Home > Papers

 
 
QUERY DIFFICULTY ESTIMATION VIA PSEUDO RELEVANCE FEEDBACK FOR IMAGE SEARCH
Qianghuai Jia 1, Xinmei Tian 1 *,Tao Mei 2
1. CAS Key Laboratory of Technology in Geo-spatial Information Processing and Application System, University of Science and Technology of China, hefei 230027
2. Microsoft Research, Beijing 100080
*Correspondence author
#Submitted by
Subject:
Funding: Supported by the Specialized Research Fund for the Doctoral Program of Higher Education (No.No. WJ2100060003), the Fundamental Research Funds for the Central Universities (No.No.WK2100060007 and No. WK2100060011)
Opened online: 3 June 2014
Accepted by: none
Citation: Qianghuai Jia, Xinmei Tian,Tao Mei.QUERY DIFFICULTY ESTIMATION VIA PSEUDO RELEVANCE FEEDBACK FOR IMAGE SEARCH[OL]. [ 3 June 2014] http://en.paper.edu.cn/en_releasepaper/content/4596589
 
 
Query difficulty estimation (QDE) attempts to automatically predict the performance of the search results returned for a given query. QDE has been widely investigated in text document retrieval for many years. However, few research works have been explored in image retrieval. State-of-the-art QDE methods in image retrieval mainly investigate the statistical characteristics (coherence, robustness, emph{etc}.) of the returned images to derive a value for indicating the query difficulty degree. To the best of our knowledge, little research has been done to directly estimate the real retrieval performance of the search results, such as average precision, instead of only an indicator. In this paper, we propose a novel query difficulty estimation approach which automatically estimate the average precision of the image search results. Specifically, we first select a set of query relevant and query irrelevant images for each query via pseudo relevance feedback. Then an efficient and effective voting scheme is proposed to estimate the relevance label of each image in the search results. Based on the images' relevance labels, the average precision of the search results returned for the given query is derived. The experimental results on a benchmark image search dataset demonstrate the effectiveness of the proposed method.
Keywords:Image retrieval,Query difficulty estimation,average precision,pseudo relevance feedback,voting shceme
 
 
 

For this paper

  • PDF (0B)
  • ● Revision 0   
  • ● Print this paper
  • ● Recommend this paper to a friend
  • ● Add to my favorite list

    Saved Papers

    Please enter a name for this paper to be shown in your personalized Saved Papers list

Tags

Add yours

Related Papers

  • Other similar papers

Statistics

PDF Downloaded 153
Bookmarked 0
Recommend 5
Comments Array
Submit your papers