Image retrieval using color features
This report aims to present on the work that was undertaken during the one year period of Final Year Project. In this project, a histogram matching based retrieval method is analyzed in three different colour spaces, namely, RGB, HSV and L*a*b. Colour matching is one of the most popular techniques u...
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sg-ntu-dr.10356-533212023-07-07T18:55:07Z Image retrieval using color features Revathi Krishnasamy. School of Electrical and Electronic Engineering Wang Gang DRNTU::Engineering::Electrical and electronic engineering::Computer hardware, software and systems This report aims to present on the work that was undertaken during the one year period of Final Year Project. In this project, a histogram matching based retrieval method is analyzed in three different colour spaces, namely, RGB, HSV and L*a*b. Colour matching is one of the most popular techniques used for retrieving images from a large database but it has drawback whereby information about texture, shape and spatial location are not considered. Colour histogram method requires quantization of a colour space. The quantization process reduces the number of colours used in an image. Two types of quantization: scalar quantization and vector quantization are explored in this project together with the two types of histogram distance measures in three different colour spaces. The extraction algorithm works by: Selecting a colour space(s) {RGB, HSV, L*a*b}, then by selecting a quantization method for the colour space(s), next computation of colour histogram and computation of distance function and lastly, the extraction of images from the database. This report will present the results of an experimental investigation studying on the accuracy, efficiency of the image retrieval system in all three colour models. To test the retrieval performance, Matlab simulation has been implemented. This report also includes the learning points that i have gained during the course of this project as well as how it had enhanced my knowledge throughout the entire project implementation phase. Bachelor of Engineering 2013-05-31T06:12:03Z 2013-05-31T06:12:03Z 2013 2013 Final Year Project (FYP) http://hdl.handle.net/10356/53321 en Nanyang Technological University 82 p. application/pdf |
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DRNTU::Engineering::Electrical and electronic engineering::Computer hardware, software and systems Revathi Krishnasamy. Image retrieval using color features |
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This report aims to present on the work that was undertaken during the one year period of Final Year Project. In this project, a histogram matching based retrieval method is analyzed in three different colour spaces, namely, RGB, HSV and L*a*b. Colour matching is one of the most popular techniques used for retrieving images from a large database but it has drawback whereby information about texture, shape and spatial location are not considered. Colour histogram method requires quantization of a colour space. The quantization process reduces the number of colours used in an image. Two types of quantization: scalar quantization and vector quantization are explored in this project together with the two types of histogram distance measures in three different colour spaces. The extraction algorithm works by: Selecting a colour space(s) {RGB, HSV, L*a*b}, then by selecting a quantization method for the colour space(s), next computation of colour histogram and computation of distance function and lastly, the extraction of images from the database. This report will present the results of an experimental investigation studying on the accuracy, efficiency of the image retrieval system in all three colour models. To test the retrieval performance, Matlab simulation has been implemented. This report also includes the learning points that i have gained during the course of this project as well as how it had enhanced my knowledge throughout the entire project implementation phase. |
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School of Electrical and Electronic Engineering |
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School of Electrical and Electronic Engineering Revathi Krishnasamy. |
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Final Year Project |
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Revathi Krishnasamy. |
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Revathi Krishnasamy. |
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Image retrieval using color features |
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Image retrieval using color features |
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Image retrieval using color features |
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Image retrieval using color features |
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Image retrieval using color features |
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image retrieval using color features |
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2013 |
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http://hdl.handle.net/10356/53321 |
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1772826848230637568 |