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What is Content-Based Image Retrieval (CBIR)

Handbook of Research on ICTs and Management Systems for Improving Efficiency in Healthcare and Social Care
Also known as Query By Image Content (QBIC), presents the technologies allowing to organize digital pictures by their visual features. They are based on the application of computer vision techniques to the image retrieval problem in large databases. Content-Based Image Retrieval (CBIR) consists of retrieving the most visually similar images to a given query image from a database of images.
Published in Chapter:
Using Global Shape Descriptors for Content Medical-Based Image Retrieval
Saïd Mahmoudi (University of Mons, Belgium) and Mohammed Benjelloun (University of Mons, Belgium)
DOI: 10.4018/978-1-4666-3990-4.ch025
Abstract
In this chapter, the authors propose a new method belonging to content medical-based image retrieval approaches and that uses a set of region-based shape descriptors. The search engine discussed in this work allows the classification of newly acquired medical images into some well known categories and also to get the images that are more similar to a query image. The final goal is to help the medical staff to annotate these images. To achieve this task, the authors propose a set of three descriptors that are based on: (1) Hu, (2) Zernike moments, and (3) Fourier transform-based signature, which are considered as region descriptors. The advantage of using this kind of global descriptor is that they are very fast, real time, and they do not need any segmentation step. The authors propose also a comparative study between these three approaches. The search engines are tested by using a database composed of 75 images that have different sizes, and that are classified into five classes. The results provided by the proposed retrieval approaches are given with high precision. The comparison between the three approaches is achieved using classification matrices and the recall/precision curves. The three proposed retrieval approaches produce accurate results in real time. This proves the advantage of using global shape features as a preliminary classification step in an automated aided diagnosis system.
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More Results
Using Global Shape Descriptors for Content Medical-Based Image Retrieval
Also known as Query By Image Content (QBIC), presents the technologies allowing to organize digital pictures by their visual features. They are based on the application of computer vision techniques to the image retrieval problem in large databases. Content-Based Image Retrieval (CBIR) consists of retrieving the most visually similar images to a given query image from a database of images.
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Effective and Efficient Browsing of Large Image Databases
Retrieval of images based not on keywords or annotations but on features extracted directly from the image data.
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A Hierarchical Organization of Home Video
A process framework for efficiently retrieving images from a collection by similarity. The retrieval relies on extracting the appropriate characteristic quantities describing the desired contents of images. In addition, suitable querying, matching, indexing and searching techniques are required.
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Organization of Home Video
A process framework for efficiently retrieving images from a collection by similarity. The retrieval relies on extracting the appropriate characteristic quantities describing the desired contents of images. In addition, suitable querying, matching, indexing and searching techniques are required.
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Content-Based Image Retrieval (CBIR) in Remote Clinical Diagnosis and Healthcare
A framework that locates, retrieves and displays images alike to one given as a query, using a set of features and image descriptors.
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Visualisation of Large Image Databases
Retrieval of images based not on keywords or annotations, but based on features extracted directly from the image data.
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Advances in Emotional Picture Classification
A process framework for efficiently retrieving images from a collection by similarity. The retrieval relies on extracting the appropriate characteristic quantities describing the desired contents of images. In addition, suitable querying, matching, indexing and searching techniques are required.
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Feature Extraction in Content-Based Image Retrieval
The field of representing, organising and searching images based on their content rather than image annotations.
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Visual Pattern Based Compressed Domain Image Retrieval
Retrieval of images based not on keywords or annotations but based on features extracted directly from the image data.
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Image Classification and Retrieval with Mining Technologies
A process framework for efficiently retrieving images from a collection by similarity. The retrieval relies on extracting the appropriate characteristic quantities describing the desired contents of images. In addition, suitable querying, matching, indexing and searching techniques are required.
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Advanced Techniques for Object-Based Image Retrieval
A process framework for efficiently retrieving images from a collection by similarity. The retrieval relies on extracting the appropriate characteristic quantities describing the desired contents of images. In addition, suitable querying, matching, indexing, and searching techniques are required.
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Semantic Image Retrieval
Also known as query by image content (QBIC) and content-based visual information retrieval (CBVIR) is the application of computer vision techniques to the image retrieval problem, that is, the problem of searching for digital images in large databases ( Datta, Joshi, Li & Wang, 2008 ).
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Image Retrieval Practice and Research
Image indexing and retrieval techniques which use image contents, that is, low-level (primitive) features of an image, such as color, shapes, textures, and so on. Queries are also provided in a form of images (sketches or image examples).
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WT-MO Algorithm: Automated Hematological Software Based on the Watershed Transform for Blood Cell Count
Is a technique that consists of the application of computational vision and pattern recognition methodologies to solve image retrieval problems in large databases. Visual features such as coloring, texture, and so on are used for the creation of a feature descriptor.
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Linguistic Indexing of Images with Database Mediation
This approach retrieves or searches digital images from large databases using the content of the images themselves or syntactical image features without human intervention. To aid image retrieval, techniques from statistics, pattern recognition, signal processing, and computer vision are commonly deployed. Other terms used interchangeably for CBIR are query by image content (QBIC) and content-based visual information retrieval (CBVIR).
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Teaching and Learning Image Courses with Visual Forms
A process framework for efficiently retrieving images from a collection by similarity. The retrieval relies on extracting the appropriate characteristic quantities describing the desired contents of images. In addition, suitable querying, matching, indexing and searching techniques are required.
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An Overview of Semantic-Based Visual Information Retrieval
A process framework for efficiently retrieving images from a collection by similarity. The retrieval relies on extracting the appropriate characteristic quantities describing the desired contents of images. In addition, suitable querying, matching, indexing and searching techniques are required.
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Up-to-Date Summary of Semantic-Based Visual Information Retrieval
A process framework for efficiently retrieving images from a collection by similarity. The retrieval relies on extracting the appropriate characteristic quantities describing the desired contents of images. In addition, suitable querying, matching, indexing and searching techniques are required.
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A Duplicate Chinese Document Image Retrieval System
The technique of image retrieval based on the features automatically extracted from the images themselves.
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Probability Association Approach in Automatic Image Annotation
CBIR is the process by which one searches for similar images according to the content of the query image, such as color, texture, shape, and so forth.
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