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Content-based image retrieval

About: Content-based image retrieval is a research topic. Over the lifetime, 6916 publications have been published within this topic receiving 150696 citations. The topic is also known as: CBIR.


Papers
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Journal ArticleDOI
TL;DR: This work presents an efficient color indexing scheme for similarity-based retrieval which has a search time that increases logarithmically with the database size.
Abstract: Content based image retrieval is an active area of research. Many approaches have been proposed to retrieve images based on matching of some features derived from the image content. Color is an important feature of image content. The problem with many traditional matching-based retrieval methods is that the search time for retrieving similar images for a given query image increases linearly with the size of the image database. We present an efficient color indexing scheme for similarity-based retrieval which has a search time that increases logarithmically with the database size.

74 citations

Journal ArticleDOI
TL;DR: The authors reviewed the past development and the present state of medical image retrieval systems including text-based and content-based systems to provide a more effective image retrieval service.
Abstract: With the widespread dissemination of picture archiving and communication systems (PACSs) in hospitals, the amount of imaging data is rapidly increasing Effective image retrieval systems are required to manage these complex and large image databases The authors reviewed the past development and the present state of medical image retrieval systems including text-based and content-based systems In order to provide a more effective image retrieval service, the intelligent content-based retrieval systems combined with semantic systems are required

74 citations

Proceedings ArticleDOI
10 Nov 2005
TL;DR: A new method for automated large scale gathering of Web images relevant to specified concepts to build a knowledge base associated with as many concepts as possible for large scale object recognition studies and supporting the building of more accurate text-based indexes for Web images.
Abstract: We propose a new method for automated large scale gathering of Web images relevant to specified concepts. Our main goal is to build a knowledge base associated with as many concepts as possible for large scale object recognition studies. A second goal is supporting the building of more accurate text-based indexes for Web images. In our method, good quality candidate sets of images for each keyword are gathered as a function of analysis of the surrounding HTML text. The gathered images are then segmented into regions, and a model for the probability distribution of regions for the concept is computed using an iterative algorithm based on the previous work on statistical image annotation. The learned model is then applied to identify which images are visually relevant to the concept implied by the keyword. Implicitly, which regions or the images are relevant is also determined. Our experiments reveal that the new method performs much better than Google Image Search and a simple method based on more standard content based image retrieval methods.

74 citations

Journal ArticleDOI
TL;DR: The automatic annotation task of the 2005 CLEF cross-language image retrieval campaign (ImageCLEF) is described in this paper, where the authors focus on the database used, the task setup, and the plans for further medical image annotation tasks.
Abstract: In this paper, the automatic annotation task of the 2005 CLEF cross-language image retrieval campaign (ImageCLEF) is described. This paper focuses on the database used, the task setup, and the plans for further medical image annotation tasks in the context of ImageCLEF. Furthermore, a short summary of the results of 2005 is given. The automatic annotation task was added to ImageCLEF in 2005 and provides the first international evaluation of state-of-the-art methods for completely automatic annotation of medical images based on visual properties. The aim of this task is to explore and promote the use of automatic annotation techniques to allow for extracting semantic information from little-annotated medical images. A database of 10.000 images was established and annotated by experienced physicians resulting in 57 classes, each with at least 10 images. Detailed analysis is done regarding the (i) image representation, (ii) classification method, and (iii) learning method. Based on the strong participation of the 2005 campain, future benchmarks are planned.

73 citations

Journal ArticleDOI
TL;DR: An approach grouping similar images into clusters that are sparsely represented by the dictionaries and learning dictionaries simultaneously via K-SVD is proposed to group large medical databases to demonstrate the efficacy of the proposed method in the retrieval of medical images.

73 citations


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Performance
Metrics
No. of papers in the topic in previous years
YearPapers
202358
2022141
2021180
2020163
2019224
2018270