论文标题

使用无人机和计算机视觉对FAST的反射器表面进行自动检查

Automated Optical Inspection of FAST's Reflector Surface using Drones and Computer Vision

论文作者

Li, Jianan, Jiang, Shenwang, Song, Liqiang, Peng, Peiran, Mu, Feng, Li, Hui, Jiang, Peng, Xu, Tingfa

论文摘要

五百米的光圈球形射电望远镜(FAST)是世界上最大的单次射电望远镜。它的大反射表面具有前所未有的灵敏度,但容易受到破坏,例如凹痕和孔,这是由自然呈现的掉落物体引起的。因此,及时,准确地检测表面缺陷对于Fast的稳定操作至关重要。传统的手动检查涉及人类检查员在视觉上爬上并检查大型表面,这是耗时且可能不可靠的过程。为了加速检查过程并提高其准确性,这项工作是通过将深度学习技术与无人机技术集成到快速检查的第一步。首先,无人机沿着预定的路线飞过表面。由于表面缺陷的规模差异很大并显示出较高的类相似性,因此直接应用现有的深层检测器来检测无人机图像上的缺陷非常容易缺失和错误识别缺陷。作为一种补救措施,我们介绍了交叉融合,这是一个专门的插入式操作,用于深探测器,可根据局部缺陷模式以优选择性的方式自适应地融合多层次功能。因此,强烈的语义和细粒细节在不同位置上动态融合,以支持对各种量表和类型的缺陷的准确检测。我们以AI为基础的无人机自动化检查是及时的,可靠的,并且具有良好的可访问性,可以保证快速的长期和稳定的操作。

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, directly applying existing deep detectors to detect defects on the drone imagery is highly prone to missing and misidentifying defects. As a remedy, we introduce cross-fusion, a dedicated plug-in operation for deep detectors that enables the adaptive fusion of multi-level features in a point-wise selective fashion, depending on local defect patterns. Consequently, strong semantics and fine-grained details are dynamically fused at different positions to support the accurate detection of defects of various scales and types. Our AI-powered drone-based automated inspection is time-efficient, reliable, and has good accessibility, which guarantees the long-term and stable operation of FAST.

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