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Abnormal Gait Recognition Using 3D Joint information of Multiple Kinects System and RNN-LSTM

机译:使用多个Kinects系统的3D联合信息和RNN-LSTM的3D联合信息异常步态识别

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Gait is an important indicator for specific diseases. Abnormal gait patterns are caused by various factors such as physical, neurological, and sensory problems. If it is possible to recognize abnormal gait patterns in the early stage of the related disease, patients can receive proper treatment early and prevent secondary accidents such as falls caused by unbalanced gait. In this paper, we propose a gait recognition system that can recognize 5 abnormal gait patterns. Our system using 3D joint information obtained by using multiple Kinect v2 sensors and RNN-LSTM. In particular, abnormal gaits caused by physical problems such as injury, weakness of muscle, and joint problems are targeted for recognition. The purpose of this paper is to find optimal condition for gait recognition when using the multiple Kinect v2 sensors. Experiments were conducted by comparing the test accuracies on 14 combinations of human joint. Through this experiment, we selected optimal joints to show outstanding results so that our gait recognition model performs optimally. Results show that Ankles, Wrists, and the Head are the most influential joints on RNN-LSTM model. We applied 25-joint information of the human body to recognize gait patterns and achieved an accuracy over 97%.
机译:步态是特定疾病的重要指标。异常步态模式是由物理,神经系统和感官问题的各种因素引起的。如果有可能在相关疾病的早期阶段识别出异常的步态模式,患者可以早期接受适当的治疗,并防止由不平衡步态引起的次数如秋季的次要事故。在本文中,我们提出了一种可以识别5种异常步态模式的步态识别系统。我们的系统使用通过使用多个Kinect V2传感器获得的3D联合信息和RNN-LSTM。特别是,由损伤,肌肉损伤和联合问题造成的身体问题引起的异常Gaits旨在识别。本文的目的是在使用多次Kinect V2传感器时找到步态识别的最佳条件。通过比较14人联合组合的测试精度进行实验。通过此实验,我们选择了最佳的关节以显示出色的结果,以便我们的步态识别模型最佳地执行。结果表明,脚踝,手腕,头部是RNN-LSTM模型中最有影响力的关节。我们应用了人体的25个联合信息,以识别步态模式,并达到97%以上的准确性。

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