A Comparison of Image Processing Techniques for Visual Speech Recognition Applications
Gray, Michael S., Sejnowski, Terrence J., Movellan, Javier R.
–Neural Information Processing Systems
These methods are compared on their performance on a visual speech recognition task. While the representations developed are specific to visual speech recognition, the methods themselvesare general purpose and applicable to other tasks. Our focus is on low-level data-driven methods based on the statistical properties of relatively untouched images, as opposed to approaches that work with contours or highly processed versions of the image. Padgett [8] and Bartlett [1] systematically studied statistical methods for developing representations on expression recognition tasks. They found that local wavelet-like representations consistently outperformed global representations, like eigenfaces. In this paper we also compare local versus global representations.
Neural Information Processing Systems
Dec-31-2001