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Bundle adjustment in large-scale 3D reconstructions based on underwater robotic surveys

机译:基于水下机器人调查的大型3D重建中的捆绑调整

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In this paper we present a technique to generate highly accurate reconstructions of underwater structures by employing bundle adjustment on visual features, rather than relying on a filtering approach using navigational sensor data alone. This system improves upon previous work where an extended information filter was used to estimate the vehicle trajectory. This filtering technique, while very efficient, suffers from the shortcoming that linearization errors are irreversibly incorporated into the vehicle trajectory estimate. This drawback is overcome by applying smoothing and mapping to the full problem. In contrast to the filtering approach, smoothing and mapping techniques solve for the entire vehicle trajectory and landmark positions at once by performing bundle adjustment on all the visual measurements taken at each frame. We formulate a large nonlinear least-squares problem where we minimize the pixel projection error of each of the landmark measurements. The technique is demonstrated on a large-scale underwater dataset, and it is also shown that superior results are achieved with smoothing and mapping as compared to the filtering approach.
机译:在本文中,我们通过在视觉特征上采用捆绑调整来提出一种技术来生成高度精确的水下结构重建,而不是仅使用导航传感器数据来依赖于过滤方法。该系统在使用扩展信息滤波器估计车辆轨迹的过程中提高了先前的工作。这种过滤技术,同时非常有效地遭受线性化误差不可逆转地结合到车辆轨迹估计中的缺点。通过对完整问题应用平滑和映射来克服此缺点。与滤波方法相比,通过对在每个帧处拍摄的所有视觉测量上执行束调节,平滑和映射技术立即解决整个车辆轨迹和地标位置。我们制定了一个大的非线性最小二乘问题,在那里我们最小化了每个地标测量的像素投影误差。该技术在大规模的水下数据集上进行说明,并且还示出了与滤波方法相比,通过平滑和映射实现了优异的结果。

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