微无人机航拍图像的增量、正校正和不依赖回路拼接

S. Yahyanejad, M. Quaritsch, B. Rinner
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引用次数: 13

摘要

本文对低空微型飞行器航拍图像序列的正校正和增量拼接问题进行了深入研究。现有的大多数方法都是利用全局优化(在图像序列中存在循环)来分配和/或元数据,以减轻累积的拼接误差。然而,如果通过研究误差的来源来减少误差,则可以改善拼接结果。无人机航空图像拼接主要受到以下三个重要误差来源的影响:1)由于使用不平整的地面控制点(gcp)进行图像配准而导致的弱单应性;2)相机校准和图像校正不良;3)缺乏定义良好的投影模型(圆柱形,平面等),从而导致不适当的转换模型。研究了利用深度图从同一平面寻找特征、几何畸变校正以及结合适当选择投影和变换模型对拼接的影响。通过减少这些误差,我们进一步量化了马赛克中正校正的改进,并展示了对现实世界马赛克的改进。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Incremental, orthorectified and loop-independent mosaicking of aerial images taken by micro UAVs
In this paper we survey thoroughly the problem of orthorectified and incremental image mosaicking of a sequence of aerial images taken from low-altitude micro aerial vehicles. Most of existing approaches have been exploiting the global optimization (in presence of a loop in the image sequences) to distribute and/or metadata to mitigate the accumulating stitching error. However, the resulting mosaic can be improved if the errors are diminished by studying their sources. Mostly the UAV aerial image mosaicking is affected by the following three important sources of error: i) a weak homography as a result of using unleveled ground control points (GCPs) for image registration, ii) a poor camera calibration and image rectification, and iii) deficiency of a well-defined projection model (cylindrical, planar, etc) and consequently an inappropriate transformation model. We investigate the influences of using a depth map to find the features from the same plane, geometric distortion correction and combining the appropriate choice of projection and transformation model for the mosaicking. We further quantify the improvement of orthorectification in mosaics by mitigating those errors and demonstrate the improvement on real-world mosaics.
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