A Context Semantic Auxiliary Network for Image Captioning

Inf. Comput. Pub Date : 2023-07-20 DOI:10.3390/info14070419
Jianying Li, Xiangjun Shao
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Abstract

Image captioning is a challenging task, which generates a sentence for a given image. The earlier captioning methods mainly decode the visual features to generate caption sentences for the image. However, the visual features lack the context semantic information which is vital for generating an accurate caption sentence. To address this problem, this paper first proposes the Attention-Aware (AA) mechanism which can filter out erroneous or irrelevant context semantic information. And then, AA is utilized to constitute a Context Semantic Auxiliary Network (CSAN), which can capture the effective context semantic information to regenerate or polish the image caption. Moreover, AA can capture the visual feature information needed to generate a caption. Experimental results show that our proposed CSAN outperforms the compared image captioning methods on MS COCO “Karpathy” offline test split and the official online testing server.
一种用于图像标注的上下文语义辅助网络
图像字幕是一项具有挑战性的任务,它为给定的图像生成一个句子。早期的字幕方法主要是对图像的视觉特征进行解码,生成字幕句子。然而,视觉特征缺乏上下文语义信息,而上下文语义信息对于生成准确的标题句至关重要。为了解决这一问题,本文首先提出了注意感知(Attention-Aware, AA)机制,该机制可以过滤掉错误或不相关的上下文语义信息。然后利用AA构成上下文语义辅助网络(Context Semantic Auxiliary Network, CSAN),捕获有效的上下文语义信息,对图像标题进行再生或修饰。此外,AA可以捕获生成标题所需的视觉特征信息。实验结果表明,本文提出的CSAN在MS COCO“Karpathy”离线测试分割和官方在线测试服务器上优于对比图像字幕方法。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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