首页> 外文会议>Advances in Neural Networks - ISNN 2007 pt.1; Lecture Notes in Computer Science; 4491 >Unsupervised Image Categorization Using Constrained Entropy-Regularized Likelihood Learning with Pairwise Constraints
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Unsupervised Image Categorization Using Constrained Entropy-Regularized Likelihood Learning with Pairwise Constraints

机译:使用成对约束的约束熵正则化似然学习的无监督图像分类

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We usually identify the categories in image databases using some clustering algorithms based on the visual features extracted from images. Due to the well-known gap between the semantic features (e.g., categories) and the visual features, the results of unsupervised image categorization may be quite disappointing. Of course, it can be improved by adding some extra semantic information. Pairwise constraints between some images are easy to provide, even when we have little prior knowledge about the image categories in a database. A semi-supervised learning algorithm is then proposed for unsupervised image categorization based on Gaussian mixture model through incorporating such semantic information into the entropy-regularized likelihood (ERL) learning, which can automatically detect the number of image categories in the database. The experiments further show that this algorithm can lead to some promising results when applied to image categorization.
机译:我们通常根据从图像中提取的视觉特征,使用一些聚类算法来识别图像数据库中的类别。由于语义特征(例如类别)和视觉特征之间的众所周知的差距,无监督图像分类的结果可能会令人非常失望。当然,可以通过添加一些额外的语义信息来改进它。即使我们对数据库中的图像类别了解甚少,某些图像之间的成对约束也很容易提供。提出了一种基于高斯混合模型的非监督图像分类的半监督学习算法,该算法将语义信息纳入熵规则似然(ERL)学习中,可以自动检测数据库中图像类别的数量。实验进一步表明,该算法在图像分类中可以产生一些有希望的结果。

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