Alves Natasha, Chau Tom
Institute of Biomaterials and Biomedical Engineering, University of Toronto, and Bloorview Research Institute, Bloorview Kids Rehab, Canada.
Annu Int Conf IEEE Eng Med Biol Soc. 2010;2010:3531-4. doi: 10.1109/IEMBS.2010.5627754.
Recent studies on identifying multiple activation states from mechanomyogram (MMG) signals for the purpose of controlling switching interfaces have employed pattern recognition methods where MMG signal features from multiple muscle sites are extracted and classified. The purpose of this study is to determine if MMG signal features retain enough discriminatory information to allow reliable continuous classification, and to determine if there is a decline in classification accuracy over short time periods. MMG signals were recorded from two accelerometers attached to the flexor carpi radialis and extensor carpi radialis muscles of 12 able-bodied participants as participants performed three classes of forearm muscle activity. The data were collected over five recording sessions, with a ten-minute interval between each session. The data were spliced into 256 ms epochs, and a comprehensive set of signal features was extracted. A pattern classifier, trained with continuously acquired signal features from the first recording session, was tested with signals recorded from the other sessions. The average classification accuracy over the five sessions was 89 ± 2%. There was no obvious declining trend in classification accuracy with time. These results show that MMG signals recorded at the forearm retain enough discriminatory information to allow continuous recognition of hand motion across multiple (>90) repetitions, and the MMG-classifier does not show short-term degradation. These results indicate the potential of MMG as a multifunction control signal for muscle-machine interfaces.
最近,为了控制切换界面,从肌动图(MMG)信号中识别多种激活状态的研究采用了模式识别方法,即提取并分类来自多个肌肉部位的MMG信号特征。本研究的目的是确定MMG信号特征是否保留了足够的鉴别信息以实现可靠的连续分类,以及确定在短时间内分类准确率是否会下降。在12名身体健全的参与者进行三类前臂肌肉活动时,从附着于桡侧腕屈肌和桡侧腕伸肌的两个加速度计记录MMG信号。数据在五个记录时段收集,每个时段间隔十分钟。数据被拼接成256毫秒的时间段,并提取了一组全面的信号特征。使用从第一个记录时段连续获取的信号特征训练的模式分类器,用从其他时段记录的信号进行测试。五个时段的平均分类准确率为89±2%。分类准确率没有随时间明显下降的趋势。这些结果表明,在前臂记录的MMG信号保留了足够的鉴别信息,以允许在多次(>90次)重复中连续识别手部运动,并且MMG分类器没有显示出短期退化。这些结果表明了MMG作为肌肉-机器接口的多功能控制信号的潜力。