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Gradient-Based Multi-Objective Feature Selection for Gait Mode Recognition of Transfemoral Amputees

机译:基于梯度的GAIT模式识别的梯度的多目标特征选择

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One control challenge in prosthetic legs is seamless transition from one gait mode to another. User intent recognition (UIR) is a high-level controller that tells a low-level controller to switch to the identified activity mode, depending on the user's intent and environment. We propose a new framework to design an optimal UIR system with simultaneous maximum performance and minimum complexity for gait mode recognition. We use multi-objective optimization (MOO) to find an optimal feature subset that creates a trade-off between these two conflicting objectives. The main contribution of this paper is two-fold: (1) a new gradient-based multi-objective feature selection (GMOFS) method for optimal UIR design; and (2) the application of advanced evolutionary MOO methods for UIR. GMOFS is an embedded method that simultaneously performs feature selection and classification by incorporating an elastic net in multilayer perceptron neural network training. Experimental data are collected from six subjects, including three able-bodied subjects and three transfemoral amputees. We implement GMOFS and four variants of multi-objective biogeography-based optimization (MOBBO) for optimal feature subset selection, and we compare their performances using normalized hypervolume and relative coverage. GMOFS demonstrates competitive performance compared to the four MOBBO methods. We achieve a mean classification accuracy of 97.14%+/- 1.51%and 98.45%+/- 1.22% with the optimal selected subset for able-bodied and amputee subjects, respectively, while using only 23% of the available features. Results thus indicate the potential of advanced optimization methods to simultaneously achieve accurate, reliable, and compact UIR for locomotion mode detection of lower-limb amputees with prostheses.
机译:假肢腿的一个控制挑战是从一个步态模式到另一个步态模式的无缝过渡。用户意图识别(UIR)是一个高级控制器,其告诉低电平控制器,根据用户的意图和环境切换到识别的活动模式。我们提出了一个新的框架来设计具有同时最大性能和步态模式识别的最大性能和最小复杂性的最佳UIR系统。我们使用多目标优化(MOO)来查找在这两个冲突目标之间创建权衡的最佳特征子集。本文的主要贡献是两倍:(1)用于最佳UIR设计的新型基于梯度的多目标特征选择(GMOFS)方法; (2)先进进化MOO方法对UIR的应用。 GMOFS是一种嵌入式方法,它通过在多层的Perceptron神经网络训练中结合弹性网同时执行特征选择和分类。从六个受试者收集实验数据,包括三个能够拥有三个能够的受试者和三个经罚金患者。我们实施GMOFS和四种基于多目标生物地理的优化(MOBBO)的四种变体,以获得最佳特征子集选择,我们使用归一化的超明和相对覆盖率进行比较它们的性能。与四种Mobbo方法相比,GMOFS展示了竞争性能。我们的平均分类准确性为97.14%+ / - 1.51%和98.45%+ / - 1.22%,分别使用23%的可用功能,分别为能干和截肢主题的最佳选择子集。因此,指示具有先进优化方法的潜力,以同时实现精确,可靠,紧凑的UIR,用于具有假体的低肢体术语的运动模式检测。

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