TY - JOUR
T1 - An optimal transportation-based recognition algorithm for 3D facial expressions
AU - Li, Tiexiang
AU - Chuang, Pei Sheng
AU - Yueh, Mei Heng
N1 - Publisher Copyright:
© 2022, International Press, Inc.. All rights reserved.
PY - 2022
Y1 - 2022
N2 - Facial expression recognition (FER) is an active topic that has many applications. The development of effective algorithms for FER has been a competitive research field in the last two decades. In this paper, we propose a fully automatic 3D FER method based on the sparse approximation of 2D feature images. For a prescribed feature defined on the 3D facial surface, we apply a parameterization that not only maps the facial surface onto the unit disk but also locally preserves the feature. To ensure the uniqueness of the solution, some aligning constraints are further taken into account while computing the desired parameterization. The facial surface associated with the feature is then converted into the 2D image of the parameter domain. To recognize the expression of a test facial image, we apply an existingCgd480QlWXXZyi0YVgP+jyE2D expression recognition model, which is built upon sparse representation. Numerical experiments indicate that the accuracy of the proposed FER algorithm reaches 71.42% on a benchmark facial expression database, which is promising for practical applications.
AB - Facial expression recognition (FER) is an active topic that has many applications. The development of effective algorithms for FER has been a competitive research field in the last two decades. In this paper, we propose a fully automatic 3D FER method based on the sparse approximation of 2D feature images. For a prescribed feature defined on the 3D facial surface, we apply a parameterization that not only maps the facial surface onto the unit disk but also locally preserves the feature. To ensure the uniqueness of the solution, some aligning constraints are further taken into account while computing the desired parameterization. The facial surface associated with the feature is then converted into the 2D image of the parameter domain. To recognize the expression of a test facial image, we apply an existingCgd480QlWXXZyi0YVgP+jyE2D expression recognition model, which is built upon sparse representation. Numerical experiments indicate that the accuracy of the proposed FER algorithm reaches 71.42% on a benchmark facial expression database, which is promising for practical applications.
KW - Facial expression recognition
KW - optimal mass transportation
KW - projected gradient descent method
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U2 - 10.4310/AMSA.2022.v7.n1.a3
DO - 10.4310/AMSA.2022.v7.n1.a3
M3 - Article
AN - SCOPUS:85209212438
SN - 2380-288X
VL - 7
SP - 49
EP - 96
JO - Annals of Mathematical Sciences and Applications
JF - Annals of Mathematical Sciences and Applications
IS - 1
ER -