University of Wollongong
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Hybrid LDA-CNN Framework for Robust End-to-End Myoelectric Hand Gesture Recognition Under Dynamic Conditions

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posted on 2025-09-25, 01:33 authored by Hong Quan Le, MIH Panhuis, Geoffrey SpinksGeoffrey Spinks, Gursel AliciGursel Alici
Gesture recognition based on conventional machine learning is the main control approach for advanced prosthetic hand systems. Its primary limitation is the need for feature extraction, which must meet real-time control requirements. On the other hand, deep learning models could potentially overfit when trained on small datasets. For these reasons, we propose a hybrid Linear Discriminant Analysis–convolutional neural network (LDA-CNN) framework to improve the gesture recognition performance of sEMG-based prosthetic hand control systems. Within this framework, 1D-CNN filters are trained to generate latent representation that closely approximates Fisher’s (LDA’s) discriminant subspace, constructed from handcrafted features. Under the train-one-test-all evaluation scheme, our proposed hybrid framework consistently outperformed the 1D-CNN trained with cross-entropy loss only, showing improvements from 4% to 11% across two public datasets featuring hand gestures recorded under various limb positions and arm muscle contraction levels. Furthermore, our framework exhibited advantages in terms of induced spectral regularization, which led to a state-of-the-art recognition error of 22.79% with the extended 23 feature set when tested on the multi-limb position dataset. The main novelty of our hybrid framework is that it decouples feature extraction in regard to the inference time, enabling the future incorporation of a more extensive set of features, while keeping the inference computation time minimal.<p></p>

Funding

ARC Centre of Excellence for Electromaterials Science : Australian Research Council | CE140100012

Non-invasive and safe human-machine interface (HMI) systems : Australian Research Council | DP210102911

History

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    ISSN - Is published in 2218-6581 (Robotics)

Journal title

Robotics

Volume

14

Issue

6

Article/chapter number

ARTN 83

Total pages

23

Publisher

MDPI

Publication status

  • Published

Language

English

Associated Identifiers

grant.3931460 (dimensions-grant-id); grant.9782812 (dimensions-grant-id)