Efficient Image Retrieval with Statistical Color Descriptors

Color has been widely used in content-based image retrieval (CBIR) applications. In such applications the color properties of an image are usually characterized by the probability distribution of the colors in the image. A distance measure is then used to measure the (dis-)similarity between images...

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Main Author: Viet Tran, Linh
Format: Doctoral Thesis
Language:English
Published: Linköpings universitet, Institutionen för teknik och naturvetenskap 2003
Subjects:
Online Access:http://urn.kb.se/resolve?urn=urn:nbn:se:liu:diva-5002
http://nbn-resolving.de/urn:isbn:91-7373-620-1
id ndltd-UPSALLA1-oai-DiVA.org-liu-5002
record_format oai_dc
collection NDLTD
language English
format Doctoral Thesis
sources NDLTD
topic color properties
images
statistical
content-based image retrieval (CBIR)
non-parametric density estimators
image database
Kernel
Gram-Schmidt
geometry-based
Information technology
Informationsteknologi
spellingShingle color properties
images
statistical
content-based image retrieval (CBIR)
non-parametric density estimators
image database
Kernel
Gram-Schmidt
geometry-based
Information technology
Informationsteknologi
Viet Tran, Linh
Efficient Image Retrieval with Statistical Color Descriptors
description Color has been widely used in content-based image retrieval (CBIR) applications. In such applications the color properties of an image are usually characterized by the probability distribution of the colors in the image. A distance measure is then used to measure the (dis-)similarity between images based on the descriptions of their color distributions in order to quickly find relevant images. The development and investigation of statistical methods for robust representations of such distributions, the construction of distance measures between them and their applications in efficient retrieval, browsing, and structuring of very large image databases are the main contributions of the thesis. In particular we have addressed the following problems in CBIR. Firstly, different non-parametric density estimators are used to describe color information for CBIR applications. Kernel-based methods using nonorthogonal bases together with a Gram-Schmidt procedure and the application of the Fourier transform are introduced and compared to previously used histogram-based methods. Our experiments show that efficient use of kernel density estimators improves the retrieval performance of CBIR. The practical problem of how to choose an optimal smoothing parameter for such density estimators as well as the selection of the histogram bin-width for CBIR applications are also discussed. Distance measures between color distributions are then described in a differential geometry-based framework. This allows the incorporation of geometrical features of the underlying color space into the distance measure between the probability distributions. The general framework is illustrated with two examples: Normal distributions and linear representations of distributions. The linear representation of color distributions is then used to derive new compact descriptors for color-based image retrieval. These descriptors are based on the combination of two ideas: Incorporating information from the structure of the color space with information from images and application of projection methods in the space of color distribution and the space of differences between neighboring color distributions. In our experiments we used several image databases containing more than 1,300,000 images. The experiments show that the method developed in this thesis is very fast and that the retrieval performance chievedcompares favorably with existing methods. A CBIR system has been developed and is currently available at http://www.media.itn.liu.se/cse. We also describe color invariant descriptors that can be used to retrieve images of objects independent of geometrical factors and the illumination conditions under which these images were taken. Both statistics- and physics-based methods are proposed and examined. We investigated the interaction between light and material using different physical models and applied the theory of transformation groups to derive geometry color invariants. Using the proposed framework, we are able to construct all independent invariants for a given physical model. The dichromatic reflection model and the Kubelka-Munk model are used as examples for the framework. The proposed color invariant descriptors are then applied to both CBIR, color image segmentation, and color correction applications. In the last chapter of the thesis we describe an industrial application where different color correction methods are used to optimize the layout of a newspaper page. === <p>A search engine based, on the methodes discribed in this thesis, can be found at http://pub.ep.liu.se/cse/db/?. Note that the question mark must be included in the address.</p>
author Viet Tran, Linh
author_facet Viet Tran, Linh
author_sort Viet Tran, Linh
title Efficient Image Retrieval with Statistical Color Descriptors
