Cluster analysis has been identified as a core task in data mining. What constitutes a cluster, or a good clustering, may depend on the background of researchers and applications. This paper proposes two optimization criteria of abstract degree and fidelity in the field of image abstract. To satisfy the fidelity criteria, a novel clustering algorithm named Global Optimized Color-based DBSCAN Clustering (GOC-DBSCAN) is provided. Also, non-optimized local color information based version of GOC-DBSCAN, called HSV-DBSCAN, is given. Both of them are based on HSV color space. Clusters of GOC-DBSCAN are analyzed to find the factors that impact on the performance of both abstract degree and fidelity. Examples show generally the greater the abstract...
Abstract—This paper presents an enhancement of the performance of image clustering. K-Means has bee...
Clustering has been applied in many areas, including signal and image processing. This chapter revie...
Clustering has been applied in many areas, including signal and image processing. This chapter revie...
Image clustering is a process of grouping images based on their similarity. The image clustering usu...
In this paper we present scalable algorithms for image retrieval based on color. Our solution for sc...
Abstract:- Colors in an image provides tremendous amount of information. Using this color informatio...
In image clustering, it is desired that pixels assigned in the same class must be the same or simila...
Image clustering is a fundamental problem in computer vision domains. In this survey, we provide a c...
Density-based clustering algorithms have recently gained popularity in the data mining field due to ...
Abstract- Clustering is the process of organizing similar objects into the same clusters and dissimi...
Due to the character of the original source materials and the nature of batch digitization, quality ...
This paper details the implementation of three traditional clustering techniques (K-Means clusterin...
This paper details the implementation of three traditional clustering techniques (K-Means clusterin...
Color image has the potential to convey more information than monochrome or gray level images, RGB c...
There exists a wide range of problems which requires the automatic classification of a data set. In ...
Abstract—This paper presents an enhancement of the performance of image clustering. K-Means has bee...
Clustering has been applied in many areas, including signal and image processing. This chapter revie...
Clustering has been applied in many areas, including signal and image processing. This chapter revie...
Image clustering is a process of grouping images based on their similarity. The image clustering usu...
In this paper we present scalable algorithms for image retrieval based on color. Our solution for sc...
Abstract:- Colors in an image provides tremendous amount of information. Using this color informatio...
In image clustering, it is desired that pixels assigned in the same class must be the same or simila...
Image clustering is a fundamental problem in computer vision domains. In this survey, we provide a c...
Density-based clustering algorithms have recently gained popularity in the data mining field due to ...
Abstract- Clustering is the process of organizing similar objects into the same clusters and dissimi...
Due to the character of the original source materials and the nature of batch digitization, quality ...
This paper details the implementation of three traditional clustering techniques (K-Means clusterin...
This paper details the implementation of three traditional clustering techniques (K-Means clusterin...
Color image has the potential to convey more information than monochrome or gray level images, RGB c...
There exists a wide range of problems which requires the automatic classification of a data set. In ...
Abstract—This paper presents an enhancement of the performance of image clustering. K-Means has bee...
Clustering has been applied in many areas, including signal and image processing. This chapter revie...
Clustering has been applied in many areas, including signal and image processing. This chapter revie...