Combining Local Binary Pattern and Local Phase Quantization for Face Recognition

Author(s):  
Baohua Yuan ◽  
Honggen Cao ◽  
Jiuliang Chu
2020 ◽  
pp. 004051752096140
Author(s):  
Li Yuan ◽  
Xue Gong ◽  
Junping Liu ◽  
Yali Yang ◽  
Muli Liu

Colored spun fabrics are difficult to accurately characterize with a local binary pattern due to texture anisotropy caused by the uneven distribution of dyed fibers. In this paper, we present a texture representation model based on spatial and frequency characteristics. The proposed model takes advantage of the local binary pattern and local phase quantization to extract the texture of woven fabric. Then, the two features are connected in series, and the features of dimension reduction by principal component analysis are used to represent the texture of the fabric image. Finally, the hierarchical hybrid classifier is applied to classify the fabric structure. The experimental results show that the local phase quantization feature is robust to the fuzzy transformation and the texture representation model has a stronger ability of texture description than the single local binary pattern feature, with the average classification accuracy of 97.59% on 336 samples. In addition, compared with the deep learning algorithm, the texture representation algorithm can ensure a high classification accuracy.


2018 ◽  
Vol 2018 ◽  
pp. 1-6 ◽  
Author(s):  
Chunyu Zhang ◽  
Hui Ding ◽  
Yuanyuan Shang ◽  
Zhuhong Shao ◽  
Xiaoyan Fu

For gender classification, we present a new approach based on Multiscale facial fusion feature (MS3F) to classify gender from face images. Fusion feature is extracted by the combination of Local Binary Pattern (LBP) and Local Phase Quantization (LPQ) descriptors, and a multiscale feature is generated through Multiblock (MB) and Multilevel (ML) methods. Support Vector Machine (SVM) is employed as the classifier to conduct gender classification. All the experiments are performed based on the Images of Groups (IoG) dataset. The results demonstrate that the application of Multiscale fusion feature greatly improves the performance of gender classification, and our approach outperforms the state-of-the-art techniques.


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