基于冲浪特征和哈里斯角算法的无人机图像匹配

Cheng Cheng, Xuzhi Wang, Xiangjie Li
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引用次数: 10

摘要

加速鲁棒特征(SURF)算法在图像匹配过程中具有良好的尺度不变性。该方法速度快,但在特征点提取上不够稳定。Harris算法是一种高效的角点检测算法,但无法处理图像中尺度变化的问题。因此,本文在图像匹配过程中考虑了加速鲁棒特征算法和哈里斯算法的结合。首先,利用Harris算法提取两幅图像的角点,得到特征点集;然后利用SURF算法提取两个角点集的特征点,得到新的点集。最后,采用随机样本一致性方法去除误差点,得到精确的匹配点集,对两幅图像进行匹配。实验表明,两种算法的结合可以提高无人机图像匹配的质量,具有高效率和较强的鲁棒性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
UAV image matching based on surf feature and harris corner algorithm
The Speed-up Robust Features (SURF) algorithm has a good scale invariance in the image matching process. Its speed is fast, but it is not stable enough in the feature point extraction. Harris algorithm is an efficient corner detection algorithm, but it cannot handle the issue of scale variance in the image. Therefore, this paper considers the combination of the Speedup Robust Features algorithm and Harris algorithm in the image matching process. First, we use the Harris algorithm to extract the corner points of the two images and obtain the feature point set. Then we use the SURF algorithm to extract the feature points of the two corner set and obtain the new point set. Finally, we use the random sample consensus method to remove the error points, achieve an exact match points set and match the two images. Experiments show that the combination of the two algorithms can improve the quality of Unmanned Aerial Vehicle image matching with high efficiency and strong robustness.
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