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Toward Design of an Environment-Aware Adaptive Locomotion-Mode-Recognition System

机译:面向环境的自适应运动模式识别系统的设计

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In this study, we aimed to improve the performance of a locomotion-mode-recognition system based on neuromuscular-mechanical fusion by introducing additional information about the walking environment. Linear-discriminant-analysis-based classifiers were first designed to identify a lower limb prosthesis user''s locomotion mode based on electromyographic signals recorded from residual leg muscles and ground reaction forces measured from the prosthetic pylon. Nine transfemoral amputees who wore a passive hydraulic knee or powered prosthetic knee participated in this study. Information about the walking terrain was simulated and modeled as prior probability based on the principle of maximum entropy and integrated into the discriminant functions of the classifier. When the correct prior knowledge of walking terrain was simulated, the classification accuracy for each locomotion mode significantly increased and no task transitions were missed. In addition, simulated incorrect prior knowledge did not significantly reduce system performance, indicating that our design is robust against noisy and imperfect prior information. Furthermore, these observations were independent of the type of prosthesis applied. The promising results in this study may assist the further development of an environment-aware adaptive system for locomotion-mode recognition for powered lower limb prostheses or orthoses.
机译:在这项研究中,我们旨在通过引入有关步行环境的其他信息来改善基于神经肌肉机械融合的运动模式识别系统的性能。首先,基于线性判别分析的分类器旨在根据残余腿部肌肉记录的肌电信号和义肢塔架测量的地面反作用力来识别下肢义肢用户的运动模式。九名穿用被动液压膝盖或动力假肢的经股截肢者参加了这项研究。基于最大熵的原理,将有关步行地形的信息进行模拟并建模为先验概率,并整合到分类器的判别函数中。当模拟了正确的步行地形先验知识后,每种运动模式的分类精度都会大大提高,并且不会错过任何任务转换。此外,模拟的不正确的先验知识并未显着降低系统性能,这表明我们的设计可抵抗嘈杂和不完善的先验信息。此外,这些观察结果与所用假体的类型无关。这项研究中的有希望的结果可能有助于进一步开发一种环境感知型自适应系统,用于动力下肢假体或矫形器的运动模式识别。

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