Genetic programming-based fusion of HOG and LBP features for fully automated texture classification

被引:0
作者
Mohamed Hazgui
Haythem Ghazouani
Walid Barhoumi
机构
[1] LR16ES06 Laboratoire de recherche en Informatique,Research Team on Intelligent Systems in Imaging and Artificial Vision (SIIVA)
[2] Modélisation et Traitement de l’Information et de la Connaissance (LIMTIC),Ecole Nationale d’Ingénieurs de Carthage
[3] Institut Supérieur d’Informatique,undefined
[4] Université de Tunis El Manar,undefined
[5] Université de Carthage,undefined
来源
The Visual Computer | 2022年 / 38卷
关键词
Genetic programming; Texture classification; Patch detection; Feature extraction; Feature fusion;
D O I
暂无
中图分类号
学科分类号
摘要
Classifying texture images relies heavily on the quality of the extracted features. However, producing a reliable set of features is a difficult task that often requires human intervention to select a set of prominent primitives. The process becomes more difficult when it comes to fuse low-level descriptors because of data redundancy and high dimensionality. To overcome these challenges, several approaches use machine learning to automate primitive detection and feature extraction while combining low-level descriptors. Nevertheless, most of these approaches performed the two processes separately while ignoring the correlation between them. In this paper, we propose a genetic programming (GP)-based method that combines the two well-known features of histograms of oriented gradients and local binary patterns. Indeed, a three-layer tree-based binary program is learned using genetic programming for each pair of classes. The three layers incorporate patch detection, feature fusion and classification in the GP optimization process. The feature fusion function is designed to handle different variations, notably illumination and rotation, while reducing dimensionality. The proposed method has been compared, using six challenging collections of images, with multiple domain-expert GP and non-GP methods for binary and multi-class classifications. Results show that the proposed method significantly outperforms or achieves similar performance to relevant methods from the state-of-the-art, even with a limited number of training instances.
引用
收藏
页码:457 / 476
页数:19
相关论文
共 102 条
[1]  
Huang Y(2020)Surface defect saliency of magnetic tile Vis. Comput. 36 85-96
[2]  
Qiu C(2019)Glioma extraction from MR images employing gradient based kernel selection graph cut technique Vis. Comput. 16 39-46
[3]  
Yuan K(2019)Pattern understanding and synthesis based on layout tree descriptor Vis. Comput. 29 641-662
[4]  
Dogra J(1983)Texture analysis of aerial photographs Pattern Recogn. 29 51-59
[5]  
Jain S(1996)Feature extraction methods for character recognition—a survey Pattern Recogn. 39 3634-3641
[6]  
Sood M(2019)Content-based image retrieval and feature extraction: a comprehensive review Math. Probl. Eng. 33 317-329
[7]  
Zhang X(1996)A comparative study of texture measures with classification based on featured distributions Pattern Recogn. 21 4492-4497
[8]  
Wang J(2012)Survey on LBP based texture descriptors for image classification Expert Syst. Appl. 24 971-987
[9]  
Lu G(2017)Joint-scale LBP: a new feature descriptor for texture classification Vis. Comput. 29 466-475
[10]  
Zhang X(2012)Completed local binary count for rotation invariant texture classification IEEE Trans. Image Process. 39 12291-12301