TY - EJOU AU - Chaobankoh, Narathip AU - Jumphoo, Tallit AU - Uthansakul, Monthippa AU - Phapatanaburi, Khomdet AU - Sindthupakorn, Bura AU - Rooppakhun, Supakit AU - Uthansakul, Peerapong TI - Lower-Limb Motion-Based Ankle-Foot Movement Classification Using 2D-CNN T2 - Computers, Materials \& Continua PY - 2022 VL - 73 IS - 1 SN - 1546-2226 AB - Recently, the Muscle-Computer Interface (MCI) has been extensively popular for employing Electromyography (EMG) signals to help the development of various assistive devices. However, few studies have focused on ankle foot movement classification considering EMG signals at limb position. This work proposes a new framework considering two EMG signals at a lower-limb position to classify the ankle movement characteristics based on normal walking cycles. For this purpose, we introduce a human ankle-foot movement classification method using a two-dimensional-convolutional neural network (2D-CNN) with low-cost EMG sensors based on lower-limb motion. The time-domain signals of EMG obtained from two sensors belonging to Dorsiflexion, Neutral-position, and Plantarflexion are firstly converted into time-frequency spectrograms by short-time Fourier transform. Afterward, the spectrograms of the three ankle-foot movement types are used as input to the 2D-CNN such that the EMG foot movement types are finally classified. For the evaluation phase, the proposed method is investigated using the healthy volunteer for 5-fold cross-validation, and the accuracy is used as a standard evaluation. The results demonstrate that our approach provides an average accuracy of 99.34%. This exhibits the usefulness of 2D-CNN with low-cost EMG sensors in terms of ankle-foot movement classification at limb position, which offers feasibility for walking. However, the obtained EMG signal is not directly considered at the ankle position. KW - Electromyography; neural network; tibialis anterior muscle; gastrocnemius muscle; convolution neural network; spectrogram; lower limb DO - 10.32604/cmc.2022.027474