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在 matplotlib 中分层轮廓图和表面图

[英]Layering a contourf plot and surface_plot in matplotlib

我正在为 python 中的分层和zorder苦苦挣扎。 我正在使用matplotlib有三个相关元件的3D绘图:一个surface_plot一个星球,一个surface_plot周围的行星环,和contourf图像,显示了地球的影子投射到环。

我希望图形能够准确显示该场景在现实生活中的样子,环环绕地球,阴影位于环上的适当位置。 如果阴影在给定 POV 的行星后面,我希望阴影被行星阻挡,反之亦然,如果阴影在给定 POV 的行星前面。

需要明确的是,这只是一个分层问题。 我有行星,环和阴影都正确绘制。 但是,阴影永远不会显示在行星前面。 它就像行星在“阻挡”阴影一样,即使行星在分层方面应该在阴影下方。

我已经尝试了所有我能想到的关于zorder和重新排列调用各种绘图元素的顺序的事情。 环确实正确显示在行星前面,但阴影不会。

我的实际代码很长。 以下是相关部分:

情节设置:


def orthographic_proj(zfront, zback):
    a = (zfront+zback)/(zfront-zback)
    b = -2*(zfront*zback)/(zfront-zback)
    return np.array([[1,0,0,0],
                        [0,1,0,0],
                        [0,0,a,b],
                        [0,0,0,zback]])

def setup_saturn_plot(ax3, elev, azim, drawz, drawxy,view):
    #ax3.set_aspect('equal','box')
    ax3.view_init(elev=elev, azim=azim)
    if(view=="top" or view == "Top" or view == "TOP"):
        ax3.dist = 5.5
    if(view=="star" or view == "Star" or view == "STAR"):
        ax3.dist = 5.0 #4.5 is best value
    proj3d.persp_transformation = orthographic_proj

    # hide grid and background
    ax3.w_xaxis.set_pane_color((1.0, 1.0, 1.0, 1.0))
    ax3.w_yaxis.set_pane_color((1.0, 1.0, 1.0, 1.0))
    ax3.w_zaxis.set_pane_color((1.0, 1.0, 1.0, 1.0))
    ax3.grid(False)

    # hide z axis in orthographic top view, xy axes in star view
    if (drawz == False):
        ax3.w_zaxis.line.set_lw(0.)
        ax3.set_zticks([])

    if (drawz == True):
        ax3.set_zlabel('Z (1000 km)',fontsize=12)

    if (drawxy == False):
        ax3.w_xaxis.line.set_lw(0.)
        ax3.set_xticks([])
        ax3.w_yaxis.line.set_lw(0.)
        ax3.set_yticks([])

    if (drawxy == True):
        ax3.set_xlabel('X (1000 km)',fontsize=12)
        ax3.set_ylabel('Y (1000 km)',fontsize=12)

行星:

def draw_saturn(ax3, elev, azim):
    # Saturn dimensions
    radius = 60268. / 1000.
    radius_pole = 54364. / 1000.

    # draw Saturn
    phi, theta = np.mgrid[0.0:np.pi:100j, 0.0:2.0*np.pi:100j]
    x = radius*np.sin(phi)*np.cos(theta)
    y = radius*np.sin(phi)*np.sin(theta)
    z = radius_pole*np.cos(phi)

    line3 = ax3.plot_surface(x, y, z, color="w", edgecolor='b', rstride = 8, cstride=5, shade=False, lw=0.25)
    #line3 = ax3.plot_wireframe(x, y, z, color="w", edgecolor='b', rstride = 5, cstride=5, lw=0.25)

    ax3.tick_params(labelsize=10)

戒指:

def draw_rings(ax3, elev, azim, draw_mode):
    # Saturn dimensions
    radius = 60268. / 1000.

