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Parametric and nonparametric context models: A unified approach to scene parsing

机译:参数和非参数上下文模型:场景解析的统一方法

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In this paper a new nonparametric scene parsing approach is proposed which has three steps: image retrieval, label transferring and label gathering. In our approach, to incorporate the contextual knowledge in scene parsing, we propose to integrate both parametric and nonparametric context models into a unified framework. We adopt a co-occurrence graph to be our parametric context model to learn the co-occurrence frequency of objects. To consider different preferences of the co-occurring of one object with the other objects, the concept of co-occurring priority is introduced in this paper for the first time. Next, by using the learned co-occurrence graph and the context knowledge of the set of retrieved images, we propose new ways to incorporate contextual information in all three steps of nonparametric scene parsing approach. To evaluate our proposed approach, it is applied on MSRC-21 and SiftFlow datasets. The results show that our approach outperforms its competitors. (C) 2018 Elsevier Ltd. All rights reserved.
机译:在本文中,提出了一种新的非参数场景解析方法,其中有三个步骤:图像检索,标签传输和标签收集。在我们的方法中,要在场景解析中纳入上下文知识,我们建议将参数和非参数上下文模型集成到统一的框架中。我们采用共同发生图来成为我们的参数上下文模型,以学习对象的共生频率。要考虑与其他目的的一个对象的共同发生的共同发生的不同偏好,首次在本文中引入了共同发生优先级的概念。接下来,通过使用学习的共同发生图和对所检索的图像集的上下文知识,我们提出了在非参数场景解析方法的所有三个步骤中结合上下文信息的新方法。为了评估我们所提出的方法,它应用于MSRC-21和SiftFlow数据集。结果表明,我们的方法优于竞争对手。 (c)2018年elestvier有限公司保留所有权利。

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