Vojta-Therapy

M. H. Khan, M. Grzegorzek
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Abstract

This paper proposed a novel computer vision-based framework to recognize the accurate movements of a patient during the Vojta-therapy. Vojta-therapy is a useful technique for the physical and mental impairments in humans. During the therapy, a specific stimulation is given to the patients to cause the patient's body to perform certain reflexive pattern movements. The repetition of this stimulation ultimately makes available the previously blocked connections between the spinal cord and brain, and after a few sessions, patients can perform these movements without any external stimulation. In this paper the authors propose an automatic method for patient detection and recognition of specific movements in his/her various body parts during the therapy process, using Microsoft Kinect camera. The proposed method works in three steps. In the first step, a robust template matching based algorithm is exploited for patient's detection using his/her head location. Second, several features are computed to capture the movements of different body parts during the therapy process. Third, in the classification stage, a multi-class support vector machine (mSVM) is used to classify the accurate movements of patient. The classification results ultimately reveal the correctness of the given treatment. The proposed algorithm is evaluated on the authors' challenging dataset, which was collected in a children hospital. The detection and classification results show that the proposed method is highly useful to recognize the correct movement pattern either in hospital or in-home therapy systems.
本文提出了一种新的基于计算机视觉的框架来识别患者在vojta治疗过程中的准确运动。vojta疗法对于人类的身体和精神损伤是一种有用的技术。在治疗过程中,给患者一个特定的刺激,使患者的身体进行一定的反射模式运动。这种刺激的重复最终使之前被阻断的脊髓和大脑之间的连接恢复,经过几个疗程后,患者可以在没有任何外部刺激的情况下进行这些运动。在本文中,作者提出了一种自动检测和识别患者在治疗过程中各个身体部位的特定运动的方法,使用微软Kinect摄像头。所提出的方法分为三个步骤。在第一步中,利用基于模板匹配的鲁棒算法对患者进行头部位置检测。其次,计算几个特征来捕捉治疗过程中不同身体部位的运动。第三,在分类阶段,使用多类支持向量机(mSVM)对患者的准确运动进行分类。分类结果最终揭示了所给处理方法的正确性。该算法在作者的挑战性数据集上进行了评估,该数据集收集于一家儿童医院。检测和分类结果表明,该方法在医院或家庭治疗系统中识别正确的运动模式非常有用。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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