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A Comparison of Data Augmentation Methods on Ultrasound Tongue Images for Articulatory- to-Acoustic Mapping towards Silent Speech Interfaces

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Tartalom: http://hdl.handle.net/10890/40712
Archívum: Műegyetem Digitális Archívum
Gyűjtemény: 1. Tudományos közlemények, publikációk
Konferenciák gyűjteményei
1st Workshop on Intelligent Infocommunication Networks, Systems and Services, 2023
Workshop on Intelligent Infocommunication Networks, Systems and Services
Cím:
A Comparison of Data Augmentation Methods on Ultrasound Tongue Images for Articulatory- to-Acoustic Mapping towards Silent Speech Interfaces
Létrehozó:
Ibrahimov, Ibrahim
Gosztolya, Gábor
Csapó, Tamás Gábor
Dátum:
2023-03-13T16:07:08Z
2023-03-13T16:07:08Z
2023
Tartalmi leírás:
Silent Speech Interfaces (SSI), being a subfield of speech technology, break the limitations of automatic speech recognition when acoustic signals cannot be produced or clearly captured. SSI focuses on the articulation process of speech production in order to map articulatory data into acoustics. Ultrasound tongue imaging (UTI), a non-invasive, clinically safe technique to view the shape, position, and movements of the tongue, has recently become popular in the process of collecting articulatory data of the tongue movement. It has already been shown that data augmentation can be helpful for solving the overfitting problem and improving the generalization ability of deep neural networks. In this paper, we discuss the preliminary implementation and comparison of data augmentation methods on Azerbaijani ultrasound and speech recordings that has been recorded by us. These strategies include consecutive and intermittent time masking, sinusoidal noise injection, and random scaling. We explore the generation of new data samples using the provided methods on the dataset. We use mean-squared error validation loss as an evaluation metric to measure the performance of all the above data augmentation methods.
Nyelv:
angol
Típus:
Konferenciaközlemény
Formátum:
application/pdf
Azonosító: