PCL源码剖析之MarchingCubes算法

MarchingCubes算法简介

MarchingCubes(移动立方体)算法是目前三围数据场等值面生成中最常用的方法。它实际上是一个分而治之的方法,把等值面的抽取分布于每个体素中进行。对于每个被处理的体素,以三角面片逼近其内部的等值面片。每个体素是一个小立方体,构造三角面片的处理过程对每个体素都“扫描”一遍,就好像一个处理器在这些体素上移动一样,由此得名移动立方体算法。

MC算法主要有三步:1.将点云数据转换为体素网格数据;2.使用线性插值对每个体素抽取等值面;3.对等值面进行网格三角化


PCL源码剖析之MarchingCubesHoppe

PCL中使用MarchingCubesHoppe类进行三维重建执行的函数体为performReconstruction(),其代码如下:


  
  
  1. template < typename PointNT> void
  2. pcl::MarchingCubes<PointNT>::performReconstruction (pcl::PolygonMesh &output)
  3. {
  4. if (!(iso_level_ >= 0 && iso_level_ < 1))
  5. {
  6. PCL_ERROR ( "[pcl::%s::performReconstruction] Invalid iso level %f! Please use a number between 0 and 1.\n", getClassName ().c_str (), iso_level_);
  7. output.cloud.width = output.cloud.height = 0;
  8. output.cloud.data.clear ();
  9. output.polygons.clear ();
  10. return;
  11. }
  12. // Create grid
  13. grid_ = std:: vector< float> (res_x_*res_y_*res_z_, 0.0f);
  14. // Populate tree
  15. tree_->setInputCloud (input_);
  16. getBoundingBox ();
  17. // Transform the point cloud into a voxel grid
  18. // This needs to be implemented in a child class
  19. voxelizeData ();
  20. // Run the actual marching cubes algorithm, store it into a point cloud,
  21. // and copy the point cloud + connectivity into output
  22. pcl::PointCloud<PointNT> cloud;
  23. for ( int x = 1; x < res_x_ -1; ++x)
  24. for ( int y = 1; y < res_y_ -1; ++y)
  25. for ( int z = 1; z < res_z_ -1; ++z)
  26. {
  27. Eigen:: Vector3i index_3d (x, y, z);
  28. std:: vector< float> leaf_node;
  29. getNeighborList1D (leaf_node, index_3d);
  30. createSurface (leaf_node, index_3d, cloud);
  31. }
  32. pcl::toPCLPointCloud2 (cloud, output.cloud);
  33. output.polygons.resize (cloud.size () / 3);
  34. for ( size_t i = 0; i < output.polygons.size (); ++i)
  35. {
  36. pcl::Vertices v;
  37. v.vertices.resize ( 3);
  38. for ( int j = 0; j < 3; ++j)
  39. v.vertices[j] = static_cast< int> (i) * 3 + j;
  40. output.polygons[i] = v;
  41. }
  42. }
可以看出PCL将会产生res_x_ * res_y_ * res_z_个网格,即为Resolution分辨率。voxelizeData ();即将点云数据转换为体素网格数据,其实现如下:


  
  
  1. template < typename PointNT> void
  2. pcl::MarchingCubesHoppe<PointNT>::voxelizeData ()
  3. {
  4. for ( int x = 0; x < res_x_; ++x)
  5. for ( int y = 0; y < res_y_; ++y)
  6. for ( int z = 0; z < res_z_; ++z)
  7. {
  8. std:: vector< int> nn_indices;
  9. std:: vector< float> nn_sqr_dists;
  10. Eigen::Vector3f point;
  11. point[ 0] = min_p_[ 0] + (max_p_[ 0] - min_p_[ 0]) * float (x) / float (res_x_);
  12. point[ 1] = min_p_[ 1] + (max_p_[ 1] - min_p_[ 1]) * float (y) / float (res_y_);
  13. point[ 2] = min_p_[ 2] + (max_p_[ 2] - min_p_[ 2]) * float (z) / float (res_z_);
  14. PointNT p;
  15. p.getVector3fMap () = point;
  16. tree_->nearestKSearch (p, 1, nn_indices, nn_sqr_dists);
  17. grid_[x * res_y_*res_z_ + y * res_z_ + z] = input_->points[nn_indices[ 0]].getNormalVector3fMap ().dot (
  18. point - input_->points[nn_indices[ 0]].getVector3fMap ());
  19. }
  20. }
该函数对每个体素网格数据进行赋值,其值为一符号距离函数值,其定义为:f(Pi) = (Pi - Oi) * N(Oi), 这里Pi为给定的点,Oi为Pi周围K近邻点集(输入点云的子集)的中心, N(Oi)为点Oi的法向量,中间的*为数量积;求出的值其实是点Oi到过点Pi的有向切平面的距离,图示如下:


