Image segmentation is one of the fundamental techniques in image analysis. One group of segmentation techniques is based on clustering principles, where association of image pixels is based on a similarity criterion. Conventional clustering algorithms, such as k-means, can be used for this purpose but have several drawbacks including dependence on initialisation conditions and a higher likelihood of converging to local rather than global optima. In this paper, we propose a clustering-based image segmentation method that is based on the human mental search (HMS) algorithm. HMS is a recent metaheuristic algorithm based on the manner of searching in the space of online auctions. In HMS, each candidate solution is called a bid, and the algorith...
Many computational problems are considered to be hard due to their combinatorial nature. In such ca...
Clustering using fuzzy C-means (FCM) is a soft segmentation method that has been extensively investi...
Clustering (or cluster analysis) aims to organize a collection of data items into clusters, such tha...
Clustering is a commonly employed approach to image segmentation. To overcome the problems of conven...
In this article, quantum inspired incarnations of two swarm based meta-heuristic algorithms, namely,...
Clustering is the process of subdividing an input data set into a desired number of subgroups so tha...
[[abstract]]Clustering analysis is applied generally to pattern recognition, color quantization and ...
Image segmentation is an important problem that has received significant attention in the literature...
Abstract—Differential evolution (DE) has emerged as one of the fast, robust, and efficient global se...
Clustering plays important role in many areas such as medical applications, pattern recognition, ima...
In this paper, a clustering based color image segmentation technique is proposed and the clustering ...
Data clustering is collecting the objects that have similar characteristic together for processing p...
[[abstract]]Clustering analysis is applied generally to Pattern Recognition, Color Quantization and ...
Clustering is concerned with partitioning a data set into homogeneous groups. One of the most popula...
Evolutionary computation tools are able to process real valued numerical sets in order to extract su...
Many computational problems are considered to be hard due to their combinatorial nature. In such ca...
Clustering using fuzzy C-means (FCM) is a soft segmentation method that has been extensively investi...
Clustering (or cluster analysis) aims to organize a collection of data items into clusters, such tha...
Clustering is a commonly employed approach to image segmentation. To overcome the problems of conven...
In this article, quantum inspired incarnations of two swarm based meta-heuristic algorithms, namely,...
Clustering is the process of subdividing an input data set into a desired number of subgroups so tha...
[[abstract]]Clustering analysis is applied generally to pattern recognition, color quantization and ...
Image segmentation is an important problem that has received significant attention in the literature...
Abstract—Differential evolution (DE) has emerged as one of the fast, robust, and efficient global se...
Clustering plays important role in many areas such as medical applications, pattern recognition, ima...
In this paper, a clustering based color image segmentation technique is proposed and the clustering ...
Data clustering is collecting the objects that have similar characteristic together for processing p...
[[abstract]]Clustering analysis is applied generally to Pattern Recognition, Color Quantization and ...
Clustering is concerned with partitioning a data set into homogeneous groups. One of the most popula...
Evolutionary computation tools are able to process real valued numerical sets in order to extract su...
Many computational problems are considered to be hard due to their combinatorial nature. In such ca...
Clustering using fuzzy C-means (FCM) is a soft segmentation method that has been extensively investi...
Clustering (or cluster analysis) aims to organize a collection of data items into clusters, such tha...