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Gait Recognition and Robust Autonomous Location Method of Exoskeleton Robot Based on Machine Learning

机译:基于机器学习的外骨骼机器人步态识别与鲁棒自主定位方法

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Focusing on the autonomous location method of lower extremity exoskeleton robot in complex environment, this paper presents a gait type recognition method based on support vector machine (SVM)C and an autonomous location method based on inertial information mapping model and system reconstruction. In this paper, support vector machine is used to effectively recognize various kinds of conventional gait types of exoskeleton robots. The inertial information mapping models among different parts of the lower limbs of the robots under different gaits are established respectively. Aiming at the problem of the failure of the inertial measurement unit at the end of the limb in the impact or high overload motion, a robust autonomous location method based on system reconstruction is studied. The experiment results show that, using different neural network model parameters under different gaits can be used to reduce the complexity of the network model. While the inertial measurement unit at the end of the limb fails, the location performance of the exoskeleton robot navigation system based on this method, is equal to that of the inertial navigation system at the end of the limb with same sensor precision.
机译:针对复杂环境下肢外骨骼机器人的自主定位方法,提出了一种基于支持向量机(SVM)C的步态识别方法以及基于惯性信息映射模型和系统重构的自主定位方法。在本文中,支持向量机被用来有效地识别各种常规步态类型的外骨骼机器人。建立了不同步态下机器人下肢不同部位之间的惯性信息映射模型。针对肢体末端惯性测量单元在冲击或高过载运动中失效的问题,研究了一种基于系统重构的鲁棒自主定位方法。实验结果表明,在不同步态下使用​​不同的神经网络模型参数可以降低网络模型的复杂度。当肢体末端的惯性测量单元出现故障时,基于这种方法的外骨骼机器人导航系统的定位性能与肢体末端的惯性导航系统的定位性能相同,但传感器的精度相同。

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