In this paper, we present a methodology on how to measure the visual similarity between a query image and hierarchically represented image databases for content based image retrieval. The images in database are hierarchically summarized and classified by recovered extrinsic camera parameters as well as constrained agglomerative clustering methods. The constrained agglomerative hierarchical image clustering method whose strategy is to extract a multi-level partitioning and grouping of multiple images is used for balancing the hierarchical trees and summarization. The visual codebooks which are hierarchically quantized in the clusters are used to calculate the similarity measure with a query image's visual features. Our proposed visual simila...
Image retrieval algorithms are generally based on the assumption that visually similar images are lo...
In content-based retrieval systems, the goal of similarity search is to identify the k most similar ...
In this paper our goal is to employ human judgments of image similarity to improve the organization ...
In this paper we present a hierarchical image representation methodology by clustering images with 3...
In this paper we present a hierarchical image representation methodology by clustering images with 3...
In this paper we present a hierarchical image representation methodology by clustering images with 3...
[[abstract]]Content-based image retrieval has become more desirable for developing large image datab...
Abstract The goal of this paper is to describe an efficient procedure for color-based image retrieva...
In this paper we present scalable algorithms for image retrieval based on color. Our solution for sc...
This paper describes a two-stage statistical approach supporting content-based search in image datab...
A new algorithm is presented which approximates the perceived visual similarity between images. The ...
Abstract—In image retrieval algorithms, retrieval is according to feature similarities with respect ...
This paper presents an efficient content-based image retrieval system that captures users ’ semantic...
In a typical image retrieval system, all visual features of query images are used to determine image...
In this work, four major components of image database have been examined: image similarity, search-b...
Image retrieval algorithms are generally based on the assumption that visually similar images are lo...
In content-based retrieval systems, the goal of similarity search is to identify the k most similar ...
In this paper our goal is to employ human judgments of image similarity to improve the organization ...
In this paper we present a hierarchical image representation methodology by clustering images with 3...
In this paper we present a hierarchical image representation methodology by clustering images with 3...
In this paper we present a hierarchical image representation methodology by clustering images with 3...
[[abstract]]Content-based image retrieval has become more desirable for developing large image datab...
Abstract The goal of this paper is to describe an efficient procedure for color-based image retrieva...
In this paper we present scalable algorithms for image retrieval based on color. Our solution for sc...
This paper describes a two-stage statistical approach supporting content-based search in image datab...
A new algorithm is presented which approximates the perceived visual similarity between images. The ...
Abstract—In image retrieval algorithms, retrieval is according to feature similarities with respect ...
This paper presents an efficient content-based image retrieval system that captures users ’ semantic...
In a typical image retrieval system, all visual features of query images are used to determine image...
In this work, four major components of image database have been examined: image similarity, search-b...
Image retrieval algorithms are generally based on the assumption that visually similar images are lo...
In content-based retrieval systems, the goal of similarity search is to identify the k most similar ...
In this paper our goal is to employ human judgments of image similarity to improve the organization ...