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Comparing Evolvable Hardware to Conventional Classifiers for Electromyographic Prosthetic Hand Control

机译:将不可扩大的硬件与常规分类器进行比较,用于电拍摄假型手动控制

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Evolvable hardware has shown to be a promising approach for prosthetic hand controllers as it features self-adaptation, fast training, and a compact system-on-chip implementation. Besides these intriguing features, the classification performance is paramount to success for any classifier. However, evolvable hardware classifiers have not yet been sufficiently compared to state-of-the-art conventional classifiers. In this paper, we compare two evolvable hardware approaches for signal classification to three conventional classification techniques: k-nearest-neighbor, decision trees, and support vector machines. We provide all classifiers with features extracted from electromyographic signals taken from forearm muscle contractions, and try to recognize eight different hand movements. Experimental results demonstrate that evolvable hardware approaches are indeed able to compete with state-of-the-art classifiers. Specifically, one of our evolvable hardware approaches delivers a generalization performance similar to that of support vector machines.
机译:可进化的硬件显示出对假肢手机控制器的有希望的方法,因为它具有自适应,快速训练和紧凑的片上系统实现。除了这些有趣功能之外,分类性能对于任何分类器的成功至关重要。然而,与最先进的传统分类器相比,不可溶解的硬件分类器尚未充分。在本文中,我们比较了三种传统分类技术的信号分类的两种不可扩大的硬件方法:K到最近邻居,决策树和支持向量机。我们提供从从前臂肌肉收缩所取出的电拍摄信号中提取的功能的所有分类器,并尝试识别八种不同的手动运动。实验结果表明,不可溶的硬件方法确实能够与最先进的分类器竞争。具体地,我们的一种不可溶的硬件方法之一可提供类似于支持向量机器的泛化性能。

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