TY - JOUR
T1 - Deep Global Multiple-Scale and Local Patches Attention Dual-Branch Network for Pose-Invariant Facial Expression Recognition
AU - Liu, Chaoji
AU - Liu, Xingqiao
AU - Chen, Chong
AU - Zhou, Kang
N1 - Publisher Copyright:
© 2023 Tech Science Press. All rights reserved.
PY - 2023
Y1 - 2023
N2 - Pose-invariant facial expression recognition (FER) is an active but challenging research topic in computer vision. Especially with the involvement of diverse observation angles, FER makes the training parameter models inconsistent from one view to another. This study develops a deep global multiple-scale and local patches attention (GMS-LPA) dual-branch network for pose-invariant FER to weaken the influence of pose variation and self-occlusion on recognition accuracy. In this research, the designed GMS-LPA network contains four main parts, i.e., the feature extraction module, the global multiple-scale (GMS) module, the local patches attention (LPA) module, and the model-level fusion model. The feature extraction module is designed to extract and normalize texture information to the same size. The GMS model can extract deep global features with different receptive fields, releasing the sensitivity of deeper convolution layers to pose-variant and self-occlusion. The LPA module is built to force the network to focus on local salient features, which can lower the effect of pose variation and self-occlusion on recognition results. Subsequently, the extracted features are fused with a model-level strategy to improve recognition accuracy. Extensive experiments were conducted on four public databases, and the recognition results demonstrated the feasibility and validity of the proposed methods.
AB - Pose-invariant facial expression recognition (FER) is an active but challenging research topic in computer vision. Especially with the involvement of diverse observation angles, FER makes the training parameter models inconsistent from one view to another. This study develops a deep global multiple-scale and local patches attention (GMS-LPA) dual-branch network for pose-invariant FER to weaken the influence of pose variation and self-occlusion on recognition accuracy. In this research, the designed GMS-LPA network contains four main parts, i.e., the feature extraction module, the global multiple-scale (GMS) module, the local patches attention (LPA) module, and the model-level fusion model. The feature extraction module is designed to extract and normalize texture information to the same size. The GMS model can extract deep global features with different receptive fields, releasing the sensitivity of deeper convolution layers to pose-variant and self-occlusion. The LPA module is built to force the network to focus on local salient features, which can lower the effect of pose variation and self-occlusion on recognition results. Subsequently, the extracted features are fused with a model-level strategy to improve recognition accuracy. Extensive experiments were conducted on four public databases, and the recognition results demonstrated the feasibility and validity of the proposed methods.
KW - Pose-invariant FER
KW - global multiple-scale (GMS)
KW - local patches attention (LPA)
KW - model-level fusion
UR - https://www.scopus.com/pages/publications/85191356225
U2 - 10.32604/cmes.2023.031040
DO - 10.32604/cmes.2023.031040
M3 - Article
AN - SCOPUS:85191356225
SN - 1526-1492
VL - 139
SP - 405
EP - 440
JO - CMES - Computer Modeling in Engineering and Sciences
JF - CMES - Computer Modeling in Engineering and Sciences
IS - 1
ER -