点q处的法向量是单位法向量,所以点q到切平面的距离是dot(N(p), vec(p, q))

从代码中可以看出,这里的K = 1,即求出最近邻点。

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下面的代码描述了对每个体素网格的处理过程,其主要过程是计算出每个体素网格与等值面的交点,然后按一定顺序将交点连接,从而形成三角面片。


  
  
  1. for ( int x = 1; x < res_x_ -1; ++x)
  2. for ( int y = 1; y < res_y_ -1; ++y)
  3. for ( int z = 1; z < res_z_ -1; ++z)
  4. {
  5. Eigen:: Vector3i index_3d (x, y, z);
  6. std:: vector< float> leaf_node;
  7. getNeighborList1D (leaf_node, index_3d);
  8. createSurface (leaf_node, index_3d, cloud);
  9. }
getNeighorList1D(leaf_node, index_3d);即是求出当前体素网格的8个顶点对应符号距离函数值,即数组grid_中对应的值。实现代码如下:

  
  
  1. template < typename PointNT> void
  2. pcl::MarchingCubes<PointNT>::getNeighborList1D ( std:: vector< float> &leaf,
  3. Eigen::Vector3i &index3d)
  4. {
  5. leaf = std:: vector< float> ( 8, 0.0f);
  6. leaf[ 0] = getGridValue (index3d);
  7. leaf[ 1] = getGridValue (index3d + Eigen::Vector3i ( 1, 0, 0));
  8. leaf[ 2] = getGridValue (index3d + Eigen::Vector3i ( 1, 0, 1));
  9. leaf[ 3] = getGridValue (index3d + Eigen::Vector3i ( 0, 0, 1));
  10. leaf[ 4] = getGridValue (index3d + Eigen::Vector3i ( 0, 1, 0));
  11. leaf[ 5] = getGridValue (index3d + Eigen::Vector3i ( 1, 1, 0));
  12. leaf[ 6] = getGridValue (index3d + Eigen::Vector3i ( 1, 1, 1));
  13. leaf[ 7] = getGridValue (index3d + Eigen::Vector3i ( 0, 1, 1));
  14. }

createSurface (leaf_node, index_3d, cloud);即是求出每个体素网格与等值面的交点,然后按一定顺序将交点连接,从而形成三角面片。下面分片段剖析createSurface ()函数代码。


  
  
  1. int cubeindex = 0;
  2. Eigen::Vector3f vertex_list[ 12];
  3. if (leaf_node[ 0] < iso_level_) cubeindex |= 1;
  4. if (leaf_node[ 1] < iso_level_) cubeindex |= 2;
  5. if (leaf_node[ 2] < iso_level_) cubeindex |= 4;
  6. if (leaf_node[ 3] < iso_level_) cubeindex |= 8;
  7. if (leaf_node[ 4] < iso_level_) cubeindex |= 16;
  8. if (leaf_node[ 5] < iso_level_) cubeindex |= 32;
  9. if (leaf_node[ 6] < iso_level_) cubeindex |= 64;
  10. if (leaf_node[ 7] < iso_level_) cubeindex |= 128;
此段代码是将8个顶点的标量值与等值面相比较,如果标量值小于等值面值(即顶点在等值面下面),则将cubeindex相应的位置为1。这样就可以知道8个顶点中哪些在等值面下,哪些在等值面之上了。
立方体中顶点与棱边的编号如下所示:


