Sciweavers

ICMCS
2005
IEEE

Partial Linear Regression for Audio-Driven Talking Head Application

14 years 5 months ago
Partial Linear Regression for Audio-Driven Talking Head Application
Virtual avatars in many applications are constructed manually or by a single speech-driven model which needs a lot of training data and long training time. It’s an essential problem to build up a user-dependent model more efficiently. In this paper, a new adaptation method, called the partial linear regression (PLR), is proposed and adopted in an audio-driven talking head application. This method allows users to adapt the partial parameters from the available adaptive data while keeping the others unchanged. In our experiments, the PLR algorithm can retrench the hours of time spent on retraining a new userdependent model, and adjust the user-independent model to a more personalized one. The animated results with adapted models were 36% closer to the user-dependent model than using the pre-trained user-independent model.
Chao-Kuei Hsieh, Yung-Chang Chen
Added 24 Jun 2010
Updated 24 Jun 2010
Type Conference
Year 2005
Where ICMCS
Authors Chao-Kuei Hsieh, Yung-Chang Chen
Comments (0)