利用知识图改进图像字幕

Yimin Zhou, Yiwei Sun, Vasant G Honavar
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引用次数: 41

摘要

我们探索了知识图的使用,它捕获一般或常识性知识,通过最先进的图像字幕方法来增强从图像中提取的信息。我们比较了CIDEr-D测量的图像字幕系统的性能,CIDEr-D是一种明确设计用于评估图像字幕系统的性能指标,在几个基准数据集(如MS COCO)上。我们的实验结果表明,使用从知识图中提取的信息的最先进的图像字幕方法的变体可以大大优于仅依赖从图像中提取的信息的方法。
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Improving Image Captioning by Leveraging Knowledge Graphs
We explore the use of a knowledge graphs, that capture general or commonsense knowledge, to augment the information extracted from images by the state-of-the-art methods for image captioning. We compare the performance of image captioning systems that as measured by CIDEr-D, a performance measure that is explicitly designed for evaluating image captioning systems, on several benchmark data sets such as MS COCO. The results of our experiments show that the variants of the state-of-the-art methods for image captioning that make use of the information extracted from knowledge graphs can substantially outperform those that rely solely on the information extracted from images.
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