Added by Geoff Sauer on Sep 20, 2008.
Average rating: 3.00/5.00 (n=1)
 


This paper examines a large number of failed queries submitted to a web image search engine, including real users' search terms and written requests. The results show that failed image queries have a much higher specificity than successful queries because users often employ various refined types to specify their queries. The study explores the refined types further, and finds that failed queries consist of far more conceptual than perceptual refined types. The widely used content-based image retrieval technique, CBIR, can only deal with a small proportion of failed queries; hence, appropriate integration of concept-based techniques is desirable. Based on using the concepts of uniqueness and refinement for categorization, the study also provides a useful discussion on the gaps between image queries and retrieval techniques. The initial results enhance the understanding of failed queries and suggest possible ways to improve image retrieval systems.
 
  View all 60 works published by Journal of Information Science  

Please share your rating/opinion of "Analysis of Failed Queries for Web Image Retrieval".
 PoorExcellent 
click this box if you find the link above broken or out-of-date.

Copyright © 2001-17 by the EServer. All rights reserved.Add a Work | Discussion Forum | Habitués