Automatic object annotation from weakly labeled data with latent structured SVM

Content-Based Multimedia Indexing(2014)

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摘要
In this paper we present an approach to automatic object annotation. We are given a set of positive images which all contain a certain object and our goal is to automatically determine the position of said object in each image. Our approach first applies a heuristic to identify initial bounding boxes based on color and gradient features. This heuristic is based on image and feature statistics. Then, the initial boxes are refined by a latent structured SVM training algorithm which is based on the CCCP training algorithm. We show that our approach outperforms previous work on multiple datasets.
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关键词
feature extraction,image colour analysis,learning (artificial intelligence),object recognition,support vector machines,CCCP training algorithm,automatic object annotation,color features,feature statistics,gradient features,latent structured SVM training algorithm,positive images,weakly labeled data
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