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Learning-based Linguistic Indexing of Pictures with 2-D MHMMs

机译:使用2-D MHMMS的图片的学习语言索引

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Automatic linguistic indexing of pictures is an important but highly challenging problem for researchers in computer vision and content-based image retrieval. In this paper, we introduce a statistical modeling approach to this problem. Categorized images are used to train a dictionary of hundreds of concepts automatically based on statistical modeling. Images of any given concept category are regarded as instances of a stochastic process that characterizes the category. To measure the extent of association between an image and the textual description of a category of images, the likelihood of the occurrence of the image based on the stochastic process derived from the category is computed. A high likelihood indicates a strong association. In our experimental implementation, the ALIP (Automatic Linguistic Indexing of Pictures) system, we focus on a particular group of stochastic processes for describing images, that is, the two-dimensional multiresolution hidden Markov models (2-D MHMMs). We implemented and tested the system on a photographic image database of 600 different semantic categories, each with about 40 training images. Tested using 3,000 images outside the training database, the system has demonstrated good accuracy and high potential in linguistic indexing of these test images.
机译:自动语言索引图片是计算机视觉和基于内容的图像检索研究人员的重要而高度挑战性问题。在本文中,我们介绍了这个问题的统计建模方法。分类的图像用于根据统计建模自动培训数百个概念的字典。任何给定概念类别的图像被视为表征类别的随机过程的实例。为了测量图像与图像类别的文本描述之间的关联程度,计算了基于从类别导出的随机处理的图像的发生的可能性。高可能表示强大的联系。在我们的实验实施中,alip(图片自动语言索引)系统,我们专注于描述图像的特定随机过程,即二维多分辨率隐马尔可夫模型(2-D MHMMS)。我们在600种不同的语义类别的摄影图像数据库上实施和测试了系统,每个类别有大约40个培训图像。在培训数据库外使用3,000个图像测试,系统在这些测试图像的语言索引中表现出良好的准确性和高潜力。

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