DeepUnseen:基于集成视觉语言模型的不可预测事件识别

Hidetomo Sakaino, Natnapat Gaviphat, Louie Zamora, Alivanh Insisiengmay, Dwi Fetiria Ningrum
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引用次数: 0

摘要

基于深度学习的分割模型为场景理解提供了许多好处。然而,这些模型还没有被用于和测试不可预测的事件,如飓风、龙卷风和台风等自然灾害。由于低照度、强降雨和风暴会降低图像质量,因此仅实现单一的最先进(SOTA)模型可能无法正确识别物体。此外,还有更多对分割的增强尚未解决。因此,本文提出了一种基于视觉语言的深度学习模型,即DeepUnseen,通过整合不同的深度学习模型,利用类和分割的优势。使用灾难和交通事故场景的实验结果表明,SOTA深度学习模型优于单一SOTA深度学习模型。此外,还获得了语义更精细的类。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
DeepUnseen: Unpredicted Event Recognition Through Integrated Vision-Language Models
Deep Learning-based segmentation models provide many benefits for scene understanding. However, such models have not been used and tested for unpredicted events like natural disasters by hurricanes, tornados, and typhoons. Since low illumination, heavy rainfall, and storms can degrade image quality, implementing a single state-of-the-art (SOTA) model only may fail to recognize objects correctly. Also, there are more enhancements to segmentation that remain unsolved. Thus, this paper proposes a vision-language-based DL model, namely, DeepUnseen, by integrating different Deep Learning models with the benefits of class and segmentation. Experimental results using disaster and traffic accident scenes showed superiority over a single SOTA Deep Learning model. Moreover, better semantically refined classes are obtained.
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