Lunar impact craters identification and age estimation with Chang'E data by deep and transfer learning
Chen Yang, Haishi Zhao, Lorenzo Bruzzone, Jon Atli Benediktsson,, Yanchun Liang, Bin Liu, Xingguo Zeng, Renchu Guan, Chunlai Li, Ziyuan, Ouyang

TL;DR
This paper presents a deep learning-based method using transfer learning and a two-stage detection and classification approach to identify and estimate the ages of lunar impact craters from Chang'E data, significantly expanding the crater catalog.
Contribution
It introduces a novel two-stage detection and age estimation framework leveraging deep neural networks and transfer learning for lunar crater analysis.
Findings
Identified 117,240 previously unrecognized craters.
Estimated ages for 79,243 craters larger than 3 km.
Enhanced understanding of lunar surface evolution.
Abstract
Impact craters, as "lunar fossils", are the most dominant lunar surface features and occupy most of the Moon's surface. Their formation and evolution record the history of the Solar System. Sixty years of triumphs in the lunar exploration projects accumulated a large amount of lunar data. Currently, there are 9137 existing recognized craters. However, only 1675 of them have been determined age, which is obviously not satisfactory to reveal the evolution of the Moon. Identifying craters is a challenging task due to their enormous difference in size, large variations in shape and vast presence. Furthermore, estimating the age of craters is extraordinarily difficult due to their complex and different morphologies. Here, in order to effectively identify craters and estimate their age, we convert the crater identification problem into a target detection task and crater age estimation into a…
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