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Optimal information extraction of laser scanning dataset by scale-adaptive reduction

宋易恒 2018-05-08 浏览

Yufu Zang, Bisheng Yang


ABSTRACT: 

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.


KEY WORDS: Multi-scale, Surface variation, Radial basis function, Just-Noticeable-Difference, Degradation






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