This work has been conducted in the context of pattern-recognition-based control for electromyographic prostheses. It presents a k-nearest neighbour (kNN) classification technique for gesture recognition, extended by a proportionality scheme. The methods proposed are practically implemented and validated. Datasets are captured by means of a state-of-the-art 8-channel electromyography (EMG) armband positioned on the forearm. Based on this data, the influence of kNN's parameters is analyzed in pilot experiments. Moreover, the effect of proportionality scaling and rest thresholding schemes is investigated. A randomized, double-blind user study is conducted to compare the implemented method with the state-of-research algorithm Ridge Regression with Random Fourier Features (RR-RFF) for different levels of gesture exertion. The results from these experiments show a statistically significant improvement in favour of the kNN-based algorithm.
翻译:这项工作是在对电传假肢进行基于模式识别的控制的背景下进行的,它为姿态识别提供了K-近邻(kNN)分类技术,通过相称性办法加以扩展;提议的方法得到实际实施和验证;数据集通过位于前臂的8频道最新电磁学(EMG)臂带进行采集;根据这些数据,在试点实验中分析了KNN参数的影响;此外,还调查了相称性缩放和休息阈值计划的影响;进行了随机、双盲用户研究,将实施的方法与状态研究算法下脊回归与不同级别手势的随机四变形功能(RRR-RFF)进行比较;这些实验的结果显示,在统计上明显改进了KNN的算法。