判别随机场:分类中上下文交互的判别框架

Sanjiv Kumar, M. Hebert
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引用次数: 535

摘要

在这项工作中,我们提出了判别随机场(DRFs),这是一种判别框架,通过在标签和观测数据中结合邻域相互作用来对图像区域进行分类。与传统的马尔可夫随机场(MRF)框架相比,判别式随机场具有许多优点。首先,drf允许放松通常在MRF框架中用于可追溯性的观测数据的条件独立性的强假设。这个假设对于视觉领域的大量应用来说过于严格。其次,drf通过利用概率判别模型而不是MRF框架中使用的生成模型来获得分类能力。最后,DRF模型中的所有参数都是同时从训练数据中估计出来的,而MRF框架中的似然参数通常是与现场参数分开学习的。我们在Corel数据库中提取的自然图像的人工结构检测应用中说明了drf比MRF框架的优势。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Discriminative random fields: a discriminative framework for contextual interaction in classification
In this work we present discriminative random fields (DRFs), a discriminative framework for the classification of image regions by incorporating neighborhood interactions in the labels as well as the observed data. The discriminative random fields offer several advantages over the conventional Markov random field (MRF) framework. First, the DRFs allow to relax the strong assumption of conditional independence of the observed data generally used in the MRF framework for tractability. This assumption is too restrictive for a large number of applications in vision. Second, the DRFs derive their classification power by exploiting the probabilistic discriminative models instead of the generative models used in the MRF framework. Finally, all the parameters in the DRF model are estimated simultaneously from the training data unlike the MRF framework where likelihood parameters are usually learned separately from the field parameters. We illustrate the advantages of the DRFs over the MRF framework in an application of man-made structure detection in natural images taken from the Corel database.
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