Institute for Neuroinformatics (INI), Ruhr University Bochum, Universitätsstr. 150, Bochum, 44801, Germany.
German Aerospace Center (DLR), Robotics and Mechatronics Center (RMC), Münchener Str. 20, 82234, Weßling, Germany.
Med Biol Eng Comput. 2024 Jan;62(1):275-305. doi: 10.1007/s11517-023-02917-9. Epub 2023 Oct 5.
This work presents the design, implementation and validation of learning techniques based on the kNN scheme for gesture detection in prosthetic control. To cope with high computational demands in instance-based prediction, methods of dataset reduction are evaluated considering real-time determinism to allow for the reliable integration into battery-powered portable devices. The influence of parameterization and varying proportionality schemes is analyzed, utilizing an eight-channel-sEMG armband. Besides offline cross-validation accuracy, success rates in real-time pilot experiments (online target achievement tests) are determined. Based on the assessment of specific dataset reduction techniques' adequacy for embedded control applications regarding accuracy and timing behaviour, decision surface mapping (DSM) proves itself promising when applying kNN on the reduced set. A randomized, double-blind user study was conducted to evaluate the respective methods (kNN and kNN with DSM-reduction) against ridge regression (RR) and RR with random Fourier features (RR-RFF). The kNN-based methods performed significantly better ([Formula: see text]) than the regression techniques. Between DSM-kNN and kNN, there was no statistically significant difference (significance level 0.05). This is remarkable in consideration of only one sample per class in the reduced set, thus yielding a reduction rate of over 99% while preserving success rate. The same behaviour could be confirmed in an extended user study. With [Formula: see text], which turned out to be an excellent choice, the runtime complexity of both kNN (in every prediction step) as well as DSM-kNN (in the training phase) becomes linear concerning the number of original samples, favouring dependable wearable prosthesis applications.
本工作提出了基于 kNN 方案的学习技术的设计、实现和验证,用于假肢控制中的手势检测。为了应对基于实例的预测中的高计算需求,考虑到实时确定性,评估了数据集减少方法,以允许可靠地集成到电池供电的便携式设备中。分析了参数化和变化比例方案的影响,利用了一个八通道表面肌电臂带。除了离线交叉验证准确性外,还确定了实时飞行员实验(在线目标实现测试)中的成功率。基于对特定数据集减少技术在准确性和定时行为方面对于嵌入式控制应用的充分性的评估,决策面映射(DSM)在将 kNN 应用于简化集时证明是有前途的。进行了一项随机、双盲用户研究,以评估各自的方法(kNN 和具有 DSM 减少的 kNN)与岭回归(RR)和具有随机傅里叶特征的 RR(RR-RFF)相比。基于 kNN 的方法的性能明显优于回归技术([公式:见文本])。在 DSM-kNN 和 kNN 之间,没有统计学上的显著差异(显著性水平 0.05)。这在考虑到简化集中每个类只有一个样本时是值得注意的,从而在保持成功率的同时,将减少率提高了 99%以上。在扩展的用户研究中也可以确认相同的行为。使用 [公式:见文本],它被证明是一个极好的选择,kNN(在每个预测步骤中)和 DSM-kNN(在训练阶段)的运行时复杂度都成为原始样本数量的线性关系,有利于可靠的可穿戴假肢应用。