Fusion of GPS and image data for accurate geocoding of street-level fisheye images

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

Abstract

Geospatial tools and techniques are becoming more important for land surveyors to do their off-location inspections of the urban areas. Accurate geocoded street-level images are the base of these tools. For these applications, an error of 2.5 meters is tolerable. However, the geographic coordinates provided by GPS have error up to 10 meters. In this paper we propose an automatic method to improve the accuracy of geocoding of street-level images by registering them to the accurate geocoded reference image, which is the satellite image. The proposed technique uses an unconstrained nonlinear optimization method to find local optimal solutions by matching high-level features and their relative locations. A global optimization method is then employed over all of the local solutions by applying a geometric constraint. We used our algorithm for correcting the geographic information of more than 2500 fisheye images and show that the proposed algorithm can achieve an average error of 1.19 meters along both x and y directions.
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融合GPS和图像数据,实现街道级鱼眼图像的精确地理编码
地理空间工具和技术对于土地测量员进行城市地区的异地检查变得越来越重要。精确的地理编码街道图像是这些工具的基础。对于这些应用,2.5米的误差是可以容忍的。然而,GPS提供的地理坐标误差高达10米。本文提出了一种自动提高街道图像地理编码精度的方法,即将街道图像与精确的地理编码参考图像(卫星图像)进行配准。该方法采用无约束非线性优化方法,通过匹配高级特征及其相对位置来寻找局部最优解。然后通过应用几何约束对所有局部解采用全局优化方法。利用该算法对2500多张鱼眼图像的地理信息进行校正,结果表明,该算法在x和y方向上的平均误差均为1.19米。
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