高速铁路场景图像融合方法综述

Yuqiao Zeng , Xu Wang , Hongwei Zhao , Yi Jin , George A. Giannopoulos , Yidong Li
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引用次数: 2

摘要

图像融合是指从不同来源或模态的图像中提取有意义的信息,然后将其融合,生成更有信息性的图像,有利于后续应用。近年来,不断增长的数据和计算资源推动了深度学习的发展,图像融合技术在传统融合方法的基础上不断催生新的深度学习融合方法。然而,高速铁路作为生活的重要组成部分,其图像数据具有独特的行业特征,这导致了不同的图像融合技术在高速铁路场景中具有不同的融合效果。本研究工作首先介绍了图像融合的主流技术分类,进一步描述了图像融合技术在高速铁路场景中可能结合的下游任务,并介绍了图像聚变的评估指标,随后进行了一系列主客观实验,全面评价了每种图像融合方法在不同交通场景下的性能水平,最终为未来轨道交通领域的图像融合研究提供了一些可能。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Image fusion methods in high-speed railway scenes: A survey

Image fusion refers to extracting meaningful information from images of different sources or modalities, and then fusing them to generate more informative images that are beneficial for subsequent applications. In recent years, the growing data and computing resources have promoted the development of deep learning, and image fusion technology has continued to spawn new deep learning fusion methods based on traditional fusion methods. However, high-speed railroads, as an important part of life, have their unique industry characteristics of image data, which leads to different image fusion techniques with different fusion effects in high-speed railway scenes. This research work first introduces the mainstream technology classification of image fusion, further describes the downstream tasks that image fusion techniques may combine within high-speed railway scenes, and introduces the evaluation metrics of image fusion, followed by a series of subjective and objective experiments to completely evaluate the performance level of each image fusion method in different traffic scenes, and finally provides some possible future image fusion in the field of rail transportation of research.

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