The basic 3D-triangulation class of Cgal is primarily designed to represent the triangulations of a set of points A in ℝ3. It is a partition of the convex hull of A into tetrahedra whose vertices are the points of A. Together with the unbounded cell having the convex hull boundary as its frontier, the triangulation forms a partition of ℝ3. Its cells (3-faces) are such that two cells either do not intersect or share a common facet (2-face), edge (1-face) or vertex (0-face).
In order to deal only with tetrahedra, which is convenient for many applications, the unbounded cell can be subdivided into tetrahedra by considering that each convex hull facet is incident to an infinite cell having as fourth vertex an auxiliary vertex called the infinite vertex. In that way, each facet is incident to exactly two cells and special cases at the boundary of the convex hull are simple to deal with.
The class Triangulation_3<TriangulationTraits_3,TriangulationDataStructure_3> of Cgal implements this point of view and therefore considers the triangulation of the set of points as a set of finite and infinite tetrahedra. Notice that the infinite vertex has no significant coordinates and that no geometric predicate can be applied on it.
A triangulation is a collection of vertices and cells that are linked together through incidence and adjacency relations. Each cell gives access to its four incident vertices and to its four adjacent cells. Each vertex gives access to one of its incident cells.
The four vertices of a cell are indexed with 0, 1, 2 and 3 in positive orientation, the positive orientation being defined by the orientation of the underlying Euclidean space ℝ3 (see Figure 37.1). The neighbors of a cell are also indexed with 0, 1, 2, 3 in such a way that the neighbor indexed by i is opposite to the vertex with the same index.
As in the underlying combinatorial triangulation (see Chapter 38), edges (1-faces) and facets (2-faces) are not explicitly represented: a facet is given by a cell and an index (the facet i of a cell c is the facet of c that is opposite to the vertex with index i) and an edge is given by a cell and two indices (the edge (i,j) of a cell c is the edge whose endpoints are the vertices of c with indices i and j). See Figure 38.1.
Degenerate Dimensions The class Triangulation_3 can also deal with triangulations whose dimension d is less than 3. A triangulation of a set of points in ℝd covers the whole space ℝd and consists of cells having d+1 vertices: some of them are infinite, they are obtained by linking the additional infinite vertex to each facet of the convex hull of the points.
The same cell class is used in all cases: triangular faces in 2D can be considered as degenerate cells, having only three vertices (resp. neighbors) numbered (0,1,2); edges in 1D have only two vertices (resp. neighbors) numbered 0 and 1.
The implicit representation of facets (resp. edges) still holds for degenerate dimensions (i.e. dimensions <3): in dimension 2, each cell has only one facet of index 3, and 3 edges (0,1), (1,2) and (2,0); in dimension 1, each cell has one edge (0,1).
Validity A triangulation of ℝ3 is said to be locally valid iff
(a)-(b) Its underlying combinatorial graph, the triangulation
data structure, is locally valid
(see Section 38.1 of Chapter 38)
(c) Any cell has its vertices ordered according to positive
orientation. See Figure 37.1.
When the triangulation is degenerated into a triangulation of dimension 2, the geometric validity reduces to:
(c-2D) For any two adjacent triangles (u,v,w1) and (u,v,w2) with common edge (u,v), w1 and w2 lie on opposite sides of (u,v) in the plane.
When all the points are collinear, this condition becomes:
(c-1D) For any two adjacent edges (u,v) and (v,w), u and w lie on opposite sides of the common vertex v on the line.
The is_valid() method provided in Triangulation_3 checks the local validity of a given triangulation. This does not always ensure global validity [MNS+96, DLPT98] but it is sufficient for practical cases.
The class Delaunay_triangulation_3 represents a three-dimensional Delaunay triangulation.
Delaunay triangulations have the specific empty sphere property, that is, the circumscribing sphere of each cell of such a triangulation does not contain any other vertex of the triangulation in its interior. These triangulations are uniquely defined except in degenerate cases where five points are co-spherical. Note however that the Cgal implementation computes a unique triangulation even in these cases.
This implementation is fully dynamic: it supports both insertions of points and vertex removal.
