Publication | Closed Access
A Bayesian Approach to Multimodal Visual Dictionary Learning
22
Citations
33
References
2013
Year
Unknown Venue
EngineeringMachine LearningImage RetrievalMultimodal LearningVisual Dictionary LearningImage SearchText MiningImage AnalysisInformation RetrievalData ScienceText-to-image RetrievalPattern RecognitionFusion LearningContent-based Image RetrievalMachine VisionContinuous Image DescriptorsKnowledge DiscoveryBayesian ApproachMultimodal Signal ProcessingImage SimilarityComputer VisionImage Descriptors
Despite significant progress, most existing visual dictionary learning methods rely on image descriptors alone or together with class labels. However, Web images are often associated with text data which may carry substantial information regarding image semantics, and may be exploited for visual dictionary learning. This paper explores this idea by leveraging relational information between image descriptors and textual words via co-clustering, in addition to information of image descriptors. Existing co-clustering methods are not optimal for this problem because they ignore the structure of image descriptors in the continuous space, which is crucial for capturing visual characteristics of images. We propose a novel Bayesian co-clustering model to jointly estimate the underlying distributions of the continuous image descriptors as well as the relationship between such distributions and the textual words through a unified Bayesian inference. Extensive experiments on image categorization and retrieval have validated the substantial value of the proposed joint modeling in improving visual dictionary learning, where our model shows superior performance over several recent methods.
| Year | Citations | |
|---|---|---|
Page 1
Page 1