Luo Mingxiang, Dong Xiaoli, Yu Hongliu, Zhang Mingming, Wu Xinyu, Kobsiriphat Worawarit, Wang Jing-Xin, Cao Wujing
Guangdong Provincial Key Lab of Robotics and Intelligent System, Shenzhen Institute of Advanced Technology, Chinese Academy of Sciences, Shenzhen 518005, China.
Xinjiang Industrial Vocational and Technical College, Urumqi 830000, China.
Comput Struct Biotechnol J. 2025 Feb 5;28:50-62. doi: 10.1016/j.csbj.2025.02.001. eCollection 2025.
Lateral resistance walk is an effective way to strengthen the abductor muscles of the hip. Accurate lateral walking gait recognition is the prerequisite for exoskeletons to be applied to lateral walking exercises. This paper proposes a denoising autoencoder-LSTM (DAE-LSTM) algorithm for lateral walking gait recognition. Nine sets of IMU data at three speeds and three strides of ten subjects were collected. Four lateral walking gait phases of narrow double support (NDS), guided foot swing (GFS), wide double support (WDS) and following leg swing (FLS) were recognized. The recognition performance of random forest (RF), support vector machine (SVM), k-nearest neighbors (KNN), neural networks (NN) and DAE-LSTM were compared. The average cross-subject recognition accuracy of DAE-LSTM was 90.2 %, which was higher than the other four models and previous work. For each frame of IMU data, the average recognition time of DAE-LSTM is 0.383 ms, which is 5.32 ms higher than the previous work. When the signal-to-noise ratio (SNR) is greater than 100:1, the accuracy of the DAE-LSTM model is higher than 90.0 %, and the accuracy of the other four models were less than 85 %. The results show that the proposed algorithm can achieve the requirements of recognition accuracy, model recognition time and model robustness for application in exoskeleton.
横向阻力行走是增强髋外展肌的有效方法。准确的横向行走步态识别是外骨骼应用于横向行走训练的前提。本文提出了一种用于横向行走步态识别的去噪自编码器-长短期记忆网络(DAE-LSTM)算法。收集了十名受试者在三种速度和三种步幅下的九组惯性测量单元(IMU)数据。识别了窄双支撑(NDS)、引导脚摆动(GFS)、宽双支撑(WDS)和跟随腿摆动(FLS)四个横向行走步态阶段。比较了随机森林(RF)、支持向量机(SVM)、k近邻(KNN)、神经网络(NN)和DAE-LSTM的识别性能。DAE-LSTM的平均跨受试者识别准确率为9-0.2%,高于其他四种模型和先前的工作。对于IMU数据的每一帧,DAE-LSTM的平均识别时间为0.383毫秒,比先前的工作高5.32毫秒。当信噪比(SNR)大于100:1时,DAE-LSTM模型的准确率高于90.0%,其他四种模型的准确率均低于85%。结果表明,所提出的算法能够满足外骨骼应用中识别准确率、模型识别时间和模型鲁棒性的要求。