Wavelet noise

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Wavelet noise is an alternative to Perlin noise which reduces the problems of aliasing and detail loss that are encountered when Perlin noise is summed into a fractal.

Algorithm detail[edit]

The basic algorithm for 2-dimensional wavelet noise is as follows:

  • Create an image, , filled with uniform white noise.
  • Downsample to half-size to create , then upsample it back up to full size to create .
  • Subtract from to create the end result, .

This results in an image that contains all the information that cannot be represented at half-scale. From here, can be used similarly to Perlin noise to create fractal patterns.

External links[edit]