Image dimensionality reduction based on the HSV feature

How to reduce more of the image dimensions without losing the main features of the image is highlighted in the research of Web content-based image retrieval. This paper started by analysis of commonly used methods for the dimension reduction of Web images, followed by proposing dimensionality reduction method that is based on HSV features, where the HSV color histogram intersection was used as the function of similarity judgments. And the concept of intrinsic dimension was referenced to reduce the amount of calculation on the image dimensionality reduction. Finally, some improvements were made on the traditional genetic algorithm by use of the image similarity function as the self-adaptive judgment function to improve the genetic operators, thus achieving a Web image dimensionality reduction and similarity retrieval. The results showed that this method has greatly improved the image retrieval in time and precision rates.

[1]  Yuchou Chang,et al.  CBIR of spine X-ray images on inter-vertebral disc space and shape profiles using feature ranking and voting consensus , 2009, Data Knowl. Eng..

[2]  J. M. Zachary,et al.  An Information Theoretic Approach to Content Based Image Retrieval. , 2000 .

[3]  Yang Hongying Content Based Image Retrieval Using Color Edge Histogram in HSV Color Space , 2008 .

[4]  Malay Kumar Kundu,et al.  Content-based image retrieval using visually significant point features , 2009, Fuzzy Sets Syst..

[5]  Tao Wu,et al.  Image mining for robot vision based on concept analysis , 2007, 2007 IEEE International Conference on Robotics and Biomimetics (ROBIO).

[6]  Liu Yunhui,et al.  Study on the Low-Dimensional Embedding and the Embedding Dimensionality of Manifold of High-Dimensional Data , 2005 .

[7]  Liu Er-gen New approach on image retrieval based on color information entropy , 2008 .

[8]  Bipin C. Desai,et al.  A unified image retrieval framework on local visual and semantic concept-based feature spaces , 2009, J. Vis. Commun. Image Represent..

[9]  Bai Xue,et al.  Research of Image Retrieval Based on Color , 2009, 2009 International Forum on Computer Science-Technology and Applications.

[10]  Peng Dong,et al.  Adaptive Optimization Control Based on Improved Genetic Algorithm and Fuzzy Neural Network , 2009, 2009 International Conference on E-Business and Information System Security.

[11]  Chun-Wei Yang,et al.  Recover the tampered image based on VQ indexing , 2010, Signal Process..

[12]  Antoine Geissbühler,et al.  A Review of Content{Based Image Retrieval Systems in Medical Applications { Clinical Bene(cid:12)ts and Future Directions , 2022 .

[13]  Jun Zhang,et al.  Content Based Image Retrieval Using Unclean Positive Examples , 2009, IEEE Transactions on Image Processing.

[14]  Antoine Geissbühler,et al.  Erratum to "A review of content-based image retrieval systems in medical applications - Clinical benefits and future directions" [I. J. Medical Informatics 73 (1) (2004) 1-23] , 2009, Int. J. Medical Informatics.

[15]  Zhang Ming,et al.  The Evaluation of Wavelet and Data Driven Feature Selection for Image Understanding , 2008, 2008 International Conference on BioMedical Engineering and Informatics.

[16]  S. Chitrakala,et al.  Multi-class Enhanced Image Mining of Heterogeneous Textual Images Using Multiple Image Features , 2009, 2009 IEEE International Advance Computing Conference.

[17]  Chun Chen,et al.  Image retrieval using nonlinear manifold embedding , 2009, Neurocomputing.

[18]  David S. Doermann,et al.  This article has been accepted for publication in a future issue of this journal, but has not been fully edited. Content may change prior to final publication. IEEE TRANSACTIONS ON PATTERN ANALYSIS AND MACHINE INTELLIGENCE Signature Detection and Matching , 2022 .