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OPTIMAL INFORMATION EXTRACTION OF LASER SCANNING DATASET BY SCALE-ADAPTIVE REDUCTION

机译:尺度自适应约简提取激光扫描数据集的最佳信息

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3D laser technology is widely used to collocate the surface information of object. For various applications, we need to extract a good perceptual quality point cloud from the scanned points. To solve the problem, most of existing methods extract important points based on a fixed scale. However, geometric features of 3D object come from various geometric scales. We propose a multi-scale construction method based on radial basis function. For each scale, important points are extracted from the point cloud based on their importance. We apply a perception metric Just-Noticeable-Difference to measure degradation of each geometric scale. Finally, scale-adaptive optimal information extraction is realized. Experiments are undertaken to evaluate the effective of the proposed method, suggesting a reliable solution for optimal information extraction of object.
机译:3D激光技术被广泛用于配置对象的表面信息。对于各种应用,我们需要从扫描的点中提取良好的感知质量点云。为了解决该问题,大多数现有方法基于固定比例尺提取重要点。但是,3D对象的几何特征来自各种几何比例。我们提出了一种基于径向基函数的多尺度施工方法。对于每个尺度,根据其重要性从点云中提取重要点。我们应用感知度量Just-Noticeable-Difference来衡量每个几何尺度的退化。最后,实现了尺度自适应的最优信息提取。通过实验评估了所提方法的有效性,提出了一种可靠的解决方案,可以对目标进行最优信息提取。

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