A challenging problem of computer vision is scene classification. An efficient method for classifying natural scenes from the Oliva – Torralba dataset is proposed. The method is based on K-Means clustering algorithm followed by a novel two phase voting method for classification which is the main contribution of this paper. Two distinct feature sets have been used. The first feature set is used for grouping perceptually similar images into two clusters based on K-Means algorithm. The second feature set is selected based on observed visual attributes of images in these two clusters. Classification is achieved by a novel voting method which firstly assigns test image to the most similar cluster. Each cluster contains images from four categorie...
In the cluster analysis most of the existing clustering techniques for clustering, accept the number...
Within this thesis an algorithm for object recognition called Cluster Matching has been developed, i...
Clustering is a process that groups data with respect to data similarity so that similar data take p...
In this paper, the problem of extracting and grouping image features from complex scenes is solved b...
Image segmentation is the classification of an image into different groups. Numerous algorithms usin...
The amount of information produced every year is rapidly growing due to many factor among all media,...
Abstract: Problem statement: This study deals with object recognition based on image segmentation an...
Abstract-The problem of segmenting images of objects with smooth surfaces is considered. The algorit...
In this paper, we propose a scene clustering algorithm which uses straight line features. Scenes are...
ABSTRACT: Image clustering is a process of dividing an image into different meaningful parts base on...
Image clustering is a fundamental problem in computer vision domains. In this survey, we provide a c...
Abstract—In this paper, we presents a literature survey on the various approaches used for classifyi...
Pattern recognition is an emerging research area that studies the operation and design of systems th...
Abstract:- Image segmentation is used to recognizing some objects or something that is more meaningf...
<p>Image processing is an important research area in computer vision. Image segmentation plays the v...
In the cluster analysis most of the existing clustering techniques for clustering, accept the number...
Within this thesis an algorithm for object recognition called Cluster Matching has been developed, i...
Clustering is a process that groups data with respect to data similarity so that similar data take p...
In this paper, the problem of extracting and grouping image features from complex scenes is solved b...
Image segmentation is the classification of an image into different groups. Numerous algorithms usin...
The amount of information produced every year is rapidly growing due to many factor among all media,...
Abstract: Problem statement: This study deals with object recognition based on image segmentation an...
Abstract-The problem of segmenting images of objects with smooth surfaces is considered. The algorit...
In this paper, we propose a scene clustering algorithm which uses straight line features. Scenes are...
ABSTRACT: Image clustering is a process of dividing an image into different meaningful parts base on...
Image clustering is a fundamental problem in computer vision domains. In this survey, we provide a c...
Abstract—In this paper, we presents a literature survey on the various approaches used for classifyi...
Pattern recognition is an emerging research area that studies the operation and design of systems th...
Abstract:- Image segmentation is used to recognizing some objects or something that is more meaningf...
<p>Image processing is an important research area in computer vision. Image segmentation plays the v...
In the cluster analysis most of the existing clustering techniques for clustering, accept the number...
Within this thesis an algorithm for object recognition called Cluster Matching has been developed, i...
Clustering is a process that groups data with respect to data similarity so that similar data take p...