例如,如果顶点3的值在等值面值之下并且所有其他顶点的值都在等值面之上,那么我们可以通过切割边2、3、11来创建一个三角面片。


算法使用一个边表将cubeindex映射为一个12bit的数值,每一位与一条边相关,如果边没有被等值面切割则设为0,切割则设为1。如果没有边被切割那么表返回0,这种情况发生在当cubeindex = 0(所有顶点在等值面之下)或0xff(所有顶点在等值面之上)。举个之前的例子,如果只有顶点3在等值面下面,cubeindex将会等于0000 1000 或8。边表edgeTable定义在marching_cubes.h文件中:


  
  
  1. const unsigned int edgeTable[ 256] = {
  2. 0x0 , 0x109, 0x203, 0x30a, 0x406, 0x50f, 0x605, 0x70c,
  3. 0x80c, 0x905, 0xa0f, 0xb06, 0xc0a, 0xd03, 0xe09, 0xf00,
  4. 0x190, 0x99 , 0x393, 0x29a, 0x596, 0x49f, 0x795, 0x69c,
  5. 0x99c, 0x895, 0xb9f, 0xa96, 0xd9a, 0xc93, 0xf99, 0xe90,
  6. 0x230, 0x339, 0x33 , 0x13a, 0x636, 0x73f, 0x435, 0x53c,
  7. 0xa3c, 0xb35, 0x83f, 0x936, 0xe3a, 0xf33, 0xc39, 0xd30,
  8. 0x3a0, 0x2a9, 0x1a3, 0xaa , 0x7a6, 0x6af, 0x5a5, 0x4ac,
  9. 0xbac, 0xaa5, 0x9af, 0x8a6, 0xfaa, 0xea3, 0xda9, 0xca0,
  10. 0x460, 0x569, 0x663, 0x76a, 0x66 , 0x16f, 0x265, 0x36c,
  11. 0xc6c, 0xd65, 0xe6f, 0xf66, 0x86a, 0x963, 0xa69, 0xb60,
  12. 0x5f0, 0x4f9, 0x7f3, 0x6fa, 0x1f6, 0xff , 0x3f5, 0x2fc,
  13. 0xdfc, 0xcf5, 0xfff, 0xef6, 0x9fa, 0x8f3, 0xbf9, 0xaf0,
  14. 0x650, 0x759, 0x453, 0x55a, 0x256, 0x35f, 0x55 , 0x15c,
  15. 0xe5c, 0xf55, 0xc5f, 0xd56, 0xa5a, 0xb53, 0x859, 0x950,
  16. 0x7c0, 0x6c9, 0x5c3, 0x4ca, 0x3c6, 0x2cf, 0x1c5, 0xcc ,
  17. 0xfcc, 0xec5, 0xdcf, 0xcc6, 0xbca, 0xac3, 0x9c9, 0x8c0,
  18. 0x8c0, 0x9c9, 0xac3, 0xbca, 0xcc6, 0xdcf, 0xec5, 0xfcc,
  19. 0xcc , 0x1c5, 0x2cf, 0x3c6, 0x4ca, 0x5c3, 0x6c9, 0x7c0,
  20. 0x950, 0x859, 0xb53, 0xa5a, 0xd56, 0xc5f, 0xf55, 0xe5c,
  21. 0x15c, 0x55 , 0x35f, 0x256, 0x55a, 0x453, 0x759, 0x650,
  22. 0xaf0, 0xbf9, 0x8f3, 0x9fa, 0xef6, 0xfff, 0xcf5, 0xdfc,
  23. 0x2fc, 0x3f5, 0xff , 0x1f6, 0x6fa, 0x7f3, 0x4f9, 0x5f0,
  24. 0xb60, 0xa69, 0x963, 0x86a, 0xf66, 0xe6f, 0xd65, 0xc6c,
  25. 0x36c, 0x265, 0x16f, 0x66 , 0x76a, 0x663, 0x569, 0x460,
  26. 0xca0, 0xda9, 0xea3, 0xfaa, 0x8a6, 0x9af, 0xaa5, 0xbac,
  27. 0x4ac, 0x5a5, 0x6af, 0x7a6, 0xaa , 0x1a3, 0x2a9, 0x3a0,
  28. 0xd30, 0xc39, 0xf33, 0xe3a, 0x936, 0x83f, 0xb35, 0xa3c,
  29. 0x53c, 0x435, 0x73f, 0x636, 0x13a, 0x33 , 0x339, 0x230,
  30. 0xe90, 0xf99, 0xc93, 0xd9a, 0xa96, 0xb9f, 0x895, 0x99c,
  31. 0x69c, 0x795, 0x49f, 0x596, 0x29a, 0x393, 0x99 , 0x190,
  32. 0xf00, 0xe09, 0xd03, 0xc0a, 0xb06, 0xa0f, 0x905, 0x80c,
  33. 0x70c, 0x605, 0x50f, 0x406, 0x30a, 0x203, 0x109, 0x0
  34. };

