Dust storms may remarkably degrade the imaging quality of Martian orbiters and delay the progress of mapping the global topography and geomorphology. To address this issue, this paper presents an approach that reuses the image dehazing knowledge obtained on Earth to resolve the dust-removal problem on Mars. In this approach, we collect remote-sensing images captured by Tianwen-1 and manually select hundreds of clean and dusty images. Inspired by the haze formation process on Earth, we formulate a similar visual degradation process on clean images and synthesize dusty images sharing a similar feature distribution with realistic dusty images. These realistic clean and synthetic dusty image pairs are used to train a deep model that inherently encodes dust irrelevant features and decodes them into dust-free images. Qualitative and quantitative results show that dust storms can be effectively eliminated by the proposed approach, leading to obviously improved topographical and geomorphological details of Mars.
翻译:尘暴可能会显著地降低火星轨道飞行器的成像质量,并推迟绘制全球地形和地貌图的进度。为解决这一问题,本文件介绍了一种方法,重新利用在地球上获得的除尘知识,以解决火星上的清除尘问题。在这种方法中,我们收集天文一号所摄取的遥感图像,手动选择数百张干净和尘土的图像。在地球烟雾形成过程的启发下,我们在清洁图像上设计了一个类似的视觉降解过程,并合成灰尘图像,与现实的灰尘图像有着相似的特征分布。这些现实的清洁和合成灰尘图像配对被用来培养一种深层模型,将与灰尘无关的特征编码,并将其破解成无尘图像。定性和定量结果显示,拟议的方法可以有效地消除沙尘暴,从而明显改善火星的地形和地貌细节。