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Statistical modeling and conceptualization of natural images

机译:自然图像的统计建模和概念化

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摘要

Multi-level annotation of images is a promising solution to enable semantic image retrieval by using various keywords at different semantic levels. In this paper, we propose a multi-level approach to interpret and annotate the semantics of natural images by using both the dominant image components and the relevant semantic image concepts. In contrast to the well-known image-based and region-based approaches, we use the concept-sensitive salient objects as the dominant image components to achieve automatic image annotation at the content level. By using the concept-sensitive salient objects for image content representation and feature extraction, a novel image classification technique is developed to achieve automatic image annotation at the concept level. To detect the concept-sensitive salient objects automatically, a set of detection functions are learned from the labeled image regions by using support vector machine (SVM) classifiers with an automatic scheme for searching the optimal model parameters. To generate the semantic image concepts, the finite mixture models are used to approximate the class distributions of the relevant concept-sensitive salient objects. An adaptive EM algorithm has been proposed to determine the optimal model structure and model parameters simultaneously. In addition, a large number of unlabeled samples have been integrated with a limited number of labeled samples to achieve more effective classifier training and knowledge discovery. We have also demonstrated that our algorithms are very effective to enable multi-level interpretation and annotation of natural images. (c) 2004 Pattern Recognition Society. Published by Elsevier Ltd. All rights reserved.
机译:图像的多级注释是一种有前途的解决方案,可以通过使用不同语义级别的各种关键字来实现语义图像检索。在本文中,我们提出了一种多层次的方法,通过同时使用主要图像成分和相关语义图像概念来解释和注释自然图像的语义。与众所周知的基于图像和基于区域的方法相反,我们使用概念敏感的显着对象作为主要图像组件,以在内容级别实现自动图像注释。通过使用概念敏感的显着对象进行图像内容表示和特征提取,开发了一种新颖的图像分类技术以在概念级别实现自动图像标注。为了自动检测概念敏感的显着对象,通过使用支持向量机(SVM)分类器以及用于搜索最佳模型参数的自动方案,从标记的图像区域中学习了一组检测功能。为了生成语义图像概念,使用有限混合模型对相关概念敏感的显着对象的类分布进行近似。提出了一种自适应EM算法,可以同时确定最优模型结构和模型参数。此外,大量未标记样本已与有限数量的标记样本集成在一起,以实现更有效的分类器训练和知识发现。我们还证明了我们的算法对于实现自然图像的多级解释和注释非常有效。 (c)2004模式识别学会。由Elsevier Ltd.出版。保留所有权利。

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