无人机图像拼接使用局部最小二乘对齐

Qi Wan, Linbo Luo, Jun Chen, Yong Wang, Donghai Guo
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引用次数: 1

摘要

提出了一种基于局部最小二乘对齐的无人机图像拼接策略,目的是将多幅重叠的无人机图像有效拼接成一幅自然全景图像。现有的传统方法采用简单的单应性,无法处理输入的无人机图像存在视差的情况,拼接结果容易出现伪影。为了使拼接结果不受上述限制,我们将该方法分为局部最小二乘对齐和全局相似度约束两步。从传统特征提取方法获得的初始特征集出发,构建基于视差误差的鲁棒对准能量,自适应消除视差影响。利用最小二乘估计可以有效地将能量最小化。结合全局相似度约束,可以灵活地提高搜索结果的自然度。实验表明,与其他先进的拼接方法相比,我们的拼接策略可以更有效地消除视差效果,获得更自然的效果。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Drone Image Stitching Using Local Least Square Alignment
This paper proposes a strategy for drone image stitching using local least square alignment, which aims to effectively stitch multiple overlapping drone images into a natural panoramic image. Existing traditional methods using simple homography cannot handle the situation that the input drone images have parallax effect, and the mosaic result always suffers from artifacts. In order to achieve natural-looking stitching results without the above limitation, we divide the proposed method into the following two steps, namely, local least square alignment and global similarity constraint. Starting from initial feature sets obtained by traditional feature extraction methods, we construct a robust alignment energy based on parallax errors to adaptively eliminate parallax effects. The energy can be efficiently minimized used least square estimate. Combined with global similarity constraint, our proposed strategy can flexibly improve the naturalness of the results. Experiments show that our stitching strategy can more effectively eliminate parallax effects and achieve natural-looking results compared to other state-of-the-art methods.
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