Version 2 2024-06-05, 00:37Version 2 2024-06-05, 00:37
Version 1 2014-10-28, 09:26Version 1 2014-10-28, 09:26
conference contribution
posted on 2024-06-05, 00:37authored byJ Zhang, L Ye
Feature aggregation is a critical technique in content-based image retrieval (CBIR) that combines multiple feature distances to obtain image dissimilarity. Conventional parallel feature aggregation (PFA) schemes failed to effectively filter out the irrelevant images using individual visual features before ranking images in collection. Series feature aggregation (SFA) is a new scheme that aims to address this problem. This paper investigates three important properties of SFA that are significant for design of systems. They reveal the irrelevance of feature order and the convertibility of SFA and PFA as well as the superior performance of SFA. Furthermore, based on Gaussian kernel density estimator, the authors propose a new method to estimate the visual threshold, which is the key parameter of SFA. Experiments, conducted with IAPR TC-12 benchmark image collection (ImageCLEF2006) that contains over 20,000 photographic images and defined queries, have shown that SFA can outperform conventional PFA schemes.
History
Pagination
361-364
Location
Cairns, Qld.
Open access
Yes
Start date
2008-06-23
End date
2008-06-26
ISBN-13
9780980326727
ISBN-10
0980326729
Language
eng
Publication classification
E1.1 Full written paper - refereed
Copyright notice
2008, ICITA
Editor/Contributor(s)
Tien D, Kavakli M
Title of proceedings
ICITA 2008 : Fifth international conference on information technology & applications
Event
International Conference on Information Technology and Applications (5th : 2008 : Cairns, Queensland.)