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Research on motion pattern recognition of exoskeleton robot based on multimodal machine learning model

机译:基于多式联机学习模型的外骨骼机器人运动模式识别研究

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Exoskeleton as a real-time interaction with the wearer's intelligent robot, in recent years, becomes a hot topic mouth class research in the field of robotics. Wearable exoskeleton outside the body, combined with the organic body, plays a role in the protection and support. By wearing an exoskeleton robot, it is possible to expand the wearer's athletic ability, increase muscle endurance, and enable the wearer to complete tasks that he or she cannot perform under natural conditions. Based on the above advantages, the exoskeleton robot in military medical care and rehabilitation has broad application prospects. This paper describes the multimodal model of machine learning research status and research significance of the text on the exoskeleton robot applications, and on the basis of a detailed study of gait. It mainly involves: analysis and planning and obtaining motion information processing, pattern recognition and analysis of gait and the gait conversion process, and the EEG and joint position, foot pressure, such as different modes of data as input to machine learning models to improve the timeliness, accuracy and safety of gait planning. Since the common movement process involves the transformation process of gait, this paper studies the gait transformation process including squatting, walking on the ground and standing.
机译:外骨骼作为与佩戴者智能机器人的实时互动,近年来成为机器人技术领域的热门话题研究。身体外穿戴的外骨骼,结合有机体,在保护和支持方面发挥作用。通过佩戴外骨骼机器人,可以扩大穿着者的运动能力,增加肌肉耐力,并使佩戴者能够在自然条件下完成他或她无法表现的任务。根据上述优势,军事医疗和康复中的外骨骼机器人具有广泛的应用前景。本文介绍了机器学习研究现状的多模式模型和外骨骼机器人应用中文本的研究意义,以及基于步态的详细研究。它主要涉及:分析和规划和获取运动信息处理,图案识别和分析步态和步态转换过程,以及脑电图和联合位置,脚压,如不同的数据模式,作为机器学习模型的输入,以改善机器学习模型步态规划的及时性,准确性和安全性。由于普通运动过程涉及步态的转化过程,本文研究了步态转化过程,包括蹲,走在地面上并站立。

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