Waito Chiu(Xi'an Jiaotong-Liverpool University), Yan Xu(Xi'an Jiaotong-Liverpool University), Andrew Abel(Xi'an Jiaotong-Liverpool University), Chun Lin(Anhui University) and Zhengzheng Tu(Anhui University)
Abstract:
The Lombard Effect shows that speakers increase their vocal effort
in the presence of noise, and research into acoustic speech,
has demonstrated varying effects, depending on the noise level
and speaker, with several differences, including timing and vocal
effort. Research also identified several differences, including
between gender, and noise type. However, most research
has focused on the audio domain, with very limited focus on the
visual effect. This paper presents a detailed study of the visual
Lombard Effect, using a pilot Lombard Speech corpus developed
for our needs, and a recently developed Gabor based lip
feature extraction approach. Using Kernel Density Estimation,
we identify clear differences between genders, and also show
that speakers handle different noise types differently.