Image mosaicing of tunnel wall images using high level features

Leanne Attard, C. J. Debono, G. Valentino, M. D. Castro
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引用次数: 4

Abstract

This paper proposes a novel approach for position offset correction of images taken from a moving robotic platform in tunnel environments using image mosaicing. An image mosaic is formed by combining multiple images which capture overlapping components of a scene into a larger image. Unlike current image mosaicing methods, which use low-level features such as corners, our method uses binary edges as high-level features for image registration via template matching. This is necessary since such low-level features are absent or rare in tunnel environments. A shading correction algorithm is applied as a pre-processing step to adjust the uneven illumination present in this environment. This technique is simple and efficient while being robust to small camera rotations and small variations in camera distance from the wall. Experimental results show that our method contributes to good image mosaicing results with a low computational complexity, which is attractive for real-time image-based inspection applications.
基于高级特征的隧道壁图像拼接
提出了一种基于图像拼接的隧道环境下移动机器人平台图像位置偏移校正方法。图像拼接是通过将捕获场景重叠组件的多个图像组合成更大的图像而形成的。与当前使用角等低级特征的图像拼接方法不同,我们的方法使用二值边缘作为高级特征,通过模板匹配进行图像配准。这是必要的,因为这种底层特征在隧道环境中不存在或很少。采用阴影校正算法作为预处理步骤来调整该环境中存在的不均匀光照。这种技术简单而有效,同时对小的相机旋转和相机距离墙壁的小变化都很稳健。实验结果表明,该方法具有较好的图像拼接效果和较低的计算复杂度,可用于基于图像的实时检测应用。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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