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ID 116334
Title Alternative
FER Based on Fusion Features of CS-LSMP
Author
Hu, Min Hefei University of Technology
Yang, Chunjian Hefei University of Technology
Zheng, Yaqin Hefei University of Technology
Wang, Xiaohua Hefei University of Technology
He, Lei Hefei University of Technology
Keywords
Facial expression recognition
center-symmetric local signal magnitude pattern
local representation
feature fusion
Content Type
Journal Article
Description
Local feature descriptors play a fundamental and important role in facial expression recognition. This paper presents a new descriptor, Center-Symmetric Local Signal Magnitude Pattern (CS-LSMP), which is used for extracting texture features from facial images. CS-LSMP operator takes signal and magnitude information of local regions into account compared to conventional LBP-based operators. Additionally, due to the limitation of single feature extraction method and in order to make full advantages of different features, this paper employs CS-LSMP operator to extract features from Orientational Magnitude Feature Maps (OMFMs), Positive-and-Negative Magnitude Feature Maps (PNMFMs), Gabor Feature Maps (GFMs) and facial patches (eyebrows-eyes, mouths) for obtaining fused features. Unlike HOG, which only retains horizontal and vertical magnitudes, our work generates Orientational Magnitude Feature Maps (OMFMs) by expanding multi-orientations. This paper build two distinct feature maps by dividing local magnitudes into two groups, i.e., positive and negative magnitude feature maps. The generated Gabor Feature Maps (GFMs) are also grouped to reduce the computational complexity. Experiments on the JAFFE and CK+ facial expression datasets showed that the proposed framework achieved significant improvement and outperformed some state-of-the-art methods.
Journal Title
IEEE Access
ISSN
21693536
Publisher
IEEE
Volume
7
Start Page
118435
End Page
118445
Published Date
2019-08-22
Rights
This work is licensed under a Creative Commons Attribution 4.0 License. For more information, see http://creativecommons.org/licenses/by/4.0/
EDB ID
DOI (Published Version)
URL ( Publisher's Version )
FullText File
language
eng
TextVersion
Publisher
departments
Science and Technology