The class Regular_triangulation_3 implements incremental regular triangulations, also known as weighted Delaunay triangulations.
Let S(w) be a set of weighted points in ℝ3. Let p(w)=(p,wp), p ∈ ℝ3, wp ∈ ℝ and z(w)=(z,wz), z ∈ ℝ3, wz ∈ ℝ be two weighted points. A weighted point p(w)=(p,wp) can also be seen as a sphere of center p and radius √wp. The power product between p(w) and z(w) is defined as
Π(p(w),z(w)) = ||p-z||2-wp-wz |
Four weighted points have a unique common orthogonal weighted point called the power sphere. The weighted point orthogonal to three weighted points in the plane defined by these three points is called the power circle. The power segment will denote the weighted point orthogonal to two weighted points on the line defined by these two points.
A sphere z(w) is said to be regular if ∀ p(w) ∈ S(w), Π(p(w),z(w)) ≥ 0.
A triangulation of S(w) is regular if the power spheres of all simplices are regular.
The regular triangulation of S(w) is in fact the projection onto ℝ3 of the convex hull of the four-dimensional points (p,||p-O||2-wp), for p(w)=(p,wp) ∈ S(w). Note that all points of S(w) do not necessarily appear as vertices of the regular triangulation. To know more about regular triangulations, see for example [ES96].
When all weights are 0, power spheres are nothing more than circumscribing spheres, and the regular triangulation is exactly the Delaunay triangulation.
The main classes Triangulation_3, Delaunay_triangulation_3 and Regular_triangulation_3 are connected to each other by the derivation diagram shown in Figure 37.3. This diagram also shows another class: Triangulation_utils_3, which provides a set of tools operating on the indices of vertices in cells.
The three main classes (Triangulation_3, Delaunay_triangulation_3 and Regular_triangulation_3) provide high-level geometric functionality such as location of a point in the triangulation [DPT02], insertion and possibly removal of a point [DT03], and are responsible for the geometric validity. They are built as layers on top of a triangulation data structure, which stores their combinatorial structure. This separation between the geometry and the combinatorics is reflected in the software design by the fact that these three triangulation classes take the following template parameters :
The first template parameter of the triangulation class Triangulation_3<TriangulationTraits_3, TriangulationDataStructure_3> is the geometric traits class, described by the concept TriangulationTraits_3. It must define the types of the geometric objects (points, segments, triangles and tetrahedra) forming the triangulation together with a few geometric predicates on these objects: orientation in space, orientation in case of coplanar points, order of collinear points.
In addition to the requirements described before, the geometric traits class of Delaunay_triangulation_3 must define predicates to test for the empty sphere property. It is described by the concept DelaunayTriangulationTraits_3, which refines TriangulationTraits_3.
The kernels provided by Cgal: Cartesian, Homogeneous, Simple_cartesian, Simple_homogeneous and Filtered_kernel can all be used as models for the geometric traits parameter. They supply the user with all the functionalities described for the concepts TriangulationTraits_3 and DelaunayTriangulationTraits_3. In addition, the predefined kernels Exact_predicates_inexact_constructions_kernel and Exact_predicates_exact_constructions_kernel can also be used, the latter being recommended when the dual construction is used.
In order to be used as the traits class for Regular_triangulation_3, a class must provide functions to compute the power tests (see Section 37.3). Regular_triangulation_euclidean_traits_3<K,Weight> is a traits class designed to be used by the class Regular_triangulation_3<RegularTriangulationTraits_3, TriangulationDataStructure_3>. It provides Weighted_point, a class for weighted points needed by the regular triangulation, which derives from the three dimensional point class K::Point_3. It supplies the user with all the functionalities described for the concept RegularTriangulationTraits_3. It can be used as a traits class for Regular_triangulation_3<RegularTriangulationTraits_3, TriangulationDataStructure_3>.
Note that for regular triangulations, plugging a filtered kernel such as Exact_predicates_inexact_constructions_kernel or Exact_predicates_exact_constructions_kernel in Regular_triangulation_euclidean_traits_3<K,Weight> will provide exact and efficient filtered predicates.
