将语义约束纳入判别分类和标记模型。

A. Quattoni, M. Collins, Trevor Darrell
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引用次数: 3

摘要

本文描述了一种将语义知识库整合到判别学习框架中的方法。我们考虑一个联合场景分类和区域标记任务,并假设一些语义知识是可用的。例如,我们可能知道在给定的场景中允许出现什么对象。我们的目标是使用这些知识来最小化学习所需的完全标记示例(即图像中每个区域都被标记的数据)的数量。对于每个场景类别,给定图像区域标记的概率由条件随机场(CRF)建模。我们的模型通过将隐藏变量和类条件CRF结合到场景分类和区域标记的联合框架中来扩展CRF框架。我们通过约束潜在区域标签变量可以采用的配置,即通过约束给定场景类别的可能区域标签,将语义知识集成到模型中。在一系列综合实验中,为了说明该方法的可行性,在给定固定数量的完全标记数据的情况下,添加关于对象蕴涵的语义约束提高了区域标记的准确性。
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Incorporating Semantic Constraints into a Discriminative Categorization and Labelling Model.
This paper describes an approach to incorporate semantic knowledge sources within a discriminative learning framework. We consider a joint scene categorization and region labelling task and assume that some semantic knowledge is available. For example we might know what objects are allowed to appear in a given scene. Our goal is to use this knowledge to minimize the number of fully labelled examples (i.e. data for which each region in the image is labelled) required for learning. For each scene category the probability of a given labelling of image regions is modelled by a Conditional Random Field (CRF). Our model extends the CRF framework by incorporating hidden variables and combining class conditional CRFs into a joint framework for scene categorization and region labelling. We integrate semantic knowledge into the model by constraining the configurations that the latent region label variable can take, i.e. by constraining the possible region labelling for a given scene category. In a series of synthetic experiments, designed to illustrate the feasibility of the approach, adding semantic constraints about object entailment increased the region labelling accuracy given a fixed amount of fully labelled data.
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