Image Retrieval using Multiscalar Texture Co-occurrence Matrix

2014 ◽  
Vol 668-669 ◽  
pp. 1041-1044
Author(s):  
Lin Lin Song ◽  
Qing Hu Wang ◽  
Zhi Li Pei

This paper firstly studies the texture features. We construct a gray-difference primitive co-occurrence matrix to extract texture features by combining statistical methods with structural ones. The experiment results show that the features of the gray-difference primitive co-occurrence matrix are more delicate than the traditional gray co-occurrence matrix.


Author(s):  
Min Hyuk Chang ◽  
Jae Young Pyun ◽  
Muhammad Bilal Ahmad ◽  
Jong Hoon Chun ◽  
Jong An Park

2008 ◽  
Vol 41 (12) ◽  
pp. 3521-3527 ◽  
Author(s):  
Guang-Hai Liu ◽  
Jing-Yu Yang

Author(s):  
Beizhan Wang ◽  
Qingqi Hong ◽  
Cuihua Li ◽  
Qingshan Jiang ◽  
Liang Si

Author(s):  
Kurban Ubul ◽  
Nurbuya Yadikar ◽  
Ayxamgul Amat ◽  
Alimjan Aysa ◽  
Tuergen Yibulayin

This paper proposes a content image retrieval using the texture and the color feature of the images. Although for extraction of texture feature, the “gray level co-occurrence matrix (GLCM) algorithm” is used and for extracting color feature the color histogram is used. The presented system is tested on the WANG database that contains a thousand color images with ten different classes by the help of three various type of distances


2020 ◽  
Vol 19 (3) ◽  
pp. 437-458 ◽  
Author(s):  
Abdullah Mohammed Rashid ◽  
Ali Adil Yassin ◽  
Ahmed Adel Abdel Wahed ◽  
Abdulla Jassim Yassin

Content based image retrieval (CBIR) models become popular for retrieving images connected to the query image (QI) from massive dataset. Feature extraction process in CBIR plays a vital role as it affects the system’s performance. This paper is focused on the design of deep learning (DL) model for feature extraction based CBIR model. The presented model utilizes a ResNet50 with co-occurrence matrix (RCM) model for CBIR. Here, the ResNet50 model is applied for feature extraction of the QI. Then, the extracted features are placed in the feature repository as a feature vector. The RCM model computes the feature vector for every input image and compares it with the features present in the repository. Then, the images with maximum resemblance will be retrieved from the dataset. In addition, the resemblance between the feature vectors is determined by the use of co-occurrence matrix subtraction process. Besides, structural similarity (SSIM) measure is applied for the validation of the similarity among the images. A comprehensive results analysis takes place by the use of Corel 10K dataset. The experimental outcome indicated the superiority of the RCM model with respect to precision, recall and SSIM.


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