The second template parameter of the main classes (Triangulation_3, Delaunay_triangulation_3 and Regular_triangulation_3) is a triangulation data structure class. This class can be seen as a container for the cells and vertices maintaining incidence and adjacency relations (see Chapter 38). A model of this triangulation data structure is Triangulation_data_structure_3, and it is described by the TriangulationDataStructure_3 concept . This model is itself parameterized by a vertex base and a cell base classes, which gives the possibility to customize the vertices and cells used by the triangulation data structure, and hence by the geometric triangulation using it. Depending on the kind of triangulation used, the requirements on the vertex and cell base classes vary, and are expressed by various concepts, following the refinement diagram shown in Figure 37.4.
A default value for the triangulation data structure parameter is provided in all the triangulation classes, so it need not be specified by the user unless he wants to use a different triangulation data structure or a different vertex or cell base class.
The Delaunay triangulation class supports an optional feature which maintains an additional data structure for fast point location queries. This can be beneficial when the user needs to do many unrelated queries with no close starting hint for location in large data sets.
The point location strategy can be selected with the third template argument of Delaunay_triangulation_3, LocationPolicy, which enables a fast point location data structure when set to Fast_location. By default, it uses Compact_location, which has the advantage of using less memory.
Note that you can specify the LocationPolicy parameter without specifying the triangulation data structure, in case you are fine with the default there. In this case, the LocationPolicy appears as a second parameter after the geometric traits.1
The Fast_location policy is implemented using a hierarchy of triangulations. As proved in [Dev02], this structure has an optimal behavior when it is built for Delaunay triangulations.
In this setting, if you build a triangulation by iteratively inserting points, you should try to shuffle the points beforehand, as the time complexity is guaranteed only for a randomized order. For example, inserting points in lexicographic order is typically much slower. Note that this shuffling is performed internally by the constructor taking a range of points.
Reading Section 37.6 on complexity and performance can help making an informed choice for this parameter.
Prior to Cgal 3.6, this functionality was available through the Triangulation_hierarchy_3 class, which is now deprecated.
In order to satisfy as many uses as possible, a design has been selected that allows to exchange different parts to meet the users' needs, while still re-using a maximum of the provided functionalities. We have already seen that the main triangulation classes are parameterized by a geometric traits class and a triangulation data structure (TDS), so that each of them can be interchanged with alternate implementations.
The most useful flexibility is the ability given to the user to add his own data in the vertices and cells by providing his own vertex and cell base classes to Triangulation_data_structure_3. The Figure 37.5 shows in more detail the flexibility that is provided, and the place where the user can insert his own vertex and/or cell base classes.
The design of the triangulation data structure gives the possibility to store any kind of data, including handles (an entity akin to pointers) directly in the vertex and cell base classes.
To do so, there are three possibilities. The simplest one is to use the class Triangulation_vertex_base_with_info_3, and this approach is illustrated in a following subsection 37.5.2.1. The most complicated one, and probably useless for almost all cases, is to write a vertex base class from scratch, following the documented requirements. This is mostly useless because most of the time it is enough to derive from the models that Cgal provides, and add the desired features. In this case, when the user needs to access some type that depends on the triangulation data structure (typically handles), then he should write something like:
... template < class GT, class Vb = Triangulation_vertex_base<GT> > class My_vertex : public Vb { public: typedef typename Vb::Point Point; typedef typename Vb::Cell_handle Cell_handle; template < class TDS2 > struct Rebind_TDS { typedef typename Vb::template Rebind_TDS<TDS2>::Other Vb2; typedef My_vertex<GT, Vb2> Other; }; My_vertex() {} My_vertex(const Point&p) : Vb(p) {} My_vertex(const Point&p, Cell_handle c) : Vb(p, c) {} ... }; ... // The rest has not changed
The situation is exactly similar for cell base classes. Section 38.2 provides more detailed information.
