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Automatic sensor orientation using horizontal and vertical line feature constraints

机译:使用水平和垂直线特征约束的自动传感器定向

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To improve the accuracy of sensor orientation using calibrated aerial images, this paper proposes an automatic sensor orientation method utilizing horizontal and vertical constraints on human-engineered structures, addressing the limitations faced with sub-optimal number of Ground Control Points (GCPs) within a scene. Related state-of-the-art methods rely on structured building edges, and necessitate manual identification of end points. Our method makes use of line-segments but eliminates the need for these matched end points, thus eliminating the need for inefficient manual intervention.To achieve this, a 3D line in object space is represented by the intersection of two planes going through two camera centers. The normal vector of each plane can be written as a function of a pair of azimuth and elevations angles. The normal vector of the 3D line can be expressed by the cross product of these two plane's normal vectors. Then, we create observation functions of horizontal and vertical line constraints based on the zero vector cross-product and the dot-product of the normal vector of the 3D lines. The observation functions of the horizontal and vertical lines are then introduced into a hybrid Bundle Adjustment (BA) method as constraints, including observed image points as well as observed line segment projections. Finally, to assess the feasibility and effectiveness of the proposed method, simulated and real data are tested. The results demonstrate that, in cases with only 3 GCPs, the accuracy of the proposed method utilizing line features extracted automatically, is increased by 50%, compared to a BA using only point constraints.
机译:为了提高使用校准后的航拍图像的传感器定向的准确性,本文提出了一种在人体工程结构上利用水平和垂直约束的自动传感器定向方法,解决了场景中地面控制点(GCP)数量不足的局限性。相关的最新方法依赖于结构化的建筑物边缘,并且需要手动识别终点。我们的方法利用线段,但无需使用这些匹配的端点,因此无需进行低效的手动干预。为此,对象空间中的3D线由穿过两个相机中心的两个平面的交点表示。每个平面的法向矢量可以写为一对方位角和仰角的函数。 3D线的法线向量可以由这两个平面的法线向量的叉积表示。然后,我们基于零向量叉积和3D线法线向量的点积创建水平和垂直线约束的观察函数。然后将水平线和垂直线的观察函数作为约束引入混合束调整(BA)方法中,包括观察到的图像点以及观察到的线段投影。最后,为了评估该方法的可行性和有效性,对模拟数据和真实数据进行了测试。结果表明,与仅使用点约束的BA相比,在仅具有3个GCP的情况下,所提出的利用自动提取的线特征的方法的准确性提高了50%。

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