Multimodal Sensor-Input Architecture with Deep Learning for Audio-Visual Speech Recognition in Wild

Author:

He Yibo1,Seng Kah Phooi12,Ang Li Minn3

Affiliation:

1. School of AI and Advanced Computing, Xian Jiaotong Liverpool University, Suzhou 215123, China

2. School of Computer Science, Queensland University of Technology, Brisbane, QLD 4000, Australia

3. School of Science, Technology and Engineering, University of Sunshine Coast, Sippy Downs, QLD 4502, Australia

Abstract

This paper investigates multimodal sensor architectures with deep learning for audio-visual speech recognition, focusing on in-the-wild scenarios. The term “in the wild” is used to describe AVSR for unconstrained natural-language audio streams and video-stream modalities. Audio-visual speech recognition (AVSR) is a speech-recognition task that leverages both an audio input of a human voice and an aligned visual input of lip motions. However, since in-the-wild scenarios can include more noise, AVSR’s performance is affected. Here, we propose new improvements for AVSR models by incorporating data-augmentation techniques to generate more data samples for building the classification models. For the data-augmentation techniques, we utilized a combination of conventional approaches (e.g., flips and rotations), as well as newer approaches, such as generative adversarial networks (GANs). To validate the approaches, we used augmented data from well-known datasets (LRS2—Lip Reading Sentences 2 and LRS3) in the training process and testing was performed using the original data. The study and experimental results indicated that the proposed AVSR model and framework, combined with the augmentation approach, enhanced the performance of the AVSR framework in the wild for noisy datasets. Furthermore, in this study, we discuss the domains of automatic speech recognition (ASR) architectures and audio-visual speech recognition (AVSR) architectures and give a concise summary of the AVSR models that have been proposed.

Publisher

MDPI AG

Subject

Electrical and Electronic Engineering,Biochemistry,Instrumentation,Atomic and Molecular Physics, and Optics,Analytical Chemistry

Reference27 articles.

1. Haton, J.-P. (1999). Speech Processing, Recognition and Artificial Neural Networks: Proceedings of the 3rd International School on Neural Nets “Eduardo R. Caianiello”, Springer.

2. Speech recognition techniques using RBF networks;Phillips;IEEE WESCANEX 95. Communications, Power, and Computing. Conference Proceedings,1995

3. Lyapunov theory-based multilayered neural network;Lim;IEEE Trans. Circuits Syst. II Express Briefs,2009

4. Kinjo, T., and Funaki, K. (2006). IECON 2006-32nd Annual Conference on IEEE Industrial Electronics, IEEE.

5. Zweig, G., and Nguyen, P. (2009). 2009 IEEE Workshop on Automatic Speech Recognition & Understanding, IEEE.

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