File: examples/Triangulation_3/simple_triangulation_3.cpp
#include <CGAL/Exact_predicates_inexact_constructions_kernel.h> #include <CGAL/Triangulation_3.h> #include <iostream> #include <fstream> #include <cassert> #include <list> #include <vector> typedef CGAL::Exact_predicates_inexact_constructions_kernel K; typedef CGAL::Triangulation_3<K> Triangulation; typedef Triangulation::Cell_handle Cell_handle; typedef Triangulation::Vertex_handle Vertex_handle; typedef Triangulation::Locate_type Locate_type; typedef Triangulation::Point Point; int main() { // construction from a list of points : std::list<Point> L; L.push_front(Point(0,0,0)); L.push_front(Point(1,0,0)); L.push_front(Point(0,1,0)); Triangulation T(L.begin(), L.end()); int n = T.number_of_vertices(); // insertion from a vector : std::vector<Point> V(3); V[0] = Point(0,0,1); V[1] = Point(1,1,1); V[2] = Point(2,2,2); n = n + T.insert(V.begin(), V.end()); assert( n == 6 ); // 6 points have been inserted assert( T.is_valid() ); // checking validity of T Locate_type lt; int li, lj; Point p(0,0,0); Cell_handle c = T.locate(p, lt, li, lj); // p is the vertex of c of index li : assert( lt == Triangulation::VERTEX ); assert( c->vertex(li)->point() == p ); Vertex_handle v = c->vertex( (li+1)&3 ); // v is another vertex of c Cell_handle nc = c->neighbor(li); // nc = neighbor of c opposite to the vertex associated with p // nc must have vertex v : int nli; assert( nc->has_vertex( v, nli ) ); // nli is the index of v in nc std::ofstream oFileT("output",std::ios::out); // writing file output; oFileT << T; Triangulation T1; std::ifstream iFileT("output",std::ios::in); // reading file output; iFileT >> T1; assert( T1.is_valid() ); assert( T1.number_of_vertices() == T.number_of_vertices() ); assert( T1.number_of_cells() == T.number_of_cells() ); return 0; }
File: examples/Triangulation_3/color.cpp
#include <CGAL/Exact_predicates_inexact_constructions_kernel.h> #include <CGAL/Delaunay_triangulation_3.h> #include <CGAL/Triangulation_vertex_base_with_info_3.h> #include <CGAL/IO/Color.h> typedef CGAL::Exact_predicates_inexact_constructions_kernel K; typedef CGAL::Triangulation_vertex_base_with_info_3<CGAL::Color, K> Vb; typedef CGAL::Triangulation_data_structure_3<Vb> Tds; typedef CGAL::Delaunay_triangulation_3<K, Tds> Delaunay; typedef Delaunay::Point Point; int main() { Delaunay T; T.insert(Point(0,0,0)); T.insert(Point(1,0,0)); T.insert(Point(0,1,0)); T.insert(Point(0,0,1)); T.insert(Point(2,2,2)); T.insert(Point(-1,0,1)); // Set the color of finite vertices of degree 6 to red. Delaunay::Finite_vertices_iterator vit; for (vit = T.finite_vertices_begin(); vit != T.finite_vertices_end(); ++vit) if (T.degree(vit) == 6) vit->info() = CGAL::RED; return 0; }
File: examples/Triangulation_3/adding_handles_3.cpp
#include <CGAL/Exact_predicates_inexact_constructions_kernel.h> #include <CGAL/Delaunay_triangulation_3.h> #include <CGAL/Triangulation_vertex_base_3.h> template < class GT, class Vb = CGAL::Triangulation_vertex_base_3<GT> > class My_vertex_base : public Vb { public: typedef typename Vb::Vertex_handle Vertex_handle; typedef typename Vb::Cell_handle Cell_handle; typedef typename Vb::Point Point; template < class TDS2 > struct Rebind_TDS { typedef typename Vb::template Rebind_TDS<TDS2>::Other Vb2; typedef My_vertex_base<GT, Vb2> Other; }; My_vertex_base() {} My_vertex_base(const Point& p) : Vb(p) {} My_vertex_base(const Point& p, Cell_handle c) : Vb(p, c) {} Vertex_handle vh; Cell_handle ch; }; typedef CGAL::Exact_predicates_inexact_constructions_kernel K; typedef CGAL::Triangulation_data_structure_3<My_vertex_base<K> > Tds; typedef CGAL::Delaunay_triangulation_3<K, Tds> Delaunay; typedef Delaunay::Vertex_handle Vertex_handle; typedef Delaunay::Point Point; int main() { Delaunay T; Vertex_handle v0 = T.insert(Point(0,0,0)); Vertex_handle v1 = T.insert(Point(1,0,0)); Vertex_handle v2 = T.insert(Point(0,1,0)); Vertex_handle v3 = T.insert(Point(0,0,1)); Vertex_handle v4 = T.insert(Point(2,2,2)); Vertex_handle v5 = T.insert(Point(-1,0,1)); // Now we can link the vertices as we like. v0->vh = v1; v1->vh = v2; v2->vh = v3; v3->vh = v4; v4->vh = v5; v5->vh = v0; return 0; }
