. K. Agarwal-p, L. Arge, and Y. K. , I/o-efficient construction of constrained delaunay triangulations, ESA (2005), vol.5, pp.355-366

. Ando-r, N. Thürey, and C. Wojtan, Highly adaptive liquid simulations on tetrahedral meshes, ACM Trans. Graph, vol.32, issue.4, pp.1-103, 2013.

. K. Blandford-d, . E. Blelloch-g, and C. Kadow, Engineering a compact parallel delaunay algorithm in 3D, Proceedings of the twenty-second annual symposium on Computational, 2006.

. H. Batista-v, . L. Millman-d, S. Pion, and J. Singler, Parallel geometric algorithms for multi-core computers, Computational Geometry, vol.43, pp.663-677, 2010.

B. Yvinec-m, Algorithmic geometry. Cambridge university press, 1998.

. Caraffa-l, M. Brédif, and . Vallet-b, 3d watertight mesh generation with uncertainties from ubiquitous data, Proceedings of Asian Conference on Computer Vision (ACCV'16), 2016.

C. Chuang-t.-r and W. , Parallel divide-andconquer scheme for 2D Delaunay triangulation, Concurrency and Computation: Practice and Experience, vol.18, pp.1595-1612, 2006.

. Caíno-lores-s, J. Carretero, B. Nicolae, O. Yildiz, and . Peterka-t, Spark-diy: A framework for interoperable spark operations with high performance block-based data models, In BDCAT, pp.1-10, 2018.

. Fuetterling-v, C. Lojewski, and P. , Highperformance delaunay triangulation for many-core computers, High Performance Graphics, pp.97-104, 2014.

. Funke-d and . Sanders-p, Parallel d-d Delaunay triangulations in shared and distributed memory, Proceedings of the Ninteenth Workshop on Algorithm Engineering and Experiments, 2017.

*. , ]. Gonzalez, J. E. Xin-r, D. A. Crankshaw, D. J. Franklin-m et al., Graphx: Graph processing in a distributed dataflow framework, Proceedings of the 11th USENIX Conference on Operating Systems Design and Implementation, pp.599-613, 2014.

. H. Hiep-v, . Keriven-r, P. Labatut, and P. , Towards high-resolution large-scale multi-view stereo, Computer Vision and Pattern Recognition, pp.1430-1437, 2009.

M. Isenburg, Y. Liu, J. R. Shewchuk, and J. Snoeyink, Streaming computation of Delaunay triangulations, Papers on -SIGGRAPH, p.6, 2006.

. Kaufmann-o and . Martin-t, Reprint of "3d geological modelling from boreholes, cross-sections and geological maps, application over former natural gas storages in coal mines, comput. geosci, vol.34, pp.278-290, 2008.

, Computers & geosciences, vol.35, pp.70-82, 2009.

P. Labatut, . Pons-j.-p, and . Keriven-r, Robust and Efficient Surface Reconstruction From Range Data, Computer Graphics Forum, 2009.
URL : https://hal.archives-ouvertes.fr/hal-00712261

. Peterka-t, D. Morozov, and C. Phillips, High-performance computation of distributed-memory parallel 3d voronoi and delaunay tessellation, Proceedings of the International Conference for High Performance Computing, Networking, Storage and Analysis, pp.997-1007, 2014.

J. R. Shewchuk, Star splaying: An algorithm for repairing Delaunay triangulations and convex hulls, Proceedings of the Twenty-first Annual Symposium on Computational Geometry, pp.237-246, 2005.

. Shvachko-k, H. Kuang, S. Radia, and . Chansler-r, The hadoop distributed file system, Proceedings of the 2010 IEEE 26th Symposium on Mass Storage Systems and Technologies (MSST), pp.1-10, 2010.

. Starinshak-d, J. Owen, and J. J. , A new parallel algorithm for constructing voronoi tessellations from distributed input data, Computer Physics Communications, vol.185, pp.3204-3214, 2014.

. M. Tekalp-a and J. Ostermann, Face and 2-d mesh animation in mpeg-4, Signal Processing: Image Communication, vol.15, pp.387-421, 2000.

J. S. Vitter, External memory algorithms and data structures: dealing with massive data, ACM Computing Surveys, vol.33, issue.2, pp.209-271, 2001.

W. Y. Ma-g, F. Ren, and . Li-t, A constrained delaunay discretization method for adaptively meshing highly discontinuous geological media, Computers & Geosciences, vol.109, pp.134-148, 2017.

X. Y. Yan and H. , Text region extraction in a document image based on the delaunay tessellation, Pattern Recognition, vol.36, pp.799-809, 2003.

Z. Wu and . C. Shirui-pan-and-f,

A. P. , A comprehensive survey on graph neural networks. CoRR, 2019.

M. Zaharia, W. S. Xin-r, . Das-t, M. Armbrust, D. A. Meng et al., Apache spark: A unified engine for big data processing, Commun. ACM, vol.59, pp.56-65, 2016.