Automated Optical Inspection of FAST's Reflector Surface using Drones and Computer Vision
Jianan Li, Shenwang Jiang, Liqiang Song, Peiran Peng, Feng Mu, Hui Li,, Peng Jiang, Tingfa Xu

TL;DR
This paper presents an innovative drone-based automated inspection system for FAST's reflector surface, combining deep learning with a novel cross-fusion technique to improve defect detection accuracy and efficiency.
Contribution
It introduces a new cross-fusion method for deep detectors and demonstrates its application in drone-assisted surface defect inspection for large telescopes.
Findings
Enhanced defect detection accuracy with the cross-fusion technique
Reduced inspection time compared to manual methods
Improved reliability and accessibility of surface inspection
Abstract
The Five-hundred-meter Aperture Spherical radio Telescope (FAST) is the world's largest single-dish radio telescope. Its large reflecting surface achieves unprecedented sensitivity but is prone to damage, such as dents and holes, caused by naturally-occurring falling objects. Hence, the timely and accurate detection of surface defects is crucial for FAST's stable operation. Conventional manual inspection involves human inspectors climbing up and examining the large surface visually, a time-consuming and potentially unreliable process. To accelerate the inspection process and increase its accuracy, this work makes the first step towards automating the inspection of FAST by integrating deep-learning techniques with drone technology. First, a drone flies over the surface along a predetermined route. Since surface defects significantly vary in scale and show high inter-class similarity,…
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Taxonomy
TopicsOptical measurement and interference techniques · Antenna Design and Optimization · Radio Astronomy Observations and Technology
