Publication | Closed Access
A Relevance Feedback Image Retrieval Scheme Using Multi-Instance and Pseudo Image Concepts
15
Citations
10
References
2006
Year
Pseudo Image ConceptsEngineeringMachine LearningImage RetrievalBiometricsUser IntentionImage SearchImage AnalysisInformation RetrievalData SciencePattern RecognitionRelevance FeedbackMachine VisionImage Search SchemeComputer ScienceContent-based Image SearchImage SimilarityComputer VisionContent-based Image RetrievalMultimedia Search
Content-based image search has long been considered a difficult task. Making correct conjectures on the user intention (perception) based on the query is a critical step in the content-based search. One key concept in this paper is how we find the user preferred low-level image characteristics from the multiple positive samples provided by the user. The second key concept is how we generate a set of consistent pseudo images when the user does not provide a sufficient number of samples. The notion of image feature stability is thus introduced. The third key concept is how we use negative as pruning criterion. In realizing the preceding concepts, an image search scheme is developed using the weighted low-level image features. At the end, quantitative simulation results are used to show the effectiveness of these concepts.
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