Automatic Findings Generation for Distress Images Using In-Context Few-Shot Learning of Visual Language Model Based on Image Similarity and Text Diversity

Pub Date : 2024-04-20 DOI:10.20965/jrm.2024.p0353
Yuto Watanabe, Naoki Ogawa, Keisuke Maeda, Takahiro Ogawa, M. Haseyama
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Abstract

This study proposes an automatic findings generation method that performs in-context few-shot learning of a visual language model. The automatic generation of findings can reduce the burden of creating inspection records for infrastructure facilities. However, the findings must include the opinions and judgments of engineers, in addition to what is recognized from the image; therefore, the direct generation of findings is still challenging. With this background, we introduce in-context few-short learning that focuses on image similarity and text diversity in the visual language model, which enables text output with a highly accurate understanding of both vision and language. Based on a novel in-context few-shot learning strategy, the proposed method comprehensively considers the characteristics of the distress image and diverse findings and can achieve high accuracy in generating findings. In the experiments, the proposed method outperformed the comparative methods in generating findings for distress images captured during bridge inspections.
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利用基于图像相似性和文本多样性的视觉语言模型的上下文少镜头学习,自动生成窘迫图像的结论
本研究提出了一种自动生成检测结果的方法,该方法可对视觉语言模型进行语境内的少量学习。自动生成检测结果可以减轻创建基础设施检测记录的负担。然而,除了从图像中识别出的内容外,检查结果还必须包括工程师的意见和判断;因此,直接生成检查结果仍然具有挑战性。在这一背景下,我们引入了上下文少短句学习,该学习侧重于视觉语言模型中的图像相似性和文本多样性,从而在高度准确地理解视觉和语言的基础上实现文本输出。基于新颖的上下文短时学习策略,所提出的方法综合考虑了窘迫图像和多样化发现的特点,能够实现高精度的发现生成。在实验中,针对桥梁检测过程中捕获的窘迫图像,所提出的方法在生成检测结果方面优于其他比较方法。
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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