Octree¶
An octree is a tree data structure where each internal node has eight children. Octrees are commonly used for spatial partitioning of 3D point clouds. Non-empty leaf nodes of an octree contain one or more points that fall within the same spatial subdivision. Octrees are a useful description of 3D space and can be used to quickly find nearby points. Open3D has the geometry type Octree
that can be used to create, search, and traverse octrees with a user-specified maximum tree depth,
max_depth
.
From point cloud¶
An octree can be constructed from a point cloud using the method convert_from_point_cloud
. Each point is inserted into the tree by following the path from the root node to the appropriate leaf node at depth max_depth
. As the tree depth increases, internal (and eventually leaf) nodes represents a smaller partition of 3D space.
If the point cloud has color, the the corresponding leaf node takes the color of the last inserted point. The size_expand
parameter increases the size of the root octree node so it is slightly bigger than the original point cloud bounds to accommodate all points.
[2]:
print('input')
N = 2000
armadillo = o3d.data.ArmadilloMesh()
mesh = o3d.io.read_triangle_mesh(armadillo.path)
pcd = mesh.sample_points_poisson_disk(N)
# fit to unit cube
pcd.scale(1 / np.max(pcd.get_max_bound() - pcd.get_min_bound()),
center=pcd.get_center())
pcd.colors = o3d.utility.Vector3dVector(np.random.uniform(0, 1, size=(N, 3)))
o3d.visualization.draw_geometries([pcd])
print('octree division')
octree = o3d.geometry.Octree(max_depth=4)
octree.convert_from_point_cloud(pcd, size_expand=0.01)
o3d.visualization.draw_geometries([octree])
input
octree division
From voxel grid¶
An octree can also be constructed from an Open3D VoxelGrid
geometry using the method create_from_voxel_grid
. Each voxel of the input VoxelGrid
is treated as a point in 3D space with coordinates corresponding to the origin of the voxel. Each leaf node takes the color of its corresponding voxel.
[3]:
print('voxelization')
voxel_grid = o3d.geometry.VoxelGrid.create_from_point_cloud(pcd,
voxel_size=0.05)
o3d.visualization.draw_geometries([voxel_grid])
print('octree division')
octree = o3d.geometry.Octree(max_depth=4)
octree.create_from_voxel_grid(voxel_grid)
o3d.visualization.draw_geometries([octree])
voxelization
octree division
Additionally, an Octree
can be converted to a VoxelGrid
with to_voxel_grid
.
Traversal¶
An octree can be traversed which can be useful for searching or processing subsections of 3D geometry. By providing the traverse
method with a callback, each time a node (internal or leaf) is visited, additional processing can be performed.
In the following example, an early stopping criterion is used to only process internal/leaf nodes with more than a certain number of points. This early stopping ability can be used to efficiently process spatial regions meeting certain conditions.
[4]:
def f_traverse(node, node_info):
early_stop = False
if isinstance(node, o3d.geometry.OctreeInternalNode):
if isinstance(node, o3d.geometry.OctreeInternalPointNode):
n = 0
for child in node.children:
if child is not None:
n += 1
print(
"{}{}: Internal node at depth {} has {} children and {} points ({})"
.format(' ' * node_info.depth,
node_info.child_index, node_info.depth, n,
len(node.indices), node_info.origin))
# we only want to process nodes / spatial regions with enough points
early_stop = len(node.indices) < 250
elif isinstance(node, o3d.geometry.OctreeLeafNode):
if isinstance(node, o3d.geometry.OctreePointColorLeafNode):
print("{}{}: Leaf node at depth {} has {} points with origin {}".
format(' ' * node_info.depth, node_info.child_index,
node_info.depth, len(node.indices), node_info.origin))
else:
raise NotImplementedError('Node type not recognized!')
