File:Perlin noise with contour.svg

Original file(SVG file, nominally 720 × 810 pixels, file size: 433 KB)

Commons-logo.svg This is a file from the Wikimedia Commons. The description on its description page there is shown below.
Commons is a freely licensed media file repository. You can help.

Summary

Description
English: 2-D Perlin noise with a contour line at zero, to show that the noise is zero at the intersections of the gradient mesh. The smootherstep function was used for interpolation.
Date
Source Own work
Author Morn
Other versions
with more contour lines
SVG development
InfoField
 
The SVG code is valid.
 
This plot was created with Matplotlib.
Source code
InfoField

Python code

Source code
# Perlin noise plot with Matplotlib

from pylab import *
import random

XDIM, YDIM = 11, 11     # gradient mesh size
SCALE = 50              # noise grid size per gradient mesh unit size
XDP, YDP = (XDIM - 2) * SCALE + 1, (YDIM - 2) * SCALE + 1

phi = zeros((YDIM, XDIM))   # gradient phase angles
perlin = zeros((YDP, XDP))  # Perlin noise array

# make the plot reproducible by using a fixed random seed
random.seed("Perlin")

# choose random phase angles for gradients
for y in range(YDIM):
    for x in range(XDIM):
        phi[y,x] = 2 * pi * random.random()

def grad(x0, y0, dx, dy):
    "Compute the dot product between the gradient and position vector"
    gx, gy = cos(phi[y0,x0]), sin(phi[y0,x0])
    return gx * dx + gy * dy

def inter(a, b, w):
    "Interpolate between a and b using weight w"
    return (b - a) * ((w * (w * 6 - 15) + 10) * w * w * w) + a  # smootherstep
    #return (b - a) * (3 - 2 * w) * w * w + a   # smoothstep
    #return (b - a) * w + a                     # linear

# compute Perlin noise
for yi in range(YDP):
    for xi in range(XDP):
        x, y = xi / SCALE, yi / SCALE
        x0, y0 = int(x), int(y)
        dx, dy = x - x0, y - y0

        g1 = grad(x0, y0, dx, dy)
        g2 = grad(x0 + 1, y0, -1 + dx, dy)
        g3 = grad(x0, y0 + 1, dx, -1 + dy)
        g4 = grad(x0 + 1, y0 + 1, -1 + dx, -1 + dy)

        perlin[yi,xi] = inter(inter(g1, g2, dx), inter(g3, g4, dx), dy)

print(f"Max {perlin.max()}, min {perlin.min()}")

# use Matplotlib to create a plot
figure(figsize = (8, 9))
X = array([x / SCALE for x in range(XDP)])
Y = array([y / SCALE for y in range(YDP)])
imshow(perlin, interpolation = "bicubic", cmap = plt.cm.bwr, vmin = -.8, vmax = .8,
  extent = (X.min(), X.max(), Y.max(), Y.min()))
cb = colorbar(orientation = "horizontal")
contour(X, Y, perlin, (0,), linewidths = 2, colors = "green")
xticks(range(XDIM-1), labels = "" * XDIM)
yticks(range(YDIM-1), labels = "" * YDIM)
grid(lw = 1.2, color = "black", alpha = .8, ls = "dashed")
gca().set_position([.1, .2, .8, .8])
cb.ax.set_position([.1, -.68, .8, .8])
title("2-D Perlin noise with contour line at zero")
savefig("perlin_noise_with_contour.svg")
show()

Licensing

I, the copyright holder of this work, hereby publish it under the following license:
Creative Commons CC-Zero This file is made available under the Creative Commons CC0 1.0 Universal Public Domain Dedication.
The person who associated a work with this deed has dedicated the work to the public domain by waiving all of their rights to the work worldwide under copyright law, including all related and neighboring rights, to the extent allowed by law. You can copy, modify, distribute and perform the work, even for commercial purposes, all without asking permission.

Captions

Add a one-line explanation of what this file represents

Items portrayed in this file

depicts

30 November 2023

File history

Click on a date/time to view the file as it appeared at that time.

Date/TimeDimensionsUserComment
current04:30, 30 November 2023720 × 810 (433 KB)MornUploaded own work with UploadWizard

The following page uses this file:

Metadata