title_short Efficient Image Retrieval with Statistical Color Descriptors
title_full Efficient Image Retrieval with Statistical Color Descriptors
title_fullStr Efficient Image Retrieval with Statistical Color Descriptors
title_full_unstemmed Efficient Image Retrieval with Statistical Color Descriptors
title_sort efficient image retrieval with statistical color descriptors
publisher Linköpings universitet, Institutionen för teknik och naturvetenskap
publishDate 2003
url http://urn.kb.se/resolve?urn=urn:nbn:se:liu:diva-5002
http://nbn-resolving.de/urn:isbn:91-7373-620-1
work_keys_str_mv AT viettranlinh efficientimageretrievalwithstatisticalcolordescriptors
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spelling ndltd-UPSALLA1-oai-DiVA.org-liu-50022016-09-01T05:17:49ZEfficient Image Retrieval with Statistical Color DescriptorsengViet Tran, LinhLinköpings universitet, Institutionen för teknik och naturvetenskapLinköpings universitet, Tekniska högskolanLinköping2003color propertiesimagesstatisticalcontent-based image retrieval (CBIR)non-parametric density estimatorsimage databaseKernelGram-Schmidtgeometry-basedInformation technologyInformationsteknologiColor has been widely used in content-based image retrieval (CBIR) applications. In such applications the color properties of an image are usually characterized by the probability distribution of the colors in the image. A distance measure is then used to measure the (dis-)similarity between images based on the descriptions of their color distributions in order to quickly find relevant images. The development and investigation of statistical methods for robust representations of such distributions, the construction of distance measures between them and their applications in efficient retrieval, browsing, and structuring of very large image databases are the main contributions of the thesis. In particular we have addressed the following problems in CBIR. Firstly, different non-parametric density estimators are used to describe color information for CBIR applications. Kernel-based methods using nonorthogonal bases together with a Gram-Schmidt procedure and the application of the Fourier transform are introduced and compared to previously used histogram-based methods. Our experiments show that efficient use of kernel density estimators improves the retrieval performance of CBIR. The practical problem of how to choose an optimal smoothing parameter for such density estimators as well as the selection of the histogram bin-width for CBIR applications are also discussed. Distance measures between color distributions are then described in a differential geometry-based framework. This allows the incorporation of geometrical features of the underlying color space into the distance measure between the probability distributions. The general framework is illustrated with two examples: Normal distributions and linear representations of distributions. The linear representation of color distributions is then used to derive new compact descriptors for color-based image retrieval. These descriptors are based on the combination of two ideas: Incorporating information from the structure of the color space with information from images and application of projection methods in the space of color distribution and the space of differences between neighboring color distributions. In our experiments we used several image databases containing more than 1,300,000 images. The experiments show that the method developed in this thesis is very fast and that the retrieval performance chievedcompares favorably with existing methods. A CBIR system has been developed and is currently available at http://www.media.itn.liu.se/cse. We also describe color invariant descriptors that can be used to retrieve images of objects independent of geometrical factors and the illumination conditions under which these images were taken. Both statistics- and physics-based methods are proposed and examined. We investigated the interaction between light and material using different physical models and applied the theory of transformation groups to derive geometry color invariants. Using the proposed framework, we are able to construct all independent invariants for a given physical model. The dichromatic reflection model and the Kubelka-Munk model are used as examples for the framework. The proposed color invariant descriptors are then applied to both CBIR, color image segmentation, and color correction applications. In the last chapter of the thesis we describe an industrial application where different color correction methods are used to optimize the layout of a newspaper page. <p>A search engine based, on the methodes discribed in this thesis, can be found at http://pub.ep.liu.se/cse/db/?. Note that the question mark must be included in the address.</p>Doctoral thesis, monographinfo:eu-repo/semantics/doctoralThesistexthttp://urn.kb.se/resolve?urn=urn:nbn:se:liu:diva-5002urn:isbn:91-7373-620-1Linköping Studies in Science and Technology. Dissertations, 0345-7524 ; 810application/pdfinfo:eu-repo/semantics/openAccess