File: examples/Triangulation_3/simplex.cpp
#include <CGAL/Exact_predicates_inexact_constructions_kernel.h> #include <CGAL/Triangulation_3.h> #include <iostream> #include <fstream> #include <list> #include <set> typedef CGAL::Exact_predicates_inexact_constructions_kernel K; typedef CGAL::Triangulation_3<K> Triangulation; typedef Triangulation::Finite_vertices_iterator Finite_vertices_iterator; typedef Triangulation::Finite_edges_iterator Finite_edges_iterator; typedef Triangulation::Finite_facets_iterator Finite_facets_iterator; typedef Triangulation::Finite_cells_iterator Finite_cells_iterator; typedef Triangulation::Simplex Simplex; typedef Triangulation::Locate_type Locate_type; typedef Triangulation::Point Point; int main() { // construction from a list of points : std::list<Point> L; L.push_front(Point(0,0,0)); L.push_front(Point(1,0,0)); L.push_front(Point(0,1,0)); L.push_front(Point(0,1,1)); Triangulation T(L.begin(), L.end()); std::set<Simplex> simplices; Finite_vertices_iterator vit = T.finite_vertices_begin(); simplices.insert(Simplex(vit)); Finite_cells_iterator cit = T.finite_cells_begin(); simplices.insert(Simplex(cit)); Finite_edges_iterator eit = T.finite_edges_begin(); simplices.insert(Simplex(*eit)); Finite_facets_iterator fit = T.finite_facets_begin(); simplices.insert(Simplex(*fit)); for (std::set<Simplex>::iterator it = simplices.begin(); it != simplices.end(); it++) { std::cout << it->dimension() << std::endl; } return 0; }
File: examples/Triangulation_3/fast_location_3.cpp
#include <CGAL/Exact_predicates_inexact_constructions_kernel.h> #include <CGAL/Delaunay_triangulation_3.h> #include <CGAL/Random.h> #include <vector> #include <cassert> typedef CGAL::Exact_predicates_inexact_constructions_kernel K; typedef CGAL::Delaunay_triangulation_3<K, CGAL::Fast_location> Delaunay; typedef Delaunay::Point Point; int main() { // generating points on a grid. std::vector<Point> P; for (int z=0 ; z<20 ; z++) for (int y=0 ; y<20 ; y++) for (int x=0 ; x<20 ; x++) P.push_back(Point(x,y,z)); // building their Delaunay triangulation. Delaunay T(P.begin(), P.end()); assert( T.number_of_vertices() == 8000 ); // performing nearest vertex queries to a series of random points, // which is a case where the Fast_location policy is beneficial. for (int i=0; i<10000; ++i) T.nearest_vertex(Point(CGAL::default_random.get_double(0, 20), CGAL::default_random.get_double(0, 20), CGAL::default_random.get_double(0, 20))); return 0; }
File: examples/Triangulation_3/find_conflicts_3.cpp
#include <CGAL/Exact_predicates_inexact_constructions_kernel.h> #include <CGAL/Delaunay_triangulation_3.h> #include <CGAL/point_generators_3.h> #include <vector> #include <cassert> typedef CGAL::Exact_predicates_inexact_constructions_kernel K; typedef CGAL::Delaunay_triangulation_3<K> Delaunay; typedef Delaunay::Point Point; typedef Delaunay::Cell_handle Cell_handle; typedef Delaunay::Facet Facet; int main() { Delaunay T; CGAL::Random_points_in_sphere_3<Point> rnd; // First, make sure the triangulation is 3D. T.insert(Point(0,0,0)); T.insert(Point(1,0,0)); T.insert(Point(0,1,0)); T.insert(Point(0,0,1)); assert(T.dimension() == 3); // Inserts 100 random