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Self-Recalibrating Surface EMG Pattern Recognition for Neuroprosthesis Control Based on Convolutional Neural Network

机译:基于卷积神经网络的神经假体控制自校正表面肌电图模式识别

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摘要

Hand movement classification based on surface electromyography (sEMG) pattern recognition is a promising approach for upper limb neuroprosthetic control. However, maintaining day-to-day performance is challenged by the non-stationary nature of sEMG in real-life operation. In this study, we propose a self-recalibrating classifier that can be automatically updated to maintain a stable performance over time without the need for user retraining. Our classifier is based on convolutional neural network (CNN) using short latency dimension-reduced sEMG spectrograms as inputs. The pretrained classifier is recalibrated routinely using a corrected version of the prediction results from recent testing sessions. Our proposed system was evaluated with the NinaPro database comprising of hand movement data of 40 intact and 11 amputee subjects. Our system was able to achieve ~10.18% (intact, 50 movement types) and ~2.99% (amputee, 10 movement types) increase in classification accuracy averaged over five testing sessions with respect to the unrecalibrated classifier. When compared with a support vector machine (SVM) classifier, our CNN-based system consistently showed higher absolute performance and larger improvement as well as more efficient training. These results suggest that the proposed system can be a useful tool to facilitate long-term adoption of prosthetics for amputees in real-life applications.
机译:基于表面肌电图(sEMG)模式识别的手运动分类是上肢神经假体控制的一种有前途的方法。但是,在实际操作中sEMG的非平稳特性对维持日常性能提出了挑战。在这项研究中,我们提出了一种自动校准的分类器,该分类器可以自动更新以在一段时间内保持稳定的性能,而无需重新培训用户。我们的分类器基于卷积神经网络(CNN),使用短时延降维的sEMG频谱图作为输入。使用最近测试会话的预测结果的校正版本,对经过预训练的分类器进行常规重新校准。我们提出的系统是使用NinaPro数据库进行评估的,该数据库包含40名完整受试者和11名截肢者的手部运动数据。对于未经校准的分类器,我们的系统在五个测试阶段的分类准确率平均提高了〜10.18%(完整,50种运动类型)和〜2.99%(截肢者,10种运动类型)。与支持向量机(SVM)分类器相比,我们基于CNN的系统始终显示出更高的绝对性能和更大的改进以及更有效的训练。这些结果表明,所提出的系统可以成为在现实生活中促进被截肢者长期使用假肢的有用工具。

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