Triangulated Irregular Network based Seamline Determination for Fast Image Stitching of Multiple UAV Images

S. Yoon, Taejung Kim
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Abstract

Abstract. To maintain the efficiency of UAV (unmanned aerial vehicle) remote sensing, rapid image stitching is essential to make multiple UAV images into a seamless mosaic image. Relief displacement introduces variations in object appearance for each image, causing mismatch errors at mosaic seamlines. Traditional approaches involve orthorectifying images using DSMs (digital surface models). While these approaches allow for accurate image stitching, they do not cope with the advantages of UAVs due to their time consumption. In contrast, fast image stitching techniques that do not use orthorectification are well suited for UAV image processing. Related researches have attempted to optimize seamlines to eliminate the errors caused by relief displacement without the use of DSMs. We propose to utilize a TIN (triangular irregular network) of tiepoints to effectively eliminate errors caused by relief displacement while maintaining the fast speed of image stitching. In this study, a TIN is constructed based image tiepoints whose ground coordinates have been obtained through bundle adjustment. The edges of the TIN are used to generate seamlines for image stitching, and the facets of the TIN are used to select minimal images for image stitching and to optimize seamlines. Image stitching results of our proposed method had small error of 1–2 pixels and the processing time of less than 10 minutes for 97 UAV images. This study showed that the proposed method could stitch multiple images while maintaining stable quality using only geometric clues of a TIN of tiepoints.
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基于三角形不规则网络的接缝线确定技术,用于快速拼接多张无人机图像
摘要为了保持无人机(UAV)遥感的效率,必须快速拼接图像,将多幅无人机图像拼接成一幅无缝的马赛克图像。地形位移会导致每幅图像的物体外观发生变化,从而造成拼接缝线处的不匹配误差。传统的方法是使用 DSM(数字表面模型)对图像进行正交矫正。虽然这些方法可以实现精确的图像拼接,但由于耗时长,无法发挥无人机的优势。相比之下,不使用正射矫正的快速图像拼接技术非常适合无人机图像处理。相关研究试图在不使用 DSM 的情况下优化接缝线,以消除浮雕位移造成的误差。我们建议利用 TIN(三角形不规则网络)连接点来有效消除浮雕位移造成的误差,同时保持图像拼接的快速性。在这项研究中,TIN 是基于通过捆绑调整获得地面坐标的图像坐标点构建的。TIN 的边缘用于生成图像拼接的接缝线,TIN 的面用于选择图像拼接的最小图像并优化接缝线。我们提出的方法的图像拼接结果误差小,仅为 1-2 像素,对 97 张无人机图像的处理时间不到 10 分钟。这项研究表明,建议的方法只需使用 TIN 的几何线索,就能拼接多幅图像,同时保持稳定的质量。
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