points if and only if their insertion // in the Delaunay tetrahedralization conflicts with // an even number of cells. for (int i = 0; i != 100; ++i) { Point p = *rnd++; // Locate the point Delaunay::Locate_type lt; int li, lj; Cell_handle c = T.locate(p, lt, li, lj); if (lt == Delaunay::VERTEX) continue; // Point already exists // Get the cells that conflict with p in a vector V, // and a facet on the boundary of this hole in f. std::vector<Cell_handle> V; Facet f; T.find_conflicts(p, c, CGAL::Oneset_iterator<Facet>(f), // Get one boundary facet std::back_inserter(V)); // Conflict cells in V if ((V.size() & 1) == 0) // Even number of conflict cells ? T.insert_in_hole(p, V.begin(), V.end(), f.first, f.second); } std::cout << "Final triangulation has " << T.number_of_vertices() << " vertices." << std::endl; return 0; }
File: examples/Triangulation_3/regular_3.cpp
#include <CGAL/Exact_predicates_inexact_constructions_kernel.h> #include <CGAL/Regular_triangulation_3.h> #include <CGAL/Regular_triangulation_euclidean_traits_3.h> #include <cassert> #include <vector> typedef CGAL::Exact_predicates_inexact_constructions_kernel K; typedef CGAL::Regular_triangulation_euclidean_traits_3<K> Traits; typedef Traits::RT Weight; typedef Traits::Bare_point Point; typedef Traits::Weighted_point Weighted_point; typedef CGAL::Regular_triangulation_3<Traits> Rt; typedef Rt::Vertex_iterator Vertex_iterator; typedef Rt::Vertex_handle Vertex_handle; int main() { // generate points on a 3D grid std::vector<Weighted_point> P; int number_of_points = 0; for (int z=0 ; z<5 ; z++) for (int y=0 ; y<5 ; y++) for (int x=0 ; x<5 ; x++) { Point p(x, y, z); Weight w = (x+y-z*y*x)*2.0; // let's say this is the weight. P.push_back(Weighted_point(p, w)); ++number_of_points; } Rt T; // insert all points in a row (this is faster than one insert() at a time). T.insert (P.begin(), P.end()); assert( T.is_valid() ); assert( T.dimension() == 3 ); std::cout << "Number of vertices : " << T.number_of_vertices() << std::endl; // removal of all vertices int count = 0; while (T.number_of_vertices() > 0) { T.remove (T.finite_vertices_begin()); ++count; } assert( count == number_of_points ); return 0; }
In 3D, the worst case complexity of a triangulation is quadratic in the number of points. For Delaunay triangulations, this bound is reached in cases such as points equally distributed on two non-coplanar lines. However, the good news is that, in many cases, the complexity of a Delaunay triangulation is linear or close to linear in the number of points. Several articles [Dwy89, Eri02, AAD07, AB03, ABL03] have proved such good complexity bounds for specific point distributions, such as points distributed on surfaces under some conditions.
There are several algorithms provided in this package. We will focus here on the following ones and give practical numbers on their efficiency :
We will use the following types of triangulations, using Exact_predicates_inexact_constructions_kernel as geometric traits (combined with Regular_triangulation_euclidean_traits_3 in the weighted case) :
Figure 37.6 shows, for all these types of triangulations, the times in seconds taken to build a triangulation from a given number of points, then the average time to perform one point location in triangulations of various sizes, and the average time to perform one vertex removal (which is largely independent on the size of the triangulation).
The data sets used here are points randomly distributed in the unit cube (the coordinates are generated using the drand48 C function). In the weighted case, the weights are all zero, which means that there are actually no hidden points during execution.
