Automatic Position Registration of Street-level Fisheye Images into Aerial Image Using Line Structures and Mutual Information

M. Zouqi, J. Samarabandu, Yanbo Zhou
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引用次数: 1

Abstract

Geospatial imaging is a relatively new term which is increasingly becoming more important for both government and commercial sectors. Images taken at street level can be geo-coded using a camera equipped with a built-in GPS device. However, the location that GPS provides are prone to errors up to 10 meters. In this paper we propose an algorithm to find the accurate location of a street-level image taken with a fisheye camera within a satellite image. Our algorithm is based on straight line detection and matching using Hough transform and gradient information around the detected lines. The rotation parameter is obtained using the best corresponding lines. Then mutual information (MI) is used as the similarity measure along the best match lines to determine the translational parameters. Moreover, as the correction process is carried out for a consecutive series of images rather than an individual image, the final location of each image will be assessed to be consistent with its neighboring images.
基于线结构和互信息的街道级鱼眼图像航拍图像位置自动配准
地理空间成像是一个相对较新的术语,对政府和商业部门越来越重要。在街道上拍摄的图像可以使用内置GPS设备的相机进行地理编码。然而,GPS提供的位置容易出现高达10米的误差。在本文中,我们提出了一种在卫星图像中找到用鱼眼相机拍摄的街道图像的精确位置的算法。我们的算法基于直线检测和匹配,利用霍夫变换和检测线周围的梯度信息。利用最佳对应线获得旋转参数。然后利用互信息(MI)作为沿最佳匹配线的相似性度量来确定平移参数。此外,由于校正过程是针对连续的一系列图像而不是单个图像进行的,因此将评估每个图像的最终位置是否与其相邻图像一致。
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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