In this article, quantum inspired incarnations of two swarm based meta-heuristic algorithms, namely, Crow Search Optimization Algorithm and Intelligent Crow Search Optimization Algorithm have been proposed for automatic clustering of colour images. The performance and effectiveness of the proposed algorithms have been judged by experimenting on 15 Berkeley images and five publicly available real life images of different sizes. The validity of the proposed algorithms has been justified with the help of four different cluster validity indices, namely, Pakhira Bandyopadhyay Maulik, I-index, Silhouette and CS-measure. Moreover, Sobol's sensitivity analysis has been performed to tune the parameters of the proposed algorithms. The experimental re...
Clustering (or cluster analysis) aims to organize a collection of data items into clusters, such tha...
Clustering is one of most commonly used approach in the literature of Pattern recognition and Machin...
Image clustering, defined as the task of finding natural grouping of similar items, is one of the ke...
This work explores the effectiveness and robustness of quantum computing by conjoining the principle...
This paper is intended to identify the optimal number of clusters automatically from an image datase...
This paper proposes a novel genetic clustering algorithm, called a real-valued quantum genetic nichi...
This paper presents a novel image segmentation algorithm, which uses a biologically inspired paradig...
Image segmentation is one of the fundamental techniques in image analysis. One group of segmentation...
In this paper, a clustering based color image segmentation technique is proposed and the clustering ...
[[abstract]]Clustering analysis is applied generally to pattern recognition, color quantization and ...
Color image segmentation is a fundamental challenge in the field of image analysis and pattern recog...
Traditional K-means clustering algorithms have the drawback of getting stuck at local optima that de...
[[abstract]]Clustering analysis is applied generally to Pattern Recognition, Color Quantization and ...
In order to improve and accelerate the speed of image integration, an optimal and intelligent method...
Clustering is a commonly employed approach to image segmentation. To overcome the problems of conven...
Clustering (or cluster analysis) aims to organize a collection of data items into clusters, such tha...
Clustering is one of most commonly used approach in the literature of Pattern recognition and Machin...
Image clustering, defined as the task of finding natural grouping of similar items, is one of the ke...
This work explores the effectiveness and robustness of quantum computing by conjoining the principle...
This paper is intended to identify the optimal number of clusters automatically from an image datase...
This paper proposes a novel genetic clustering algorithm, called a real-valued quantum genetic nichi...
This paper presents a novel image segmentation algorithm, which uses a biologically inspired paradig...
Image segmentation is one of the fundamental techniques in image analysis. One group of segmentation...
In this paper, a clustering based color image segmentation technique is proposed and the clustering ...
[[abstract]]Clustering analysis is applied generally to pattern recognition, color quantization and ...
Color image segmentation is a fundamental challenge in the field of image analysis and pattern recog...
Traditional K-means clustering algorithms have the drawback of getting stuck at local optima that de...
[[abstract]]Clustering analysis is applied generally to Pattern Recognition, Color Quantization and ...
In order to improve and accelerate the speed of image integration, an optimal and intelligent method...
Clustering is a commonly employed approach to image segmentation. To overcome the problems of conven...
Clustering (or cluster analysis) aims to organize a collection of data items into clusters, such tha...
Clustering is one of most commonly used approach in the literature of Pattern recognition and Machin...
Image clustering, defined as the task of finding natural grouping of similar items, is one of the ke...