Due to the reduction of technological costs and the increase of satellites launches, satellite images are becoming more popular and easier to obtain. Besides serving benevolent purposes, satellite data can also be used for malicious reasons such as misinformation. As a matter of fact, satellite images can be easily manipulated relying on general image editing tools. Moreover, with the surge of Deep Neural Networks (DNNs) that can generate realistic synthetic imagery belonging to various domains, additional threats related to the diffusion of synthetically generated satellite images are emerging. In this paper, we review the State of the Art (SOTA) on the generation and manipulation of satellite images. In particular, we focus on both the generation of synthetic satellite imagery from scratch, and the semantic manipulation of satellite images by means of image-transfer technologies, including the transformation of images obtained from one type of sensor to another one. We also describe forensic detection techniques that have been researched so far to classify and detect synthetic image forgeries. While we focus mostly on forensic techniques explicitly tailored to the detection of AI-generated synthetic contents, we also review some methods designed for general splicing detection, which can in principle also be used to spot AI manipulate images
翻译:由于技术成本的降低和卫星发射的增加,卫星图像越来越受人欢迎,更容易获得。卫星数据除了用于慈善目的外,还可用于恶意原因,如错误信息等。事实上,卫星图像可以很容易地依靠一般图像编辑工具加以操纵。此外,随着深神经网络的激增,能够产生属于不同领域的现实合成图像,合成产生的卫星图像的传播正面临更多的威胁。本文我们审查了艺术现状,即卫星图像的生成和操作。我们特别侧重于从零到零合成卫星图像的生成,以及以图像转换技术的方式对卫星图像进行语义处理,包括将从一种传感器获得的图像转换为另一种传感器。我们还描述了迄今为止为分类和探测合成图像伪造而研究的法医探测技术。我们主要侧重于专门为检测人工合成内容而设计的法医技术。我们还审查了一些设计用于一般螺纹检测的方法,这些方法原则上也可以用于现场的AI图像操纵。