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Generate evenly-spaced streamlines from an orientation field on a triangulated 3D surface

Project description

Illustration of streamlines

Objective

The objective is to generate a set of evenly-spaced streamlines tangent to a given vector field (or orientation field) on a smooth triangulated surface. The vector field is assumed to be constant over each triangle. A streamline is defined here as a polygonal line on the triangulated surface such that each segment of that polygonal line lies on a triangle and is parallel to the vector associated with that triangle. The algorithm distributes streamlines over the surface in such a way that the minimal distance between streamlines never becomes smaller than a given radius $r$. The approach is inspired by Jobard and Lefer [3].

The structure of the algorithm, its performance and its limitations are discussed in our papers [1, 2], with applications to the visualization of fiber orientation in the human atria.

Minimal example

Here is an example of streamline generation on a triangular mesh composed of 3 vertices and 1 triangle, so there is 1 orientation vector.

from evenlyspacedstreamlines import evenly_spaced_streamlines
vertices = [[0.0, 0.0, 0.0], [1.0, 0.0, 0.0], [0.0, 1.0, 0.0]]
triangles = [[0, 1, 2]]
orientation = [[1.0, 1.0, 0.0]]
radius = 0.4
list_of_lines, list_of_indices, infos = \
    evenly_spaced_streamlines(vertices, triangles, orientation, radius)

The output gives the xyz coordinates of 3 streamlines, the indices of the triangles the streamlines pass through (here always triangle 0), and some geometrical information such as streamline lengths:

>>> list_of_lines
[array([[0.4803, 0.5197, 0.],
        [0.,     0.0394, 0.]]),
 array([[0.7674, 0.2326, 0.],
        [0.5348, 0.,     0.]]),
 array([[0.1963, 0.8037, 0.],
        [0.,     0.6074, 0.]])]
>>> list_of_indices
[array([0], dtype=int32), array([0], dtype=int32), array([0], dtype=int32)]
>>> infos
StreamlinesInfos(lengths=array([0.6793, 0.3289, 0.2776]), min_altitude=0.7071,
max_base=1.4142, neighborhood_size=0.0, euler_characteristic=1, 
random_seed=1698460061)

Syntax

list_of_lines, list_of_indices, infos = \
    evenly_spaced_streamlines(vertices, triangles, orientation, radius,
        orthogonal=False, oriented_streamlines=False,
        seed_points=32, seed_region=None, max_length=0,
        avoid_u_turns=True, max_angle=90, singularity_mask_radius=0.1,
        allow_tweaking_orientation=True,
        random_seed=0, parallel=True, num_threads=-1)

Positional arguments

The arguments vertices and triangles define the triangulated surface, and orientation the vector field on that surface. The parameter radius specifies streamlines spacing.

  • vertices ($n_v$-by-3 float array): x, y, z coordinates of the $n_v$ vertices
  • triangles ($n_t$-by-3 int array): indices of the vertices of the $n_t$ triangles
  • orientation ($n_t$-by-3 float array): orientation vector in each triangle
  • radius (float): the distance between streamlines will be larger than the radius and smaller than 2*radius

Optional keyword arguments

  • seed_points (int): number of seed points tested to generate each streamline; the longest streamline is kept (default: 32)
  • seed_region (int array): list of triangle indices among which seed points are picked (default: None, which means that all triangles are considered)
  • orthogonal (bool): if True, rotate the orientation by 90 degrees (default: False)
  • oriented_streamlines (bool): if True, streamlines only follow the vector field in the direction it points to (and not the opposite direction); the outputted streamlines are then oriented according to the vector field. If False (default), the orientation field is defined modulo pi instead of 2pi
  • allow_tweaking_orientation (bool): if an orientation vector is parallel to an edge of the triangle, a small random perturbation is applied to that vector to satisfy the requirement (default: True); otherwise an exception is raised when the requirement is not satisfied
  • singularity_mask_radius (float): when the orientation field has a singularity (e.g. focus or node), prevent streamlines from entering a sphere of radius 'singularity_mask_radius' x 'radius' around that singularity (default: 0.1)
  • max_length (int): maximal number of iterations when tracing streamlines; it is needed because of nearly-periodic streamlines (default: 0, which means equal to the number of triangles)
  • max_angle (float): stop streamline integration if the angle between two consecutive segments is larger than max_angle in degrees; 0 means straight line and 180 means U-turn (default: 90)
  • avoid_u_turns (bool): restrict high curvatures by maintaining a lateral (perpendicular) distance of at least 'radius' between a segment of the streamline and the other segments of the same streamline; this automatically sets 'max_angle' to at most 90 degrees (default: True)
  • random_seed (int): initialize the seed for pseudo-random number generation (default: seed based on clock)
  • parallel (bool): if True (default), use multithreading wherever implemented
  • num_threads (int): if possible, use that number of threads for parallel computing (default: let OpenMP choose)

Outputs

The function evenly_spaced_streamlines returns a 3-tuple:

  • list_of_lines (list of $n$-by-3 matrices): xyz coordinates of each of the streamlines generated
  • list_of_indices (list of ($n$-1)-arrays): vectors of indices indicating for each line segment of the streamline in which triangle they lie
  • infos (namedtuple): information about streamline generation with the following attributes:
    • 'lengths' ($n$-array of float): length of each streamline;
    • 'min_altitude' (float): minimum altitude over all triangles;
    • 'max_base' (float): maximum length of the base edge over all triangles;
    • 'neighborhood_size' (float): average number of triangles at a distance < 'radius' from any triangle
    • 'euler_characteristic' (int): = #vertices - #edges + #triangles
    • 'random_seed' (int): random seed used for random number generation

Visualization

A simple way to visualize the output is:

import matplotlib.pyplot as plt
plt.figure().add_subplot(projection='3d')
for line in list_of_lines:
    plt.plot(line[:, 0], line[:, 1], line[:, 2])
plt.show()

For more sophisticated visualizations, the module also provides a function streamlines_to_tubes to represent the streamlines as a set of tubes (described by triangulated surfaces).

Implementation

The code is implemented in C++, interfaced and compiled using cython, and with a wrapper for python (evenlyspacedstreamlines/wrapper.py). It was designed for meshes with a number of vertices of the order of 100k and a radius $r$ not too large as compared to mesh edge length.

Installation

The package can be installed using the command pip install evenlyspacedstreamlines (on Windows, a compiler such as Microsoft Visual C++ is required).

If the code is downloaded from github, local installation on Linux is done by running make local and including the directory 'evenlyspacedstreamlines' in the PYTHONPATH environment variable. The easiest way to check if the installation worked is:

from evenlyspacedstreamlines import test; test()

Tested using Anaconda 2023.09 (python 3.11) on Linux and Windows.

Acknowledgements

This work was supported by the Natural Sciences and Engineering Research Council of Canada (NSERC grant RGPIN-2020-05252).

References

  1. V. Jacquemet. Improved algorithm for generating evenly-spaced streamlines on a triangulated surface (in preparation), 2023.

  2. A. Saliani, A. Tsikhanovich, V. Jacquemet. Visualization of interpolated atrial fiber orientation using evenly-spaced streamlines, Comput. Biol. Med. 2019, vol. 11, pp. 103349.

  3. B. Jobard, W. Lefer. Creating evenly-spaced streamlines of arbitrary density. In Visualization in Scientific Computing’97, pp. 43–55. Springer, 1997.

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