IEEE Trans Neural Syst Rehabil Eng. 2022;30:2446-2455. doi: 10.1109/TNSRE.2022.3200485. Epub 2022 Sep 1.
Exoskeleton robot is an essential tool in active rehabilitation training for patients with lower limb motor dysfunctions. Accurate and real-time recognition in human motion intention is a great challenge in exoskeleton robot, which can be implemented by continues estimation of human joint angles. In this study, we innovatively proposed a novel feature-based convolutional neural network-bi-directional long-short term memory network (CNN-BiLSTM) model to predict the knee joint angles more accurately and in real time. We validated our method on a public dataset, including surface electromyography(sEMG) and inertial measurement unit (IMU) data of 10 healthy subjects during normal walking. Initially, features extraction from each modal data achieved feature-level fusion. Then the importance of each sEMG and IMU signal feature for knee joint angle prediction was quantified by ensemble feature scorer (EFS) and the number of features required for prediction while ensuring accuracy was simplified by profile likelihood maximization (PLM) algorithm. Finally, the CNN-BiLSTM model was created by using the determined simplest features to further fuse the spatio-temporal correlation of signals. The results indicated that the EFS and PLM algorithm could remove the feature redundancy perfectly and estimation performance would become better when bi-modal gait data were fused. For the estimation performance, the average root mean square error (RMSE), adjusted [Formula: see text] and pearson correlation coefficient (CC) of our algorithm were 4.07, 0.95, and 0.98, respectively, which was better than CNN, BiLSTM and other three traditional machine learning methods. In addition, the model test time was 62.47 ± 0.29 ms, which was less than the predicted horizon of 100 ms. The real-time performance and accuracy are satisfactory. Compared with previous works, our method has great advantages in feature selection and model design, which further improves the prediction accuracy. These promising results demonstrate that the proposed method has considerable potential to be applied to exoskeleton robot control.
外骨骼机器人是下肢运动功能障碍患者主动康复训练的重要工具。准确实时地识别人体运动意图是外骨骼机器人面临的巨大挑战,可以通过连续估计人体关节角度来实现。在这项研究中,我们创新性地提出了一种新的基于特征的卷积神经网络-双向长短时记忆网络(CNN-BiLSTM)模型,以更准确和实时地预测膝关节角度。我们在一个公共数据集上验证了我们的方法,该数据集包括 10 名健康受试者在正常行走时的表面肌电图(sEMG)和惯性测量单元(IMU)数据。首先,从每种模态数据中提取特征,实现特征级融合。然后,通过集成特征得分器(EFS)量化每个 sEMG 和 IMU 信号特征对膝关节角度预测的重要性,通过轮廓似然最大化(PLM)算法简化预测所需的特征数量,同时确保准确性。最后,使用确定的最简单特征创建 CNN-BiLSTM 模型,以进一步融合信号的时空相关性。结果表明,EFS 和 PLM 算法可以完美去除特征冗余,双模态步态数据融合后估计性能会更好。对于估计性能,我们算法的平均均方根误差(RMSE)、调整后的[Formula: see text]和皮尔逊相关系数(CC)分别为 4.07、0.95 和 0.98,优于 CNN、BiLSTM 和其他三种传统机器学习方法。此外,模型测试时间为 62.47±0.29ms,小于 100ms 的预测时间。实时性能和准确性令人满意。与之前的工作相比,我们的方法在特征选择和模型设计方面具有很大的优势,进一步提高了预测精度。这些有前景的结果表明,所提出的方法在外骨骼机器人控制中有很大的应用潜力。