SAM-GAN: Supervised Learning-Based Aerial Image-to-Map Translation via Generative Adversarial Networks

Jian Xu, Xiaowen Zhou, Chaolin Han, Bing Dong, Hongwei Li
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Abstract

Accurate translation of aerial imagery to maps is a direction of great value and challenge in mapping, a method of generating maps that does not require using vector data as traditional mapping methods do. The tremendous progress made in recent years in image translation based on generative adversarial networks has led to rapid progress in aerial image-to-map translation. Still, the generated results could be better regarding quality, accuracy, and visual impact. This paper proposes a supervised model (SAM-GAN) based on generative adversarial networks (GAN) to improve the performance of aerial image-to-map translation. In the model, we introduce a new generator and multi-scale discriminator. The generator is a conditional GAN model that extracts the content and style space from aerial images and maps and learns to generalize the patterns of aerial image-to-map style transformation. We introduce image style loss and topological consistency loss to improve the model’s pixel-level accuracy and topological performance. Furthermore, using the Maps dataset, a comprehensive qualitative and quantitative comparison is made between the SAM-GAN model and previous methods used for aerial image-to-map translation in combination with excellent evaluation metrics. Experiments showed that SAM-GAN outperformed existing methods in both quantitative and qualitative results.
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SAM-GAN:基于生成对抗网络的监督学习航空图像到地图的翻译
将航空影像精确地转换成地图是测绘中一个极具价值和挑战性的方向,这是一种不像传统测绘方法那样需要使用矢量数据来生成地图的方法。近年来,基于生成对抗网络的图像翻译技术取得了巨大的进步,使得航空图象到地图的翻译技术取得了长足的进步。尽管如此,生成的结果在质量、准确性和视觉效果方面可能会更好。本文提出了一种基于生成对抗网络(GAN)的监督模型(SAM-GAN),以提高航空图像到地图的翻译性能。在模型中,我们引入了一种新的产生器和多尺度鉴别器。生成器是一个条件GAN模型,从航拍图像和地图中提取内容和样式空间,并学习归纳航拍图像到地图样式转换的模式。我们引入图像样式损失和拓扑一致性损失来提高模型的像素级精度和拓扑性能。此外,利用地图数据集,结合优秀的评估指标,对SAM-GAN模型与以前用于航空图像到地图转换的方法进行了全面的定性和定量比较。实验表明,SAM-GAN在定量和定性结果上都优于现有方法。
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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