|
Statistics Papers
Statistics Website
Policies
Search Statistics
Submit a Paper
Notify me of new papers
|
 |

A High Resolution Grammatical Model for Face Representation and Sketching
Zijian Xu, Department of Statistics, UCLA
Hong Chen, Department of Statistics, UCLA
Song-Chun Zhu, Department of Statistics, UCLA
ABSTRACT: In this paper we present a generative, high resolution face representation which extends the well-
known active appearance model (AAM)[5], [6], [7] with two additional layers. (i) One layer refines
the global AAM (PCA) model with a dictionary of learned face components to account for the shape
and intensity variabilities of eyes, eyebrows, nose and mouth. (ii) The other layer divides the face skin
into 9 zones with a learned dictionary of sketch primitives to represent skin marks and wrinkles. This
model is no longer of fixed dimensions and is flexible for it can select the diverse representations in
the dictionaries of face components and skin features depending on the complexity of the face. The
selection is modulated by the grammatical rules through hidden ”switch” variables. Our comparison
experiments demonstrate that this model can achieve nearly lossless coding of face at high resolution
(256
× 256 pixels) with low bits. We also show that the generative model can easily generate cartoon
sketches by changing the rendering dictionary. Our face model is aimed at a number of applications
including cartoon sketch in non-photorealistic rendering, super-resolution in image processing, and low
bit face communication in wireless platforms.
SUGGESTED CITATION: Zijian Xu, Hong Chen, and Song-Chun Zhu,
"A High Resolution Grammatical Model for Face Representation and Sketching"
(April 1, 2005).
Department of Statistics, UCLA.
Department of Statistics Papers.
Paper 2005040103.
http://repositories.cdlib.org/uclastat/papers/2005040103
|