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A novel AVOA optimized DNN-BiLSTM-attention model for improved gesture classification using electromyography signal

Gautam Shah, Abhinav Sharma, Deepak Joshi, Ajit Singh Rathor

发表年份
2025
引用次数
7

摘要

• The major contributions of the research article are as follows: • A novel DNN-BiLSTM-Attention network has been proposed for classifying upper limb hand gestures across four distinct feature sets of multichannel sEMG signals. • Metaheuristic algorithms such as Siberian Tiger Optimization (STO), Arithmetic Optimization Algorithm (AOA), Chaos-Particle Swarm Optimization (C-PSO), AVOA and Walrus Optimization Algorithm (WaOA) are explored to optimize the number of kernels of the convolution layer of the proposed model. • The performance of the proposed model is statistically compared with other benchmark models including Cubic-SVM, LDA, DT, DNN and AVOA-optimized DNN-BiLSTM ensemble. Identification of hand gestures using wearable interfaces has gained significant attention in areas such as human–computer interaction, gaming, sign language recognition, rehabilitation and assistive robotics. This study presents a hybrid deep learning architecture that integrates convolutional layers with BiLSTM and attention mechanisms to classify upper limb movements in healthy individuals using four distinct feature sets (F1, F2, F3, F4). A key contribution of this work is the optimization of convolutional hyperparameters, such as the number of filters, using various nature-inspired metaheuristic algorithms, thereby eliminating the need for manual tuning. Extensive experiments conducted on EMAHA-DB1 dataset demonstrate the effectiveness of the proposed method. Comparative evaluations against several state-of-the-art ML models, namely Cubic SVM, LDA, Decision Tree, and Deep Neural Network, reveal that our model chieves superior performance across all four distinct feature sets. Specifically, the AVOA-optimized DNN-BiLSTM-Attention model achieved classification accuracies of 99.35% for F1, 99.72% for F2, 94.39% for F3, and 99.19% for F4 feature set. Furthermore, statistical analysis confirms the model’s robustness and significant improvements across all feature sets, highlighting its superiority.

关键词

ElectromyographyComputer scienceSIGNAL (programming language)Speech recognitionGestureArtificial intelligencePattern recognition (psychology)Hidden Markov modelPsychologyNeuroscience

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