# early stopping: if True, traversal of children of the current node will be skipped
return early_stop
[5]:
octree = o3d.geometry.Octree(max_depth=4)
octree.convert_from_point_cloud(pcd, size_expand=0.01)
octree.traverse(f_traverse)
0: Internal node at depth 0 has 8 children and 2000 points ([-2.63330115 31.34928625 1.93823276])
0: Internal node at depth 1 has 4 children and 64 points ([-2.63330115 31.34928625 1.93823276])
1: Internal node at depth 1 has 2 children and 46 points ([-2.12830115 31.34928625 1.93823276])
2: Internal node at depth 1 has 8 children and 400 points ([-2.63330115 31.85428625 1.93823276])
0: Internal node at depth 2 has 2 children and 7 points ([-2.63330115 31.85428625 1.93823276])
1: Internal node at depth 2 has 1 children and 4 points ([-2.38080115 31.85428625 1.93823276])
2: Internal node at depth 2 has 5 children and 45 points ([-2.63330115 32.10678625 1.93823276])
3: Internal node at depth 2 has 1 children and 5 points ([-2.38080115 32.10678625 1.93823276])
4: Internal node at depth 2 has 4 children and 54 points ([-2.63330115 31.85428625 2.19073276])
5: Internal node at depth 2 has 5 children and 89 points ([-2.38080115 31.85428625 2.19073276])
6: Internal node at depth 2 has 4 children and 75 points ([-2.63330115 32.10678625 2.19073276])
7: Internal node at depth 2 has 6 children and 121 points ([-2.38080115 32.10678625 2.19073276])
3: Internal node at depth 1 has 7 children and 374 points ([-2.12830115 31.85428625 1.93823276])
0: Internal node at depth 2 has 1 children and 6 points ([-2.12830115 31.85428625 1.93823276])
2: Internal node at depth 2 has 1 children and 6 points ([-2.12830115 32.10678625 1.93823276])
3: Internal node at depth 2 has 3 children and 12 points ([-1.87580115 32.10678625 1.93823276])
4: Internal node at depth 2 has 5 children and 78 points ([-2.12830115 31.85428625 2.19073276])
5: Internal node at depth 2 has 4 children and 48 points ([-1.87580115 31.85428625 2.19073276])
6: Internal node at depth 2 has 6 children and 115 points ([-2.12830115 32.10678625 2.19073276])
7: Internal node at depth 2 has 6 children and 109 points ([-1.87580115 32.10678625 2.19073276])
4: Internal node at depth 1 has 5 children and 344 points ([-2.63330115 31.34928625 2.44323276])
0: Internal node at depth 2 has 3 children and 58 points ([-2.63330115 31.34928625 2.44323276])
1: Internal node at depth 2 has 4 children and 100 points ([-2.38080115 31.34928625 2.44323276])
2: Internal node at depth 2 has 2 children and 21 points ([-2.63330115 31.60178625 2.44323276])
3: Internal node at depth 2 has 8 children and 144 points ([-2.38080115 31.60178625 2.44323276])
7: Internal node at depth 2 has 1 children and 21 points ([-2.38080115 31.60178625 2.69573276])
5: Internal node at depth 1 has 4 children and 313 points ([-2.12830115 31.34928625 2.44323276])
0: Internal node at depth 2 has 8 children and 171 points ([-2.12830115 31.34928625 2.44323276])
1: Internal node at depth 2 has 1 children and 1 points ([-1.87580115 31.34928625 2.44323276])
2: Internal node at depth 2 has 8 children and 139 points ([-2.12830115 31.60178625 2.44323276])
6: Internal node at depth 2 has 1 children and 2 points ([-2.12830115 31.60178625 2.69573276])
6: Internal node at depth 1 has 5 children and 234 points ([-2.63330115 31.85428625 2.44323276])
7: Internal node at depth 1 has 6 children and 225 points ([-2.12830115 31.85428625 2.44323276])
Find leaf node containing point¶
Using the above traversal mechanism, an octree can be quickly searched for the leaf node that contains a given point. This functionality is provided via the locate_leaf_node
method.
[6]:
octree.locate_leaf_node(pcd.points[0])
[6]:
(OctreePointColorLeafNode with color [0.585515, 0.418903, 0.393933] containing 1 points.,
OctreeNodeInfo with origin [-2.50705, 32.1068, 2.00136], size 0.063125, depth 4, child_index 4)