关注变换:基于变换的图像字幕研究

Kshitij Ambilduke, Thanmay Jayakumar, Luqman Farooqui, Himanshu Padole, Anamika Singh
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引用次数: 0

摘要

图像字幕是一项具有挑战性的任务,它位于计算机视觉和自然语言处理的交叉点。有大量的作品产生了有意义的和现实的图像描述。最近,随着注意力机制和变形器的出现,在语言和视觉任务的建模方面发生了巨大的变化。然而,很少有广泛的研究根据这些方法的进展、优缺点来回顾这些方法。本文详细概述了用于处理图像字幕的基于变压器的模型。除此之外,我们还提供了用于图像字幕的各种预训练任务、数据集和指标的概述。最后,在COCO Captions数据集上比较了所有评审方法的性能。
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Attending to Transforms: A Survey on Transformer-based Image Captioning
Image captioning is a challenging task that lies at the intersection of Computer Vision and Natural Language Processing. There exists a legion of works that generate meaningful and realistic descriptions of images. Recently, with the advent of attention mechanisms and transformers, there has been a drastic shift in modelling both language and vision tasks. However, there are very few extensive studies that review these approaches based on their progression, advantages and disadvantages. This paper presents a detailed summary of transformer-based models employed for tackling image captioning. In addition to this, we provide an overview of various pre-training tasks, datasets and metrics used for image captioning. Finally, the performance of all the reviewed approaches are compared on the COCO Captions dataset.
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