Peripheral nerve interfaces (PNIs) facilitate neural recording and stimulation for treating nerve injuries, but real-time classification of electroneurographic (ENG) signals remains challenging due to constraints on complexity and latency, particularly in implantable devices. This study introduces MobilESCAPE-Net, a lightweight architecture that reduces com putational cost while maintaining and slightly improving classification performance. Compared to the state-of-the-art ESCAPENet, MobilESCAPE-Net achieves comparable accuracy and F1 score with significantly lower complexity, reducing trainable parameters by 99.9% and floating point operations per second by 92.47%, enabling faster inference and real-time processing. Its efficiency makes it well-suited for low-complexity ENG signal classification in resource-constrained environments such as implantable devices.

Low-Complexity CNN-Based Classification of Electroneurographic Signals

A. B. Gokdag;S. Mura;A. Coviello;M. Zhu;M. Magarini;U. Spagnolini
2025-01-01

Abstract

Peripheral nerve interfaces (PNIs) facilitate neural recording and stimulation for treating nerve injuries, but real-time classification of electroneurographic (ENG) signals remains challenging due to constraints on complexity and latency, particularly in implantable devices. This study introduces MobilESCAPE-Net, a lightweight architecture that reduces com putational cost while maintaining and slightly improving classification performance. Compared to the state-of-the-art ESCAPENet, MobilESCAPE-Net achieves comparable accuracy and F1 score with significantly lower complexity, reducing trainable parameters by 99.9% and floating point operations per second by 92.47%, enabling faster inference and real-time processing. Its efficiency makes it well-suited for low-complexity ENG signal classification in resource-constrained environments such as implantable devices.
2025
19th International Symposium on Medical Information and Communication Technology, ISMICT 2025
9798331525484
ENG signals, Classification, Peripheral nerve interfaces.
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Utilizza questo identificativo per citare o creare un link a questo documento: https://hdl.handle.net/11311/1291346
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