3D中的Alpha形状

sky*_*ker 5 python numpy convex-hull convex concave-hull

除了CGAL python绑定之外,python中的3维中是否存在“ alpha形状”函数?

或者,是否可以将下面的示例扩展到3D中?

2D示例:在matplotlib中,在散点图中的数据点周围绘制平滑多边形

我目前正在使用此ConvexHull示例计算体积,但出于我的目的,由于“凸”约束而使体积膨胀。

谢谢,

小智 8

我编写了一些用于查找 alpha 形状表面的代码。我希望这有帮助。

from scipy.spatial import Delaunay
import numpy as np
from collections import defaultdict

def alpha_shape_3D(pos, alpha):
    """
    Compute the alpha shape (concave hull) of a set of 3D points.
    Parameters:
        pos - np.array of shape (n,3) points.
        alpha - alpha value.
    return
        outer surface vertex indices, edge indices, and triangle indices
    """

    tetra = Delaunay(pos)
    # Find radius of the circumsphere.
    # By definition, radius of the sphere fitting inside the tetrahedral needs 
    # to be smaller than alpha value
    # http://mathworld.wolfram.com/Circumsphere.html
    tetrapos = np.take(pos,tetra.vertices,axis=0)
    normsq = np.sum(tetrapos**2,axis=2)[:,:,None]
    ones = np.ones((tetrapos.shape[0],tetrapos.shape[1],1))
    a = np.linalg.det(np.concatenate((tetrapos,ones),axis=2))
    Dx = np.linalg.det(np.concatenate((normsq,tetrapos[:,:,[1,2]],ones),axis=2))
    Dy = -np.linalg.det(np.concatenate((normsq,tetrapos[:,:,[0,2]],ones),axis=2))
    Dz = np.linalg.det(np.concatenate((normsq,tetrapos[:,:,[0,1]],ones),axis=2))
    c = np.linalg.det(np.concatenate((normsq,tetrapos),axis=2))
    r = np.sqrt(Dx**2+Dy**2+Dz**2-4*a*c)/(2*np.abs(a))

    # Find tetrahedrals
    tetras = tetra.vertices[r<alpha,:]
    # triangles
    TriComb = np.array([(0, 1, 2), (0, 1, 3), (0, 2, 3), (1, 2, 3)])
    Triangles = tetras[:,TriComb].reshape(-1,3)
    Triangles = np.sort(Triangles,axis=1)
    # Remove triangles that occurs twice, because they are within shapes
    TrianglesDict = defaultdict(int)
    for tri in Triangles:TrianglesDict[tuple(tri)] += 1
    Triangles=np.array([tri for tri in TrianglesDict if TrianglesDict[tri] ==1])
    #edges
    EdgeComb=np.array([(0, 1), (0, 2), (1, 2)])
    Edges=Triangles[:,EdgeComb].reshape(-1,2)
    Edges=np.sort(Edges,axis=1)
    Edges=np.unique(Edges,axis=0)

    Vertices = np.unique(Edges)
    return Vertices,Edges,Triangles
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  • 谢谢。它适用于我的测试数据。你也计算过体积吗? (3认同)