Review on Content Based Image Retrieval with Its Features and Ranking Model

Improving Image Ranking with Click Features and Visual Consistency

Authors

  • Karthik Kumar K.
  • Dr. S. Suresh Raja

Keywords:

Content Based Image Retrieval, features, ranking model, textual information, visual features, click features, learning to rank, visual consistency, hyper graph, image ranking model

Abstract

The irregularity between textual features visual substance can cause poor image list items. To take care of this issue, click features, which are more solid than textual information in defending the importance between a query and clicked images, are received in image ranking model. In this review, we study a novel ranking model dependent on the learning to rank structure. Visual features click features are all the while used to acquire the ranking model. In particular, the huge edge organized output learning and the visual consistency is incorporated with the click features through a hyper graph regularize term. Click features which are more solid instead of textual information in advocating the significance among a query and clicked images, are actualized in image ranking model. To accomplish the ranking model, visual click features are utilized.

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Published

2018-11-01

How to Cite

[1]
“Review on Content Based Image Retrieval with Its Features and Ranking Model: Improving Image Ranking with Click Features and Visual Consistency”, JASRAE, vol. 15, no. 11, pp. 818–828, Nov. 2018, Accessed: Jul. 08, 2024. [Online]. Available: https://ignited.in/jasrae/article/view/9160

How to Cite

[1]
“Review on Content Based Image Retrieval with Its Features and Ranking Model: Improving Image Ranking with Click Features and Visual Consistency”, JASRAE, vol. 15, no. 11, pp. 818–828, Nov. 2018, Accessed: Jul. 08, 2024. [Online]. Available: https://ignited.in/jasrae/article/view/9160