够通过93.75 %的精度和高精度的准确性和健康的步态来检测Parkinsonian步态。

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