The measurements have been performed using Cgal 3.6, using the Gnu C++ compiler version 4.3.2, under Linux (Fedora 10 distribution), with the compilation options -O3 -DCGAL_NDEBUG. The computer used was equipped with a 64bit Intel Xeon 3GHz processor and 32MB of RAM (a recent desktop machine as of 2009).
Delaunay | Delaunay | Regular | Regular | |
Fast location | No hidden points | |||
Construction from 102 points | 0.00054 | 0.000576 | 0.000948 | 0.000955 |
Construction from 103 points | 0.00724 | 0.00748 | 0.0114 | 0.0111 |
Construction from 104 points | 0.0785 | 0.0838 | 0.122 | 0.117 |
Construction from 105 points | 0.827 | 0.878 | 1.25 | 1.19 |
Construction from 106 points | 8.5 | 9.07 | 12.6 | 12.2 |
Construction from 107 points | 87.4 | 92.5 | 129 | 125 |
Point location in 102 points | 9.93e-07 | 1.06e-06 | 7.19e-06 | 6.99e-06 |
Point location in 103 points | 2.25e-06 | 1.93e-06 | 1.73e-05 | 1.76e-05 |
Point location in 104 points | 4.79e-06 | 3.09e-06 | 3.96e-05 | 3.76e-05 |
Point location in 105 points | 2.98e-05 | 6.12e-06 | 1.06e-04 | 1.06e-04 |
Point location in 106 points | 1e-04 | 9.65e-06 | 2.7e-04 | 2.67e-04 |
Point location in 107 points | 2.59e-04 | 1.33e-05 | 6.25e-04 | 6.25e-04 |
Vertex removal | 1e-04 | 1.03e-04 | 1.42e-04 | 1.38e-04 |
More benchmarks comparing Cgal to other software can be found in [LS05].
We give here some indication about the memory usage of the triangulations. Those structures being intensively based on pointers, the size almost doubles on 64bit platforms compared to 32bit.
The size also depends on the size of the point type which is copied in the vertices (hence on the kernel). Obviously, any user data added to vertices and cells also affect the memory used.
More specifically, the memory space used to store a triangulation is first a function of the size of its Vertex and Cell types times their numbers (and for volumic distribution, one sees about 6.7 times more cells than vertices). However, these are stored in memory using Compact_container, which allocates them in lists of blocks of growing size, and this requires some additional overhead for bookkeeping. Moreover, memory is only released to the system when clearing or destroying the triangulation. This can be important for algorithms like simplifications of data sets which will produce fragmented memory usage (doing fresh copies of the data structures are one way out in such cases). The asymptotic memory overhead of Compact_container for its internal bookkeeping is otherwise on the order of O(√n).
Figure 37.7 shows the number of bytes used per points, as measured empirically using Memory_sizer for large triangulations (106 random points).
Delaunay | Delaunay | Regular | Regular | |
Fast location | No hidden points | |||
32bit | 274 | 291 | 336 | 282 |
64bit | 519 | 553 | 635 | 527 |
Besides the complexity of the Delaunay triangulation that varies with the distribution of the points, another critical aspect affects the efficiency : the degeneracy of the data sets. These algorithms are quite sensitive to numerical accuracy and it is important to run them using exact predicates.
Using a kernel with no exact predicates will quickly lead to crashes or infinite loops once they are executed on non-random data sets. More precisely, problems appear with data sets which contain (nearly) degenerate cases for the orientation and side_of_oriented_sphere predicates, namely when there are (nearly) coplanar or (nearly) cospherical points. This unfortunately happens often in practice with data coming from various kinds of scanners or other automatic acquisition devices.
Using an inexact kernel such as Simple_cartesian<double> would lead to optimal performance, which is only about 30% better than Exact_predicates_inexact_constructions_kernel. The latter is strongly recommended since it takes care about potential robustness issues. The former can be used for benchmarking purposes mostly, or when you really know that your data sets won't exhibit any robustness issue.