    # Saturn rings
    dringmin = 1.110 * radius 
    dringmax = 1.236 * radius 
    cringmin = 1.239 * radius 
    titanringlet = 1.292 * radius 
    maxwellgap = 1.452 * radius 
    cringmax = 1.526 * radius 
    bringmin = 1.526 * radius 
    bringmax = 1.950 * radius 
    aringmin = 2.030 * radius 
    enckegap = 2.214 * radius 
    keelergap = 2.265 * radius 
    aringmax = 2.270 * radius 
    fringmin = 2.320 * radius 
    gringmin = 2.754 * radius 
    gringmax = 2.874 * radius 
    eringmin = 2.987 * radius 
    eringmax = 7.964 * radius 

    if (draw_mode == 'back'):
        offset = -azim*np.pi/180. - 0.5*np.pi
    if (draw_mode == 'front'):
        offset = -azim*np.pi/180. + 0.5*np.pi

    rad, theta = np.mgrid[dringmin:dringmax:4j, 0.0-offset:1.0*np.pi-offset:100j]
    x = rad * np.cos(theta)
    y = rad * np.sin(theta)
    z = 0. * rad
    line1 = ax3.plot_surface(x, y, z, color="w", edgecolor='b', rstride = 8, cstride=25, shade=False, lw=0.25,alpha=0.)

    rad, theta = np.mgrid[cringmin:cringmax:4j, 0.0-offset:1.0*np.pi-offset:100j]
    x = rad * np.cos(theta)
    y = rad * np.sin(theta)
    z = 0. * rad
    line2 = ax3.plot_surface(x, y, z, color="w", edgecolor='b', rstride = 8, cstride=25, shade=False, lw=0.25,alpha=0.)

    rad, theta = np.mgrid[bringmin:bringmax:4j, 0.0-offset:1.0*np.pi-offset:100j]
    x = rad * np.cos(theta)
    y = rad * np.sin(theta)
    z = 0. * rad
    line3 = ax3.plot_surface(x, y, z, color="w", edgecolor='b', rstride = 8, cstride=25, shade=False, lw=0.25,alpha=0.)

    rad, theta = np.mgrid[aringmin:aringmax:4j, 0.0-offset:1.0*np.pi-offset:100j]
    x = rad * np.cos(theta)
    y = rad * np.sin(theta)
    z = 0. * rad
    line4 = ax3.plot_surface(x, y, z, color="w", edgecolor='b', rstride = 8, cstride=25, shade=False, lw=0.25,alpha=0.)

    rad, theta = np.mgrid[fringmin:1.005*fringmin:2j, 0.0-offset:1.0*np.pi-offset:100j]
    x = rad * np.cos(theta)
    y = rad * np.sin(theta)
    z = 0. * rad
    line7 = ax3.plot_surface(x, y, z, color="w", edgecolor='b', rstride = 8, cstride=25, shade=False, lw=0.1,alpha=0.)

阴影:

def draw_shadowboundary(ax3, sundir):
    sqrt = np.sqrt

    #azimuthal angle between x direction and direction of sun
    alpha = np.arctan2(sundir[1],sundir[0])
    #adjustments to keep -pi/2 < alpha < pi/2
    alphaadj = 0.*np.pi/180.
    if (alpha<0.):
        alpha += 2.*np.pi
    if ((alpha >= np.pi/2.) & (alpha <= np.pi)):
        alpha += np.pi
        alphaadj = np.pi
    if ((alpha > np.pi) & (alpha <= 3.*np.pi/2.)):
        alpha -= np.pi
        alphaadj = np.pi
    if (alpha>3.*np.pi/2.):
        alpha-=2*np.pi 

    #azimuthal angle between x direction and northern summer -- found using VIMS_2005_14_OMICET and VIMS_2017_053_ALPORI to define eq. of plane of Sun's annual path in chosen coordinate system: -0.193318*x + 0.1963755*y + 0.5471502*z = 0
    beta = 44.5505*np.pi/180.
    #Saturn's obliquity -- from NASA fact sheet
    psi = 26.73*np.pi/180.
    #Saturn's oblateness -- from NASA fact sheet
    obl = 0.09796
    #helpful definitions for optimization
    cpsic = np.cos(psi*np.cos(alpha+beta))
    spsic = np.sin(psi*np.cos(alpha+beta))
    calpha = np.cos(alpha)
    salpha = np.sin(alpha)
    #Saturn's projected shorter planetary axis as seen by the sun & ring inner edge
    req = 60268. / 1000.    
    b = req*sqrt((1.-obl)*(1.-obl)*cpsic*cpsic + spsic*spsic)
    ringstart = 1.239 * req
    ringend = 2.270 * req
    #shadow boundary of Saturn's rings -- can approximate using a=inf and cancelling terms
    a = 9.582*1.496*10.**5
    shadowline = lambda x,y : (1/a)*sqrt((req*salpha*(-a+x*calpha*cpsic+y*salpha)*(y*calpha-x*cpsic*salpha)/sqrt((y*calpha-x*cpsic*salpha)**2 + (x*spsic)**2) + calpha*(a*cpsic*(x*calpha*cpsic+y*salpha) + b*x*(a-x*calpha*cpsic-y*salpha)*spsic*spsic/sqrt((y*calpha-x*cpsic*salpha)**2 + (x*spsic)**2)))**2 + (req*calpha*(a-x*calpha*cpsic-y*salpha)*(y*calpha-x*cpsic*salpha)/sqrt((y*calpha-x*cpsic*salpha)**2 + (x*spsic)**2) + salpha*(a*cpsic*(x*calpha*cpsic+y*salpha)+b*x*(a-x*calpha*cpsic-y*salpha)*spsic*spsic/sqrt((y*calpha-x*cpsic*salpha)**2 + (x*spsic)**2)))**2)                                                                                                      
    #azimuthal radius & antisolar angle for inequalities
    radius = lambda x,y : np.sqrt(x**2+y**2)
    anti = lambda x,y : abs(np.arctan2(y,x)-(alpha-alphaadj))

