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Toward Minimal-Sensing Locomotion Mode Recognition for a Powered Knee-Ankle Prosthesis

机译:朝向最小传感的运动模式识别动力膝关节踝假肢

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Objective: Locomotion mode recognition (LMR) enables seamless and natural transitions between low-level control systems in a powered prosthesis. We present a new optimization framework for LMR that eliminates irrelevant or redundant features and measurement signals while still maintaining performance. Methods: We use multi-objective biogeography-based optimization to find a compromise solution between performance and the minimization of feature set size. Experimental data are collected from four transfemoral users walking with a powered knee-ankle prosthesis. We compare the performance of LMR systems trained with the optimal feature subsets and with the full feature set using a deep neural network classifier across six locomotion modes: standing, flat-ground walking, stair up/down, and ramp up/down. Results: Statistical tests indicate that classifier performance using the optimal feature subsets is statistically equal to that using the full feature set. The LMR trained with an optimal subset results in the 1.98% steady-state and 4.09% transitional error rates, while only using approximately 41% and 53% of the available features and sensors, respectively. Conclusion: Results thus indicate the capability of the proposed framework to achieve simultaneously accurate and low-complex LMR systems for transfemoral individuals with powered prostheses. Significance: This framework would potentially lead to less frequent clinical visits needed for sensor replacement and calibrations, which may save health care costs and the prosthesis user's time and energy.
机译:目的:运动模式识别(LMR)在动力假体中的低级控制系统之间实现无缝和自然转变。我们为LMR提出了一种新的优化框架,可消除无关或冗余功能和测量信号,同时仍保持性能。方法:我们使用基于多目标生物地理摄影的优化,在性能和最小化功能集大小之间找到折衷解决方案。从四个经过动力的膝关节踝假肢行走的4个经罚金用户收集实验数据。我们比较使用最佳特征子集训练的LMR系统的性能以及使用深度神经网络分类器的完整功能集,跨六种机器人模式:站立,平面行走,楼梯上/下和上升/下降。结果:统计测试表明,使用最佳特征子集的分类器性能与使用完整功能集的统计上等于该分类器性能。具有最佳子集的LMR培训,导致1.98%的稳态和4.09%的过渡误差率,同时仅使用约41%和53%的可用功能和传感器。结论:结果表明提出框架的能力,以实现具有动力假体的经熔熔体的同时准确和低复杂的LMR系统。意义:该框架可能导致传感器更换和校准所需的临床访问较少,这可能会节省医疗保健成本和假肢用户的时间和能量。

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