图像拼接
计算机科学
人工智能
计算机视觉
深度学习
高动态范围
特征提取
变压器
稳健性(进化)
杠杆(统计)
特征学习
图像配准
模式识别(心理学)
图像分割
匹配(统计)
图像融合
实体造型
无监督学习
可视化
数据建模
像素
分割
上下文图像分类
作者
Linwei Qiu,Chang Liu,Gongzhe Li,Xiaomeng Dong,Fengying Xie,Zhenwei Shi
标识
DOI:10.1109/jstars.2025.3609808
摘要
Remote-sensing images frequently exhibit complex and extensive geometric distortions due to the characteristics of imaging platforms and conditions. These distortions not only increase the errors in feature extraction and matching of traditional stitching methods but also hinder the learning process of the model in recent deep stitching solutions. To address these problems, we propose an unsupervised deep stitching pipeline for remote-sensing images (UDRSIS). Firstly, it includes a progressive alignment procedure that comprises coarse-grained alignment (CGA) and fine-grained alignment (FGA) for accurate and robust registration. A Homography Transformer (HomoFormer) architecture is devised to provide a rigid and fundamental matching of regions in CGA based on contrast and non-local features. Subsequently, a Thin-Plate Spline Transformer (TPSFormer) is developed to ensure flexible shape preservation in FGA. Additionally, we endow our HomoFormer with SIFT-Guided Curriculum Learning (SGCL) to boost the alignment's ability to handle distortions. Finally, a Seam Transformer (SeamFormer) is designed to seamlessly composite the stitched image using omnidirectional composition masks. Given the absence of an evaluation benchmark, we construct a comprehensive dataset, namely Unsupervised Deep Stitching of Aerial Images Dataset (UDAIS-D). The simulated data within it encompasses a wide range of geometric distortions and radiometric distortions as well as other noises are also considered. The real-world data is collected from actual remote-sensing imaging results. Considering the challenge of evaluating the stitching quality, we present Large Visual Language Models (LVLMs)-based metrics to leverage their powerful capabilities for the evaluation of remote-sensing image mosaicking. Numerous experiments demonstrate that our method surpasses other state-of-the-art solutions. The codes and data will be available at https://github.com/yyywxk/UDRSIS.
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