Craters are one of the most studied planetary features used for different
scientific analyses, such as estimation of surface age and surface processes.
Satellite images utilized for crater detection often have low resolution (LR)
due to hardware constraints and transmission time. Super-resolution (SR) is a
practical and cost-effective solution; however, most SR approaches work on
fixed integer scale factors, i.e., a single model can generate images of a
specific resolution. In practical applications, SR on multiple scales provides
various levels of detail, but training for each scale is resource-intensive.
Therefore, this paper proposes a system for crater detection assisted with an
arbitrary scale super-resolution approach (i.e., a single model can be used for
multiple scale factors) for the lunar surface. Our work is composed of two
subsystems. The first sub-system employs an arbitrary scale SR approach to
generate super-resolved images of multiple resolutions. Subsequently, the
second sub-system passes super-resolved images of multiple resolutions to a
deep learning-based crater detection framework for identifying craters on the
lunar surface. Employed arbitrary scale SR approach is based on a combination
of convolution and transformer modules. For the crater detection sub-system, we
utilize the Mask-RCNN framework. Using SR images of multiple resolutions, the
proposed system detects 13.47% more craters from the ground truth than the
craters detected using only the LR images. Further, in complex crater settings,
specifically in overlapping and degraded craters, 11.84% and 15.01% more
craters are detected as compared to the crater detection networks using only
the LR images. The proposed system also leads to better localization
performance, 3.19% IoU increment compared to the LR imagesComment: 15 pages, 8 figures, 8 Table