Combining Multiple Views for Visual Speech Recognition

10/19/2017
by   Marina Zimmermann, et al.
0

Visual speech recognition is a challenging research problem with a particular practical application of aiding audio speech recognition in noisy scenarios. Multiple camera setups can be beneficial for the visual speech recognition systems in terms of improved performance and robustness. In this paper, we explore this aspect and provide a comprehensive study on combining multiple views for visual speech recognition. The thorough analysis covers fusion of all possible view angle combinations both at feature level and decision level. The employed visual speech recognition system in this study extracts features through a PCA-based convolutional neural network, followed by an LSTM network. Finally, these features are processed in a tandem system, being fed into a GMM-HMM scheme. The decision fusion acts after this point by combining the Viterbi path log-likelihoods. The results show that the complementary information contained in recordings from different view angles improves the results significantly. For example, the sentence correctness on the test set is increased from 76 83

READ FULL TEXT

page 1

page 2

page 3

page 4

research
10/19/2017

Visual Speech Recognition Using PCA Networks and LSTMs in a Tandem GMM-HMM System

Automatic visual speech recognition is an interesting problem in pattern...
research
06/05/2019

Investigating the Lombard Effect Influence on End-to-End Audio-Visual Speech Recognition

Several audio-visual speech recognition models have been recently propos...
research
07/04/2014

Recognition of Isolated Words using Zernike and MFCC features for Audio Visual Speech Recognition

Automatic Speech Recognition (ASR) by machine is an attractive research ...
research
05/12/2020

Discriminative Multi-modality Speech Recognition

Vision is often used as a complementary modality for audio speech recogn...
research
01/22/2016

Manifold-Kernels Comparison in MKPLS for Visual Speech Recognition

Speech recognition is a challenging problem. Due to the acoustic limitat...
research
06/17/2019

On combining features for single-channel robust speech recognition in reverberant environments

This paper addresses the combination of complementary parallel speech re...
research
08/02/2016

Efficient Segmental Cascades for Speech Recognition

Discriminative segmental models offer a way to incorporate flexible feat...

Please sign up or login with your details

Forgot password? Click here to reset