Publication | Closed Access
Image Tag Completion via Image-Specific and Tag-Specific Linear Sparse Reconstructions
95
Citations
14
References
2013
Year
Unknown Venue
Web ImagesEngineeringMachine LearningImage RetrievalAtomic DecompositionImage AnalysisInformation RetrievalData SciencePattern RecognitionImage Tag CompletionInverse ProblemsSocial Multimedia TaggingMedical Image ComputingBenchmark DatasetComputer VisionSemantic TaggingSparse RepresentationImage ManagementCompressive SensingContent-based Image Retrieval
Though widely utilized for facilitating image management, user-provided image tags are usually incomplete and insufficient to describe the whole semantic content of corresponding images, resulting in performance degradations in tag-dependent applications and thus necessitating effective tag completion methods. In this paper, we propose a novel scheme denoted as LSR for automatic image tag completion via image-specific and tag-specific Linear Sparse Reconstructions. Given an incomplete initial tagging matrix with each row representing an image and each column representing a tag, LSR optimally reconstructs each image (i.e. row) and each tag (i.e. column) with remaining ones under constraints of sparsity, considering image-image similarity, image-tag association and tag-tag concurrence. Then both image-specific and tag-specific reconstruction values are normalized and merged for selecting missing related tags. Extensive experiments conducted on both benchmark dataset and web images well demonstrate the effectiveness of the proposed LSR.
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