Adaptive relevance feedback for large-scale image retrieval

被引:0
作者
Nicolae Suditu
François Fleuret
机构
[1] Idiap Research Institute,
来源
Multimedia Tools and Applications | 2016年 / 75卷
关键词
Content-based image retrieval; Query-free; Large-scale; Interactive relevance feedback; Adaptive exploration/exploitation trade-off; Log-based similarity learning; Multi-modal indexing features; User-based evaluation;
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中图分类号
学科分类号
摘要
Content-based image retrieval aims at substituting traditional indexing based on manual annotation by using automatically-extracted visual indexing features. Novel techniques are needed however to efficiently deal with the semantic gap (i.e. the partial match between the low-level features and the visual content). Here, we investigate a query-free retrieval approach first proposed by Ferecatu and Geman. This approach relies solely on an iterative relevance feedback mechanism that drives a heuristic sampling of the collection, and aims to take explicitly into account the semantic gap. Our contributions are related to three complementary aspects. First, we formalize a large-scale approach based on a hierarchical tree-like organization of the images computed off-line. Second, we propose a versatile modulation of the exploration/exploitation trade-off based on the consistency of the system internal states between successive iterations. Third, we elaborate a long-term optimization of the similarity metric based on the user searching session logs accumulated off-line. We implemented a web-application that integrates all our contributions, and distribute it under the AGPL Version 3 free software license. We organized user-based evaluation campaigns using ImageNet dataset, and show empirically that our contributions significantly improve the retrieval performance of the original framework, that they are complementary to each other, and that their overall integration is consistently beneficial.
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页码:6777 / 6807
页数:30
相关论文
共 56 条
[1]  
Chechik G(2010)Large scale online learning of image similarity through ranking J Mach Learn Res 11 1109-1135
[2]  
Sharma V(2000)The Bayesian image retrieval system, PicHunter: theory, implementation, and psychophysical experiments IEEE Trans Image Process 9 20-37
[3]  
Shalit U(2008)Image retrieval: Ideas, influences, and trends of the new age ACM Comput Surv 40 1-60
[4]  
Bengio S(2009)A statistical framework for image category search from a mental picture IEEE Transactions on Pattern Analysis and Machine Intelligence 31 1087-1101
[5]  
Cox IJ(1995)Query by image and video content: The QBIC system Computer 28 23-32
[6]  
Miller ML(2005)A memory learning framework for effective image retrieval IEEE Trans Image Process 14 511-524
[7]  
Minka TP(2008)A survey of browsing models for content based image retrieval Journal of Multimedia Tools and Applications 40 261-284
[8]  
Papathomas TV(2006)A unified log-based relevance feedback scheme for image retrieval IEEE Trans Knowl Data Eng 18 509-524
[9]  
Yianilos PN(2008)Real-time computerized annotation of pictures IEEE Transactions on Pattern Analysis and Machine Intelligence 30 985-1002
[10]  
Datta R(2004)Distinctive image features from scale-invariant keypoints Int J Comput Vis 60 91-110