图像拼接
无人机
刀(考古)
计算机科学
涡轮叶片
人工智能
计算机视觉
海洋工程
工程类
涡轮机
航空航天工程
结构工程
遗传学
生物
作者
Cong Yao,Xun Liu,Hua Zhang,Yan Ke,John See
标识
DOI:10.1016/j.renene.2022.12.063
摘要
Accurate image stitching is crucial to wind turbine blade visualization and defect analysis. It is inevitable that drone-captured images for blade inspection are high resolution and heavily overlapped. This also necessitates the stitching-based deduplication process on detected defects. However, the stitching task suffers from texture-poor blade surfaces, unstable drone pose (especially off-shore), and the lack of public blade datasets that cater to real-world challenges. In this paper, we present a simple yet efficient algorithm for robust and accurate blade image stitching. To promote further research, we also introduce a new dataset, Blade30, which contains 1,302 real drone-captured images covering 30 full blades captured under various conditions (both on- and off-shore), accompanied by a rich set of annotations such as defects and contaminations, etc. The proposed stitching algorithm generates the initial blade panorama based on blade edges and drone-blade distances at the coarse-grained level, followed by fine-grained adjustments optimized by regression-based texture and shape losses. Our method also fully utilizes the properties of blade images and prior information of the drone. Experiments report promising accuracy in blade stitching and defect deduplication tasks in the vision-based wind turbine blade inspection scenario, surpassing the performance of existing methods.
科研通智能强力驱动
Strongly Powered by AbleSci AI