    #properties of shadow
    samples=1200
    d = np.linspace(-3*req,3*req,samples)
    x,y = np.meshgrid(d,d)
    #z = ((radius(x,y)<=shadowline(x,y)) & (ringstart<=radius(x,y)) & (np.pi/2<=anti(x,y)) & (anti(x,y)<=3.*np.pi/2)).astype(int)
    z = ((radius(x,y)<=shadowline(x,y)) & (ringstart<=radius(x,y)) & (radius(x,y)<=ringend) & (np.pi/2<=anti(x,y)) & (anti(x,y)<=3.*np.pi/2)).astype(int)
    cmap = matplotlib.colors.ListedColormap(["k","k"])
    #add shadow to plot
    ax3.contourf(x,y,z, [0.5,1.50001], cmap=cmap,alpha=0.5)

组合图形:

import matplotlib
import numpy

from math import *

import matplotlib.pyplot as plt
import numpy as np
from mpl_toolkits.mplot3d import Axes3D # <--- This is important for 3d plotting 

from mpl_toolkits.mplot3d import proj3d

def plot_results(phi, theta, sundir=[0.5, 0.5]):
    #plot_names.append("occultation_track_" + starname)
    fig2 = plt.figure(figsize=(9,9))
    ax3 = fig2.add_subplot(111, projection='3d')
    setup_saturn_plot(ax3, phi, theta, False, False, "star")
    draw_saturn(ax3, phi, theta)
    draw_rings(ax3, phi, theta, 'back')
    draw_rings(ax3, phi, theta, 'front')
    draw_shadowboundary(ax3,sundir)
    ax3.set_xlim([-200, 200]) 
    ax3.set_ylim([-200, 200])
    ax3.set_zlim([-200, 200])


plot_results(phi=40, theta=50, sundir = (30,60))

代码生成这样的图像:

在此处输入图片说明

灰色阴影应该位于行星前面的环上。 但是,它不会显示在行星前面,因此实际上只出现了行星右侧的一小片阴影。 阴影在所有情况下都能正确显示,除非它需要在行星前面。

对此有任何修复吗?

我目前正在努力解决这段代码,但与此同时,至少到目前为止,这似乎是 matplotlib3d 的一个已知问题。

正如@TheImportanceOfBeingErnest 很久以前指出的那样,这个问题出现在mpl3d faq 中

我的 3D 绘图在某些视角下看起来不正确

这可能是 mplot3d 最常报告的问题。 问题在于——从某些视角来看——一个 3D 对象会出现在另一个对象的前面,即使它在物理上位于它的后面。 这可能导致绘图看起来“物理上不正确”。

不幸的是,虽然正在做一些工作来减少这种伪影的发生,但它目前是一个棘手的问题,在 matplotlib 支持其核心的 3D 图形渲染之前无法完全解决。

问题的发生是由于 3D 数据减少到 2D + z 阶标量。 单个值表示集合中 3D 对象所有部分的第 3 维。 因此,当两个集合的边界框相交时,就有可能出现这种伪影。 此外,在 matplotlib 的 2D 渲染引擎中无法正确渲染两个 3D 对象(例如多边形或补丁)的交集。

在向所有后端添加 OpenGL 支持之前,这个问题可能无法解决(非常欢迎补丁)。 在此之前,如果您需要复杂的 3D 场景,我们建议使用 MayaVi。

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