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Modeling, classifying and annotating weakly annotated images using Bayesian network

机译:使用Bayesian网络建模,分类和注释弱注释图像

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We propose a probabilistic graphical model to represent weakly annotated images. This model is used to classify images and automatically extend existing annotations to new images by taking into account semantic relations between keywords. The proposed method has been evaluated in classification and automatic annotation of images. The experimental results, obtained from a database of more than 30000 images, by combining visual and textual information, show an improvement by 50.5% in terms of recognition rate against only visual information classication. Taking into account semantic relations between keywords improves the recognition rate by 10.5% and the mean rate of good annotations by 6.9%. The proposed method is experimentally competitive with the state-of-art classifiers.
机译:我们提出了一个概率图形模型来表示弱注释的图像。该模型用于对图像进行分类并通过考虑关键字之间的语义关系,自动将现有注释扩展到新图像。已经在分类和自动注释图像中评估了所提出的方法。通过组合视觉和文本信息,通过组合视觉和文本信息的数据库获得的实验结果,在识别率上,仅针对视觉信息分类的识别率提高了50.5%。考虑到关键词之间的语义关系将识别率提高了10.5%,良好注释的平均速度为6.9%。该方法与最先进的分类器进行了实验竞争。

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