A distribution independence based method for 3D face shape decomposition

Author(s):  
Cuican Yu ◽  
Zihui Zhang ◽  
Huibin Li ◽  
Jian Sun ◽  
Zongben Xu
2009 ◽  
Vol 2009 ◽  
pp. 1-15 ◽  
Author(s):  
Yu Zhang ◽  
Edmond C. Prakash

This paper presents a new anthropometrics-based method for generating realistic, controllable face models. Our method establishes an intuitive and efficient interface to facilitate procedures for interactive 3D face modeling and editing. It takes 3D face scans as examples in order to exploit the variations presented in the real faces of individuals. The system automatically learns a model prior from the data-sets of example meshes of facial features using principal component analysis (PCA) and uses it to regulate the naturalness of synthesized faces. For each facial feature, we compute a set of anthropometric measurements to parameterize the example meshes into a measurement space. Using PCA coefficients as a compact shape representation, we formulate the face modeling problem in a scattered data interpolation framework which takes the user-specified anthropometric parameters as input. Solving the interpolation problem in a reduced subspace allows us to generate a natural face shape that satisfies the user-specified constraints. At runtime, the new face shape can be generated at an interactive rate. We demonstrate the utility of our method by presenting several applications, including analysis of facial features of subjects in different race groups, facial feature transfer, and adapting face models to a particular population group.


Author(s):  
Akinobu Maejima ◽  
Takaaki Kuratate ◽  
Brennand Pierce ◽  
Shigeo Morishima ◽  
Gordon Cheng
Keyword(s):  
3D Face ◽  

Author(s):  
Xuhui Jia ◽  
Heng Yang ◽  
Xiaolong Zhu ◽  
Zhanghui Kuang ◽  
Yifeng Niu ◽  
...  
Keyword(s):  
3D Face ◽  

2019 ◽  
Author(s):  
Vanessa Fasolt ◽  
Iris Jasmin Holzleitner ◽  
Anthony J Lee ◽  
Kieran J. O'Shea ◽  
Lisa Marie DeBruine

Previous research has established that humans are able to detect kinship among strangers from facial images alone. The current study investigated what facial information is used for making those kinship judgments, specifically the contribution of face shape and surface reflectance information (e.g., skin texture, tone, eye and eyebrow colour). Using 3D facial images, 195 participants were asked to judge the relatedness of one hundred child pairs, half of which were related and half of which were unrelated. Participants were randomly assigned to judge one of three stimulus versions: face images with both surface reflectance and shape information present (reflectance and shape version), face images with shape information removed but surface reflectance present (reflectance version) or face images with surface reflectance information removed but shape present (shape version). Using binomial logistic mixed models, we found that participants were able to detect relatedness at levels above chance for all three stimulus versions. Overall, both individual shape and surface reflectance information contribute to kinship detection, and both cues are optimally combined when presented together.


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