Paper
3 November 2005 Application of multi-class SVM for Kansei landscape image retrieval using colour and Kansei factors
Bin Shen, Min Yao, Yan-Gu Zhang, Wen-Sheng Yi
Author Affiliations +
Proceedings Volume 6043, MIPPR 2005: SAR and Multispectral Image Processing; 604328 (2005) https://doi.org/10.1117/12.654989
Event: MIPPR 2005 SAR and Multispectral Image Processing, 2005, Wuhan, China
Abstract
In this paper, a Kansei landscape image retrieval system named KIRCK is proposed, which is based on color feature and Kansei factors. Color feature is extracted in HSV color space and the similarity of color feature is estimated by color accumulation histogram intersection method. Multi-class Support Vector Machine is applied for the mapping between high-level Kansei labels and low-level image characteristics. After the multi-class SVM is trained, Kansei factors of images can be labeled automatically, and the similarity of images in Kansei space also can be estimated. Thus integrated retrieval results using color and Kansei factors can be obtained, and the experiment shows that these retrieval results are more satisfied than only using color feature or Kansei factors. Correlative feedback is also introduced to improve the performance of our color feature and Kansei factors image retrieval.
© (2005) COPYRIGHT Society of Photo-Optical Instrumentation Engineers (SPIE). Downloading of the abstract is permitted for personal use only.
Bin Shen, Min Yao, Yan-Gu Zhang, and Wen-Sheng Yi "Application of multi-class SVM for Kansei landscape image retrieval using colour and Kansei factors", Proc. SPIE 6043, MIPPR 2005: SAR and Multispectral Image Processing, 604328 (3 November 2005); https://doi.org/10.1117/12.654989
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Cited by 2 patents.
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KEYWORDS
Image retrieval

Feature extraction

RGB color model

Databases

Principal component analysis

Feature selection

Image classification

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