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A state-of-the-art review of automated extraction of rock mass discontinuity characteristics using three-dimensional surface models 被引量:4

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摘要 In the last two decades,significant research has been conducted in the field of automated extraction of rock mass discontinuity characteristics from three-dimensional(3D)models.This provides several methodologies for acquiring discontinuity measurements from 3D models,such as point clouds generated using laser scanning or photogrammetry.However,even with numerous automated and semiautomated methods presented in the literature,there is not one single method that can automatically characterize discontinuities accurately in a minimum of time.In this paper,we critically review all the existing methods proposed in the literature for the extraction of discontinuity characteristics such as joint sets and orientations,persistence,joint spacing,roughness and block size using point clouds,digital elevation maps,or meshes.As a result of this review,we identify the strengths and drawbacks of each method used for extracting those characteristics.We found that the approaches based on voxels and region growing are superior in extracting joint planes from 3D point clouds.Normal tensor voting with trace growth algorithm is a robust method for measuring joint trace length from 3D meshes.Spacing is estimated by calculating the perpendicular distance between joint planes.Several independent roughness indices are presented to quantify roughness from 3D surface models,but there is a need to incorporate these indices into automated methodologies.There is a lack of efficient algorithms for direct computation of block size from 3D rock mass surface models.
出处 《Journal of Rock Mechanics and Geotechnical Engineering》 SCIE CSCD 2021年第4期920-936,共17页 岩石力学与岩土工程学报(英文版)
基金 funded by the U.S.National Institute for Occupational Safety and Health(NIOSH)under the Contract No.75D30119C06044。
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  • 1Bian, Z., Tong, R.F., 2011. Feature-preserving mesh denois- ing based on vertices classification. Cornput. Aided Geom. Des., 28(1):50-64. [doi:10.1016/j.cagd.2010.10. 001].
  • 2Chen, C.Y., Cheng, K.Y., 2008. A sharpness-dependent filter for recovering sharp features in repaired 3D mesh models. IEEE Trans. Visual. Comput. Graph., 14(1):200-212. [doi:10.1109/TVCG.2007.70625].
  • 3Demarsin, K., Vanderstraeten, D., Volodine, T., Roose, D., 2007. Detection of closed sharp edges in point clouds using normal estimation and graph theory. Cornput,- Aided Des., 39(4):276-283. [doi:10.1016/j.cad.2006.12. oo51.
  • 4di Angelo, L., di Stefano, P., 2010. C1 continuities detectiou in triangular meshes. Comput.-Aided Des., 42(9):828- 839. Idol: 10.1016/j.cad.2010.05.005].
  • 5Fan, H.Q.I Yu, Y.Z., Peng, Q.S., 2010. Robust feature- preserving mesh denoising based on consistent subneigh- borhoods. IEEE Trans. Visual. Comput. Graph., 16(2):312-324. [doi:10.1109/TVCG.2009.70].
  • 6Fleishman, S., Drori, I., Cohen-Or, D., 2003. Bilateral Mesh Denoising. SIGGRAPH, p.950-953. [doi:10.1145/ 882262.882368].
  • 7Hildebrandt, K., Polthier, K., Wardetzky, M., 2005. Smooth Feature Lines on Surface Meshes. Proc. 3rd Euro- graphics Symp. Geometry Processing, p.85-90.
  • 8Hubeli, A., Gross, M., 2001. Multiresolution Feature Ex- traction for Unstructured Meshes. Proc. Conf. on Visualization, p.287-294.
  • 9Kim, H.S., Choi, H.K., Lee, K.H., 2009. Feature detec- tion of triangular meshes based on tensor voting the- ory. Comput.-Aided Des., 41(1):47-58. [doi:10.1016/ j.cad.2008.12.003].
  • 10Kim, S.K., Kim, C.H., 2006. Finding ridges and valleys in a discrete surface using a modified MLS approxi- mation. Comput.-Aided Des., 38(2):173-180. [doi:10. 1016/j.cad.2005.05.002].

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