基于改进型 UNet++ 和 YOLOv5 的新月面线提取方法

Pengcheng Yan, Jiarui Liang, Xiaolin Tian, Yikui Zhai
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摘要

线状构造是一种独特的地质结构。研究月球线状构造对了解月球表面的历史和演变具有重要意义。然而,现有的地理特征提取方法并不适合月球线状构造的提取。本文基于改进的-UNet++ 和 YOLOv5,提出了一种新的线状结构提取方法。首先,根据 LROC 的 CCD 数据创建包含线状结构的新线状数据集。同时,在 UNet++ 的向下采样部分用 VGG 块替换残余块,并在每层之间添加关注块。其次,对改进的 UNet++ 和 YOLO 网络进行训练,以分别执行物体检测和线状结构的语义分割。最后,提出了一种多边形匹配策略,以综合对象检测和语义分割的结果。实验结果表明,在线状结构的实例分割方面,与目前的主流网络和原始 UNet++ 网络相比,这种新方法的性能相对更好、更稳定。此外,多边形匹配策略在线状结构实例分割结果中能够实现更精确的边缘细节。
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A New Lunar Lineament Extraction Method Based on Improved UNet++ and YOLOv5
Lineament is a unique geological structure. The study of Lunar lineament structure has great significance on understanding its history and evolution of Lunar surface. However, the existing geographic feature extraction methods are not suitable for the extraction of Lunar lineament structure. In this paper, a new lineament extraction method is proposed based on improved-UNet++ and YOLOv5. Firstly, new lineament dataset is created containing lineaments structure based on CCD data from LROC. At same time the residual blocks are replaced with the VGG blocks in the down sample part of the UNet++ with adding the attention block between each layer. Secondly, the improved-UNet++ and YOLO networks are trained to execute the object detection and semantic segmentation of lineament structure respectively. Finally, a polygon-match strategy is proposed to combine the results of object detection and semantic segmentation. The experiment result indicate that this new method has relatively better and more stable performance compared with current mainstream networks and the original UNet++ network in the instance segmentation of lineament structure. Additionally, the polygon-match strategy is able to perform preciser edge detail in the instance segmentation of lineament structure result.
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