Electroglottography-based speech content classification using stacked BiLSTM-FCN network for clinical applications

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초록

In this study, we introduce a newer approach to classify the human speech contents based on Electroglottographic (EGG) signals. In general, identifying human speech using EGG signals is challenging and unaddressed, as human speech may contain pathology due to vocal cord damage. In this paper, we propose a deep learning-based approach called Stacked BiLSTM-FCN to identify the speech contents for both the healthy and pathological person. This deep learning-based technique integrates a recurrent neural network (RNN) that utilizes bidirectional long shortterm memory (BiLSTM) with a convolutional network that uses a squeeze and excitation layer, learns features from the EGG signals and classifies them based on the learned features. Experiments on the existing Saarbruecken Voice Database (SVD) dataset containing healthy and pathological voices with different pitch levels showed an accuracy of 92.09% on the proposed model. Further evaluations prove the generalization performance and robustness of the proposed method for application in clinical laboratories to identify speech contents with different pathologies and varying accent types.

키워드

ElectroglottographyVocal cordPathologySpeech classificationClinical applicationBIDIRECTIONAL LSTMVOICE
제목
Electroglottography-based speech content classification using stacked BiLSTM-FCN network for clinical applications
저자
Kanagachalam, SrinidhiKim, Deok-Hwan
DOI
10.1016/j.csl.2025.101886
발행일
2026-02
유형
Article
저널명
Computer Speech and Language
96