Large-scale image annotation using visual synset

ICCV(2011)

引用 83|浏览86
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摘要
We address the problem of large-scale annotation of web images. Our approach is based on the concept of visual synset, which is an organization of images which are visually-similar and semantically-related. Each visual synset represents a single prototypical visual concept, and has an associated set of weighted annotations. Linear SVM's are utilized to predict the visual synset membership for unseen image examples, and a weighted voting rule is used to construct a ranked list of predicted annotations from a set of visual synsets. We demonstrate that visual synsets lead to better performance than standard methods on a new annotation database containing more than 200 million im- ages and 300 thousand annotations, which is the largest ever reported
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关键词
visual synset,linear svm,large-scale image annotation,weighted annotation,new annotation database,weighted voting rule,large-scale annotation,thousand annotation,visual synset membership,single prototypical visual concept,visual synsets,vectors,semantics,support vector machines,internet,image processing,visualization,testing,image annotation,support vector machine
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