Department of Electronic Science and Engineering, Southeast University, Nanjing 210096, China.
Sensors (Basel). 2018 Mar 15;18(3):869. doi: 10.3390/s18030869.
The novel human-computer interface (HCI) using bioelectrical signals as input is a valuable tool to improve the lives of people with disabilities. In this paper, surface electromyography (sEMG) signals induced by four classes of wrist movements were acquired from four sites on the lower arm with our designed system. Forty-two features were extracted from the time, frequency and time-frequency domains. Optimal channels were determined from single-channel classification performance rank. The optimal-feature selection was according to a modified entropy criteria (EC) and Fisher discrimination (FD) criteria. The feature selection results were evaluated by four different classifiers, and compared with other conventional feature subsets. In online tests, the wearable system acquired real-time sEMG signals. The selected features and trained classifier model were used to control a telecar through four different paradigms in a designed environment with simple obstacles. Performance was evaluated based on travel time (TT) and recognition rate (RR). The results of hardware evaluation verified the feasibility of our acquisition systems, and ensured signal quality. Single-channel analysis results indicated that the channel located on the extensor carpi ulnaris (ECU) performed best with mean classification accuracy of 97.45% for all movement's pairs. Channels placed on ECU and the extensor carpi radialis (ECR) were selected according to the accuracy rank. Experimental results showed that the proposed FD method was better than other feature selection methods and single-type features. The combination of FD and random forest (RF) performed best in offline analysis, with 96.77% multi-class RR. Online results illustrated that the state-machine paradigm with a 125 ms window had the highest maneuverability and was closest to real-life control. Subjects could accomplish online sessions by three sEMG-based paradigms, with average times of 46.02, 49.06 and 48.08 s, respectively. These experiments validate the feasibility of proposed real-time wearable HCI system and algorithms, providing a potential assistive device interface for persons with disabilities.
新型人机接口(HCI)利用生物电信号作为输入,是改善残疾人士生活的有价值工具。在本文中,我们设计的系统从手臂的四个部位采集了四类腕部运动引起的表面肌电(sEMG)信号。从时域、频域和时频域提取了 42 个特征。根据单通道分类性能排名确定最优通道。最优特征选择是根据改进的熵准则(EC)和 Fisher 判别准则(FD)进行的。使用四个不同的分类器评估特征选择结果,并与其他常规特征子集进行比较。在在线测试中,可穿戴系统采集实时 sEMG 信号。选择的特征和训练的分类器模型用于在设计的具有简单障碍物的环境中通过四个不同的范式控制遥控车。根据行驶时间(TT)和识别率(RR)进行性能评估。硬件评估结果验证了我们采集系统的可行性,保证了信号质量。单通道分析结果表明,位于尺侧腕伸肌(ECU)的通道在所有运动对的平均分类准确率为 97.45%,性能最佳。根据准确率排名选择了位于 ECU 和桡侧腕伸肌(ECR)的通道。实验结果表明,所提出的 FD 方法优于其他特征选择方法和单类型特征。FD 与随机森林(RF)的组合在离线分析中表现最佳,多类 RR 为 96.77%。在线结果表明,窗口为 125ms 的状态机范式具有最高的机动性,最接近实际生活中的控制。受试者可以通过三种基于 sEMG 的范式完成在线会话,平均时间分别为 46.02、49.06 和 48.08s。这些实验验证了所提出的实时可穿戴 HCI 系统和算法的可行性,为残疾人士提供了一种潜在的辅助设备接口。