基于预训练语言模型的抽象意义表示的场景图解析

Woo Suk Choi, Y. Heo, Dharani Punithan, Byoung-Tak Zhang
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引用次数: 4

摘要

在这项工作中,我们提出应用基于抽象意义表示(AMR)的语义分析模型将视觉场景的文本描述解析为场景图,这是我们所知的第一项工作。以前的工作使用依赖关系分析从文本描述中分析场景图,并将AMR分析方法作为未来的工作,因为需要复杂的方法来应用AMR。因此,我们使用预训练的AMR解析模型将视觉场景(即图像)的区域描述解析为AMR图,并使用预训练的语言模型(PLM) BART和T5将AMR图解析为场景图。实验结果表明,我们的方法明确地从视觉场景的文本描述中捕获高级语义,例如对象、对象的属性和对象之间的关系。我们的文本场景图解析方法在SPICE度量得分上比以前最先进的结果高出9.3%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Scene Graph Parsing via Abstract Meaning Representation in Pre-trained Language Models
In this work, we propose the application of abstract meaning representation (AMR) based semantic parsing models to parse textual descriptions of a visual scene into scene graphs, which is the first work to the best of our knowledge. Previous works examined scene graph parsing from textual descriptions using dependency parsing and left the AMR parsing approach as future work since sophisticated methods are required to apply AMR. Hence, we use pre-trained AMR parsing models to parse the region descriptions of visual scenes (i.e. images) into AMR graphs and pre-trained language models (PLM), BART and T5, to parse AMR graphs into scene graphs. The experimental results show that our approach explicitly captures high-level semantics from textual descriptions of visual scenes, such as objects, attributes of objects, and relationships between objects. Our textual scene graph parsing approach outperforms the previous state-of-the-art results by 9.3% in the SPICE metric score.
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