Seo Kyeong-Jun, Lee Jinwon, Cho Ji-Eun, Kim Hogene, Kim Jung Hwan
Department of Rehabilitation & Assistive Technology, National Rehabilitation Center, Ministry of Health and Welfare, Seoul 01022, Republic of Korea.
Department of Industrial and Management Engineering, Gangneung-Wonju National University, Wonju 26403, Gangwon-do, Republic of Korea.
Sensors (Basel). 2025 Jul 10;25(14):4302. doi: 10.3390/s25144302.
Gait, the fundamental form of human locomotion, occurs across diverse environments. The technology for recognizing environmental changes during walking is crucial for preventing falls and controlling wearable robots. This study collected gait data on level ground (LG), ramps, and stairs using a feed-forward neural network (FFNN) to classify the corresponding gait environments. Gait experiments were performed on five non-disabled participants using an inertial measurement unit, a galvanic skin response sensor, and a smart insole. The collected data were preprocessed through time synchronization and filtering, then labeled according to the gait environment, yielding 47,033 data samples. Gait data were used to train an FFNN model with a single hidden layer, achieving a high accuracy of 98%, with the highest accuracy observed on LG. This study confirms the effectiveness of classifying gait environments based on signals acquired from various wearable sensors during walking. In the future, these research findings may serve as basic data for exoskeleton robot control and gait analysis.
步态作为人类运动的基本形式,出现在各种不同的环境中。识别行走过程中环境变化的技术对于预防跌倒和控制可穿戴机器人至关重要。本研究使用前馈神经网络(FFNN)收集了在平地(LG)、斜坡和楼梯上的步态数据,以对相应的步态环境进行分类。使用惯性测量单元、皮肤电反应传感器和智能鞋垫对五名非残疾参与者进行了步态实验。收集到的数据经过时间同步和滤波预处理,然后根据步态环境进行标记,得到47,033个数据样本。步态数据用于训练具有单个隐藏层的FFNN模型,准确率高达98%,在平地上观察到的准确率最高。本研究证实了基于行走过程中从各种可穿戴传感器获取的信号对步态环境进行分类的有效性。未来,这些研究结果可能作为外骨骼机器人控制和步态分析的基础数据。