Quantitative analysis of automatic voice disorder detection studies for hybrid feature and classifier selection☆

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15

초록

Owing to the development of machine learning, particularly deep learning, researchers have focused on automatic voice-disorder detection. However, voice-disorder datasets vary significantly in terms of the number of patients per disorder, and different conditions are targeted in different studies. Therefore, conducting direct comparisons of performances across related studies is complicated. Hence, we compare conventional machine learning, deep learning, and multimodal methods by establishing a fixed dataset and an evaluation pipeline using the Saarbrucken voice database, which is the most commonly used database for automatic voice-disorder detection. In addition, we propose an automatic voice-disorder detection method that combines features and classifiers. Experimental results show mean unweighted average recall differences of 8% and 15% on the abovementioned two datasets, respectively, and that the proposed combination improves them by 1.5% and 0.5%, respectively.

키워드

Voice disorder detectionMachine learningSpeech analysisHealthcarePATHOLOGY DETECTIONHEALTH-CAREIDENTIFICATION
제목
Quantitative analysis of automatic voice disorder detection studies for hybrid feature and classifier selection☆
저자
Lee, Jong BubLee, Hyun Gyu
DOI
10.1016/j.bspc.2024.106014
발행일
2024-05
유형
Article
저널명
Biomedical Signal Processing and Control
91