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Accuracy Improvement of Airborne Lidar Strip Adjustment by Using Height Data and Surface Feature Strength Information Derived from the Tensor Voting Algorithm

机译:使用张量投票算法的高度数据和表面特征强度信息,通过使用张量投票算法的高度数据和表面特征强度信息精确提高

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摘要

Light detection and ranging (Lidar) spatial coordinates, especially height data, and the intensity data of point clouds are often used for strip adjustment in airborne Lidar. However, inconsistency in the intensity data and then intensity gradient data because of the variations in the incidence and reflection angles in the scanning direction and sunlight incident in the same areas of different strips may cause problems in the Lidar strip adjustment process. Instead of the Lidar intensity, a new type of data, termed surface feature strength data derived by using the tensor voting method, were introduced into the strip adjustment process using the partial least squares method in this study. These data are consistent in the same regions of different strips, especially on the roofs of buildings. Our experimental results indicated a significant improvement in the accuracy of strip adjustment results when both height data and surface feature strength data were used.
机译:光检测和测距(LIDAR)空间坐标,尤其是高度数据以及点云的强度数据通常用于空气传播的LIDAR中的条带调节。 然而,由于扫描方向中的扫描方向和反射角中的变化以及在不同条带的相同区域中发生的扫描方向和阳光发生的变化可能导致LIDAR条带调节过程中的问题,因此强度数据和强度梯度数据不一致。 使用本研究中的局部最小二乘法将通过使用张量投票方法引入了通过本研究中的局部最小二乘法引入了通过使用张量投票方法而导出的新型数据的LIDAR强度,而是通过使用张量投票方法导出的曲面特征强度数据。 这些数据在不同条带的相同区域中一致,特别是在建筑物的屋顶上。 我们的实验结果表明,当使用高度数据和表面特征强度数据时,带有剥离调整的准确性的显着提高。

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