Re-weighting Relevance Feedback in HSV Quantization for CBIR

This research has implemented re-weighting relevance feedback technique in HSV quantization for CBIR with similarity measures using Jeffrey Divergence. The purpose of this study is to determine the best weight factor and the best feedback image selection for re-weighting relevance feedback technique in HSV Quantization so that can enhance the performance of the CBIR system. Performance measurement is evaluated based on precision, recall, and F-measure values obtained from testing results performed on Wang, Corel 10K, and GHIM 10K datasets. Based on the results of the research, the best feedback image selection technique is the selection of the image that closer to the threshold value. The best weight factor of Wang dataset is 0.40, while the best weight factor of Corel 10K and GHIM 10K dataset is 0.45. The re-weighting relevance feedback technique in HSV quantization on all datasets generally does not increase the average precision value, but always increases the recall value and the average F -measure value. On Wang dataset, the proposed technique can increase the average F -measure value up to 2.21 times better than the baseline, i.e. from 18.91 % to 41.86% which is much better than the existing method. On Corel 10K dataset, the proposed technique can increase the average F -measure value up to 1.62 times better than the baseline, i.e. from 17.78% to 28.86% which is much better than the existing method. While the GHIM 10K dataset, the proposed technique can enhance the performance of image retrieval 2.67 times better than the baseline, i.e. from 5.14% to 13.74%.

[1]  Abdolreza Rashno,et al.  An efficient content-based image retrieval with ant colony optimization feature selection schema based on wavelet and color features , 2015, 2015 The International Symposium on Artificial Intelligence and Signal Processing (AISP).

[2]  Zahid Mehmood,et al.  Image retrieval by addition of spatial information based on histograms of triangular regions , 2016, Comput. Electr. Eng..

[3]  Jing-Yu Yang,et al.  Content-based image retrieval using computational visual attention model , 2015, Pattern Recognit..

[4]  Jian-Ping Li,et al.  Content Based Image Retrieval Using Gray Scale Weighted Average Method , 2016 .

[5]  A. K. Pal,et al.  A novel image retrieval scheme using gray level co-occurrence matrix descriptors of discrete cosine transform based residual image , 2018, Applied Intelligence.

[6]  Philip S. Yu,et al.  Efficient Relevance Feedback for Content-Based Image Retrieval by Mining User Navigation Patterns , 2011, IEEE Transactions on Knowledge and Data Engineering.

[7]  Islam,et al.  A New Approach of Content Based Image Retrieval Using Color and Texture Features , 2017 .

[8]  Bertrand Zavidovique,et al.  Content based image retrieval using motif cooccurrence matrix , 2004, Image Vis. Comput..

[9]  Prashant Srivastava,et al.  Utilizing multiscale local binary pattern for content-based image retrieval , 2017, Multimedia Tools and Applications.

[10]  Shyam Krishna Nagar,et al.  Multi-joint histogram based modelling for image indexing and retrieval , 2014, Comput. Electr. Eng..

[11]  Shruti Patil A Comprehensive Review of Recent Relevance Feedback Techniques in CBIR , 2012 .

[12]  Jasman Pardede,et al.  Reduce Semantic Gap in Content-Based Image Retrieval , 2017 .

[13]  V. Seenivasagam,et al.  Different relevance feedback techniques in CBIR: A survey and comparative study , 2012, 2012 International Conference on Computing, Electronics and Electrical Technologies (ICCEET).

[14]  Aasma S. Mujawar,et al.  Enhance the Technique of Relevance Feedback for Content-based Multimedia Retrieval by using Mining Algorithm , 2013 .

[15]  Manish K. Shriwas,et al.  Content based image retrieval: A past, present and new feature descriptor , 2015, 2015 International Conference on Circuits, Power and Computing Technologies [ICCPCT-2015].

[16]  Jing-Yu Yang,et al.  Content-based image retrieval using color difference histogram , 2013, Pattern Recognit..

[17]  Manisha Sharma,et al.  Comparison and Analysis of Content Based Image Retrieval Systems Based On Relevance Feedback , 2012 .

[18]  Rehan Ashraf,et al.  Content Based Image Retrieval Using Embedded Neural Networks with Bandletized Regions , 2015, Entropy.

[19]  Xingyuan Wang,et al.  A novel method for image retrieval based on structure elements' descriptor , 2013, J. Vis. Commun. Image Represent..

[20]  Tae-Sun Choi,et al.  Embedding neural networks for semantic association in content based image retrieval , 2014, Multimedia Tools and Applications.

[21]  Ansa Saju,et al.  Reduction of semantic gap using relevance feedback technique in image retrieval system , 2014, The Fifth International Conference on the Applications of Digital Information and Web Technologies (ICADIWT 2014).

[22]  Jasman Pardede,et al.  Comparison of similarity measures in HSV quantization for CBIR , 2017, 2017 International Conference on Data and Software Engineering (ICoDSE).

[23]  Meng Zhao,et al.  A novel image retrieval method based on multi-trend structure descriptor , 2016, J. Vis. Commun. Image Represent..

[24]  Amandeep Khokher IMAGE RETRIEVAL: A STATE OF THE ART APPROACH FOR CBIR , 2011 .

[25]  Rakesh Kumar,et al.  An Approach for Similarity Matching and Comparison in Content based Image Retrieval System , 2015 .

[26]  Mrs. P. Nalini Review on Content Based Image Retrieval : From Its Origin to the New Age , 2016 .

[27]  P ? ? ? ? ? ? ? % ? ? ? ? , 1991 .

[28]  Sooyoung Yoo,et al.  Evaluation of Term Ranking Algorithms for Pseudo-Relevance Feedback in MEDLINE Retrieval , 2011, Healthcare informatics research.

[29]  A. Bhagyalakshmi,et al.  A survey on content based image retrieval using various operators , 2014, Proceedings of IEEE International Conference on Computer Communication and Systems ICCCS14.

[30]  A. K. Pal,et al.  Image retrieval based on non-uniform bins of color histogram and dual tree complex wavelet transform , 2017, Multimedia Tools and Applications.