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An Adaptive Image Content Representation and Segmentation Approach to Automatic Image Annotation

机译:自适应图像内容表示与分割的自动图像标注方法

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Automatic image annotation has been intensively studied for content-based image retrieval recently. In this paper, we propose a novel approach to automatic image annotation based on two key components: (a) an adaptive visual feature representation of image contents based on matching pursuit algorithms; and (b) an adaptive two-level segmentation method. They are used to address the important issues of segmenting images into meaningful units, and representing the contents of each unit with discriminative visual features. Using a set of about 800 training and testing images, we compare these techniques in image retrieval against other popular segmentation schemes, and traditional non-adaptive feature representation methods. Our preliminary results indicate that the proposed approach outperforms other competing systems based on the popular Blobworld segmentation scheme and other prevailing feature representation methods, such as DCT and wavelets. In particular, our system achieves an F_1 measure of over 50% for the image annotation task.
机译:最近,对于基于内容的图像检索,已经对自动图像注释进行了深入研究。在本文中,我们提出了一种基于两个关键组成部分的自动图像批注的新颖方法:(a)基于匹配追踪算法的图像内容的自适应视觉特征表示; (b)自适应两级分割方法。它们用于解决将图像分割成有意义的单元并用具有区分性的视觉特征表示每个单元的内容这一重要问题。使用一组约800张训练和测试图像,我们将这些技术在图像检索中与其他流行的分割方案和传统的非自适应特征表示方法进行了比较。我们的初步结果表明,基于流行的Blobworld分割方案和其他流行的特征表示方法(例如DCT和小波),所提出的方法优于其他竞争系统。特别是,我们的系统对图像注释任务的F_1度量达到了50%以上。

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