利用语义注释的图模型开发语义结构化关系

Yuhua Fan, Liya Fan
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引用次数: 0

摘要

本文提出了一种利用语义建模来实现语义标注任务的语义关系的新方法。现有的方法是基于上下文线索来学习概念及其关系的知识。该方法从大量的对象检测器出发,利用学习到的语义关系对初始标注结果进行细化,保持了标注在语义图上的一致性和有效性。与现有的捕获数据实例之间关系的图学习方法不同,语义图将概念作为节点,将概念亲和度作为边的权重。特别是,该方法不仅可以通过语义图模型有效地学习语义线索,提高标注效果,而且可以根据未见过的图像调整概念亲和力。该方法提供了一种处理训练数据和测试数据之间结构化关系变化的方法,这种变化在语义标注任务中经常发生。我们在NYUv2上的实验表明,所提出的方法优于最先进的算法。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Exploiting Semantic Structured Relationships Using Graph Models for Semantic Annotations
This paper proposes a novel and efficient approach to exploit semantic relationships using semantic modeling for semantic annotation tasks. The existing methods learn knowledge of concepts and their relationships based on context cues. Starting with a large set of objects detectors, the proposed method refines the initial annotation results using the learned semantic relationships, which can preserve the consistency and effective of the annotation over a semantic graph. Different from the existing graph learning methods which capture relations among data instances, the semantic graphs treat concepts as nodes and concept affinities as the weights of edges. Particularly, the proposed method can not only learn the semantic cues effectively through the semantic graph models to improve the annotation results, but also can adapt the concept affinities to unseen images. The method provides a means to handle structured relationship change between training and test data, which occurs very often in semantic annotation tasks. Our experiments on NYUv2 demonstrate that the proposed approach outperform the state-of-the-art algorithms.
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