低照度下任务驱动双光图像融合增强方法研究

Bokun Liu, Junyu Wei, Shaojing Su, Xiaozhong Tong
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引用次数: 0

摘要

在弱光情况下,单个可见图像不能传输可靠信息,甚至造成目标信息的丢失。此时,可见光和红外图像融合的优势就会凸显出来。对于给定的一对可见光和红外图像,本文将其统称为双光图像。如何最大限度地利用它们的信息,提高融合图像的信息表达能力至关重要。传统的评价方法采用统计指标,与上游任务没有关联。本文研究了目标检测任务驱动下的图像融合方法。加入语义损失来指导双光图像融合。并且通过视觉增强模块,减弱不利因素(弱光等)对图像的影响,提高图像的信息表达水平。这样,最终得到的图像更有利于目标检测。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Research on Task-Driven Dual-Light Image Fusion and Enhancement Method under Low Illumination
In low light situations, a single visible image can not transmit reliable information, even cause the loss of the target information. At this point, the advantages of visible and infrared image fusion will be highlighted. For a given pair of visible and infrared images, they are collectively referred to as dual-light images in this paper. How to make the most of their information and improve the information expression ability of the fused image is crucial. The traditional evaluation methods use statistical indicators, which is not associated with the upstream task. In this paper, the image fusion method driven by the target detection task is studied. Semantic loss is added to guide the dual-light image fusion. Moreover, through the visual enhancement module, the impact of adverse factors ( low light, etc. ) on the image is weakened, and the information expression level of the image is improved. Thus, the final image is more beneficial to target detection.
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