Exact predicates take more time to compute when they hit (nearly) degenerate cases. Depending on the data set, this can have a visible impact on the overall performance of the algorithm or not.
Sometimes you need exact constructions as well, so Exact_predicates_exact_constructions_kernel is a must. This is the case for example when you need the dual functions to be exact, or when your input is stored in points of such a kernel for other reasons (because it is the output of another algorithm which has this requirement, for example). This will slow down the computations by a factor of 4 to 5 at least, and it can be much more.
Figure 37.8 gives more detailed timings about various kernels one the following data sets : random points in a cube, random points on the surface of an ellipsoid, points scanned on the surface of a Buddha statue, points on a molecular surface, and points scanned on a dryer handle. See Figure 37.9 for pictures of the last 3 objects, which respectively illustrate volumic data, surfacic data, and data with many degenerate cases. This last data set exhibits an infinite loop with an inexact kernel, and of course we are not sure whether what is computed for the other data sets with this inexact kernel is a Delaunay triangulation. General introductory information about these robustness issues can be found in [KMP+08]. More benchmarks around this issue can also be found in [DP03].
Random | Ellipsoid | Buddha | Molecule | Dryer | |
Handle | |||||
#points | 100000 | 100000 | 542548 | 525296 | 49787 |
Simple_cartesian<double> | 0.69 | 0.627 | 4.21 | 3.8 | ∞-loop |
Exact_predicates_inexact_constructions_kernel | 0.824 | 0.749 | 4.99 | 4.64 | 1.68 |
Exact_predicates_exact_constructions_kernel | 4.59 | 3.85 | 30.1 | 26.4 | 4.57 |
Simple_cartesian<Gmpq> | 492 | 534 | 1120 | 1030 | 75.2 |
Monique Teillaud started to work on the 3D triangulation packages in 1997, following the design of the 2D triangulation packages. The notions of degenerate dimensions and infinite vertex were formalized [Tei99] and induced changes in the 2D triangulation packages. The packages were first released in Cgal 2.1. They contained basic functionalities on triangulations, Delaunay triangulations, regular triangulations.
A first version of removal of a vertex from a Delaunay triangulation was released in Cgal 2.2. However, this removal became really robust only in Cgal 2.3, after some research that allowed to deal with degenerate cases quite easily [DT03]. Andreas Fabri implemented this revised version of the removal, and a faster removal algorithm for Cgal 3.0.
The latter algorithm was proposed by Mariette Yvinec, who contributed in several ways to the package, first since she was maintaining the close 2D triangulation package and participated in many discussions, she also wrote the traits classes for regular triangulations.
In 2000, Sylvain Pion started working on these packages. He improved the efficiency of triangulations in Cgal 2.3 and 2.4 in several ways [BDP+02]: he implemented the Delaunay hierarchy [Dev02] in 2.3, he improved the memory footprint in 2.4 and 3.0, he also performed work on arithmetic filters [DP03] (see Filtered_kernel) to improve the speed of triangulations. He changed the design in Cgal 3.0, allowing users to add handles in their own vertices and cells.
Olivier Devillers, co-author of preliminary versions of the Cgal 2d triangulations, participated in many discussions, in particular about the perturbations, and more concretely in the implementation of the Delaunay hierarchy.
In 2005, Christophe Delage implemented the vertex removal function for regular triangulations, using the symbolic perturbation proposed in [DT06], which allowed to release this functionality in Cgal 3.2.
In 2006, Nico Kruithof wrote the Triangulation_simplex_3 class that can store simplices of any dimension and improved the internal organization of the code.
As of March 2007, Christophe Delage made the iterator range insert methods and constructors use spatial_sort to improve efficiency.
In 2008, Camille Wormser added a few more iterators in the package that were integrated in release 3.4.
In 2009, Sylvain Pion simplified the design of the Delaunay hierarchy so that it became the simple Fast_location policy in release 3.6.
The authors wish to thank Lutz Kettner for inspiring discussions about the design of CGAL. Jean-Daniel Boissonnat is also acknowledged [BDTY00].
1 | The mechanism used behind the scenes to allow this syntactical convenience is called deduced parameters. |