Remote Sensing (Jan 2022)

Lunar Crater Detection on Digital Elevation Model: A Complete Workflow Using Deep Learning and Its Application

  • Xuxin Lin,
  • Zhenwei Zhu,
  • Xiaoyuan Yu,
  • Xiaoyu Ji,
  • Tao Luo,
  • Xiangyu Xi,
  • Menghua Zhu,
  • Yanyan Liang

DOI
https://doi.org/10.3390/rs14030621
Journal volume & issue
Vol. 14, no. 3
p. 621

Abstract

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Impact cratering process is the major geologic activity on the surface of the Moon, and the spatial distribution and size-frequency distribution of lunar craters are indicative to the bombardment history of the Solar System. The substantial efforts on the development of automated crater detection algorithms (CDAs) have been carried out on the images from the remote sensing observations. Recently, CDAs via convolutional neural network (CNN) on digital elevation model (DEM) has been developed as it can combine the discrimination ability of CNN with the robust characteristic of the DEM data. However, most of the existing algorithms adopt a traditional two-stage detection pipeline including an edge segmentation and a template matching step. In this paper, we attempt to reduce the gap between the existing DEM-based CDAs and the advanced CNN methods for object detection, and propose a complete workflow including an end-to-end deep learning pipeline for lunar crater detection, in particular for craters smaller than 50 km in diameter. Based on the workflow, we benchmark nine representative CNN models involving three popular types of detection architectures. Moreover, we elaborate on the practical application of the proposed workflow, and provide an example method to demonstrate the performance advantage in terms of the precision (82.97%) and recall (79.39%). Furthermore, we develop a crater verification tool to manually validate the detection results, and the visualization results show that our detected craters are reasonable and can be used as a supplement to the existing hand-labeled datasets.

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