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Development and Evaluation of a Kinect-Based Motion Recognition System based on Kalman Filter for Upper-Limb Assistive Device

机译:基于卡尔曼滤波的上肢辅助装置基于Kinect的运动识别系统的开发与评估

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There is a population in the world who loses the function of upper extremity due to the accidence or disease. The upper-extremity disorders significantly reduce the people's quality of life due to losing the ability to carry out the activities of daily living, which mostly require the upper-limb function. Therefore, the needs of the upper-limb assistance devices for the upper extremity increased. In this research, we proposed a motion intention recognition system based on the Kinect® v2 sensor. The sensor directly detected the user's motion and further control the device with the corresponding angles instead of using the pre-trajectory to control the device. Since the body dimensions have the individual difference, we considered the unconstrained user-device interface by using two pressure sensor trays on each robot arm to support the user's forearm and upper arm, respectively. The unconstrained user-device system can slightly compensate not only the individual difference but the control error. Therefore, the unconstrained user-device model was established to obtain the relationship between the user and the device, and further control the device using the recorded user's motion. Additionally, the Kinect® sensor can capture the coordination of human joints and further calculate the arm length of the user, which can realize the adaptivity of different user. To realize the real-time control and assistance, the Kalman filter which has prediction function was exploited. The feasibility of assistance was confirmed by the system response. The results proved that the proposed motion recognition system and the unconstrained user-device system can successfully provide adequate assistance with a lesser time delay compared with the system without Kalman filter.
机译:世界上有一群人由于意外事故或疾病而失去上肢的功能。上肢疾病由于丧失了进行日常生活活动的能力而大大降低了人们的生活质量,而这通常需要上肢功能。因此,上肢辅助装置对上肢的需求增加。在这项研究中,我们提出了一种基于Kinect®v2传感器的运动意图识别系统。传感器直接检测用户的运动,并进一步以相应的角度控制设备,而不是使用预轨迹来控制设备。由于身体尺寸存在个体差异,因此我们通过在每个机器人手臂上使用两个压力传感器托盘分别支撑用户的前臂和上臂来考虑不受约束的用户设备界面。不受约束的用户设备系统不仅可以稍微补偿个体差异,而且可以稍微补偿控制误差。因此,建立不受约束的用户设备模型以获得用户与设备之间的关系,并使用记录的用户的动作进一步控制设备。另外,Kinect®传感器可以捕获人体关节的协调性,并进一步计算用户的手臂长度,从而可以实现不同用户的适应性。为了实现实时控制和辅助,利用了具有预测功能的卡尔曼滤波器。系统响应确认了协助的可行性。结果证明,与没有卡尔曼滤波器的系统相比,所提出的运动识别系统和不受约束的用户设备系统可以以较少的时间延迟成功地提供足够的协助。

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