edgeTable[8] = 0x80c = 1000 0000 1100。这就表示边2、3、11与等值面相交。
判断出边与等值面相交之后,就要确定具体的交点。这里PCL使用线性插值,线性插值具体见线性插值。代码如下:


  
  
  1. // Find the vertices where the surface intersects the cube
  2. if (edgeTable[cubeindex] & 1)
  3. interpolateEdge (p[ 0], p[ 1], leaf_node[ 0], leaf_node[ 1], vertex_list[ 0]);
  4. if (edgeTable[cubeindex] & 2)
  5. interpolateEdge (p[ 1], p[ 2], leaf_node[ 1], leaf_node[ 2], vertex_list[ 1]);
  6. if (edgeTable[cubeindex] & 4)
  7. interpolateEdge (p[ 2], p[ 3], leaf_node[ 2], leaf_node[ 3], vertex_list[ 2]);
  8. if (edgeTable[cubeindex] & 8)
  9. interpolateEdge (p[ 3], p[ 0], leaf_node[ 3], leaf_node[ 0], vertex_list[ 3]);
  10. if (edgeTable[cubeindex] & 16)
  11. interpolateEdge (p[ 4], p[ 5], leaf_node[ 4], leaf_node[ 5], vertex_list[ 4]);
  12. if (edgeTable[cubeindex] & 32)
  13. interpolateEdge (p[ 5], p[ 6], leaf_node[ 5], leaf_node[ 6], vertex_list[ 5]);
  14. if (edgeTable[cubeindex] & 64)
  15. interpolateEdge (p[ 6], p[ 7], leaf_node[ 6], leaf_node[ 7], vertex_list[ 6]);
  16. if (edgeTable[cubeindex] & 128)
  17. interpolateEdge (p[ 7], p[ 4], leaf_node[ 7], leaf_node[ 4], vertex_list[ 7]);
  18. if (edgeTable[cubeindex] & 256)
  19. interpolateEdge (p[ 0], p[ 4], leaf_node[ 0], leaf_node[ 4], vertex_list[ 8]);
  20. if (edgeTable[cubeindex] & 512)
  21. interpolateEdge (p[ 1], p[ 5], leaf_node[ 1], leaf_node[ 5], vertex_list[ 9]);
  22. if (edgeTable[cubeindex] & 1024)
  23. interpolateEdge (p[ 2], p[ 6], leaf_node[ 2], leaf_node[ 6], vertex_list[ 10]);
  24. if (edgeTable[cubeindex] & 2048)
  25. interpolateEdge (p[ 3], p[ 7], leaf_node[ 3], leaf_node[ 7], vertex_list[ 11]);


文章参考于:http://www.doc88.com/p-5475997688638.html

                        http://paulbourke.net/geometry/polygonise/

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