AI Article Synopsis

  • - The research presents a new dual-pathway convolutional neural network (DP-CNN) specifically designed for analyzing Log-Mel spectrogram images from multichannel electromyography signals, focusing on performance for both able-bodied and amputee subjects.
  • - The DP-CNN achieves high mean accuracies of 94.93% for healthy subjects in NinaPro DB1 and 85.36% for amputee subjects in DB3, showcasing its effectiveness across various datasets.
  • - Compared to previous methods, the DP-CNN shows significant performance improvements, with accuracy boosts of up to 39.09% and outperforms transfer learning models, suggesting strong potential for enhancing myoelectric control applications.

Article Abstract

This research introduces a novel dual-pathway convolutional neural network (DP-CNN) architecture tailored for robust performance in Log-Mel spectrogram image analysis derived from raw multichannel electromyography signals. The primary objective is to assess the effectiveness of the proposed DP-CNN architecture across three datasets (NinaPro DB1, DB2, and DB3), encompassing both able-bodied and amputee subjects. Performance metrics, including accuracy, precision, recall, and F1-score, are employed for comprehensive evaluation. The DP-CNN demonstrates notable mean accuracies of 94.93 ± 1.71% and 94.00 ± 3.65% on NinaPro DB1 and DB2 for healthy subjects, respectively. Additionally, it achieves a robust mean classification accuracy of 85.36 ± 0.82% on amputee subjects in DB3, affirming its efficacy. Comparative analysis with previous methodologies on the same datasets reveals substantial improvements of 28.33%, 26.92%, and 39.09% over the baseline for DB1, DB2, and DB3, respectively. The DP-CNN's superior performance extends to comparisons with transfer learning models for image classification, reaffirming its efficacy. Across diverse datasets involving both able-bodied and amputee subjects, the DP-CNN exhibits enhanced capabilities, holding promise for advancing myoelectric control.

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http://dx.doi.org/10.3934/mbe.2024252DOI Listing

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  • - The research presents a new dual-pathway convolutional neural network (DP-CNN) specifically designed for analyzing Log-Mel spectrogram images from multichannel electromyography signals, focusing on performance for both able-bodied and amputee subjects.
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  • - Compared to previous methods, the DP-CNN shows significant performance improvements, with accuracy boosts of up to 39.09% and outperforms transfer learning models, suggesting strong potential for enhancing myoelectric control applications.
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