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首页> 外文期刊>International Journal of Computer Vision >Scalable extrinsic calibration of omni-directional image networks
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Scalable extrinsic calibration of omni-directional image networks

机译:全方位图像网络的可扩展外部校准

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We describe a linear-time algorithm that recovers absolute camera orientations and positions, along with uncertainty estimates, for networks of terrestrial image nodes spanning hundreds of meters in outdoor urban scenes. The algorithm produces pose estimates globally consistent to roughly 0.1degrees (2 milliradians) and 5 centimeters on average, or about four pixels of epipolar alignment. We assume that adjacent nodes observe overlapping portions of the scene, and that at least two distinct vanishing points are observed by each node. The algorithm decouples registration into pure rotation and translation stages. The rotation stage aligns nodes to commonly observed scene line directions; the translation stage assigns node positions consistent with locally estimated motion directions, then registers the resulting network to absolute (Earth) coordinates. The paper's principal contributions include: extension of classic registration methods to large scale and dimensional extent; a consistent probabilistic framework for modeling projective uncertainty; and a new hybrid of Hough transform and expectation maximization algorithms. We assess the algorithm's performance on synthetic and real data, and draw several conclusions. First, by fusing thousands of observations the algorithm achieves accurate registration even in the face of significant lighting variations, low-level feature noise, and error in initial pose estimates. Second, the algorithm's robustness and accuracy increase with image field of view. Third, the algorithm surmounts the usual tradeoff between speed and accuracy; it is both faster and more accurate than manual bundle adjustment. [References: 68]
机译:我们描述了一种线性时间算法,该算法可恢复室外城市场景中跨越数百米的地面图像节点网络的绝对摄像机方向和位置以及不确定性估计。该算法产生的姿态估计值总体上与平均约0.1度(2毫弧度)和5厘米(即对极线对齐的四个像素)一致。我们假设相邻节点观察到场景的重叠部分,并且每个节点观察到至少两个不同的消失点。该算法将配准解耦为纯旋转和平移阶段。旋转阶段将节点与通常观察到的场景线方向对齐;平移阶段分配与本地估计的运动方向一致的节点位置,然后将结果网络注册到绝对(地球)坐标。该论文的主要贡献包括:将经典的注册方法扩展到大规模和规模化的范围;用于建模不确定性的一致概率框架;以及Hough变换和期望最大化算法的新混合。我们评估了算法在综合和真实数据上的性能,并得出了一些结论。首先,通过融合成千上万的观察值,即使面对明显的光照变化,低级特征噪声和初始姿势估计错误,该算法也可以实现准确的配准。其次,该算法的鲁棒性和准确性随着图像视野的增加而增加。第三,该算法超越了速度和精度之间通常的权衡;它比手动捆绑包调整更快,更准确。 [参考:68]

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