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Noise / Sound / Signal processing / Mathematical analysis / Gradient noise / Perlin noise / Value noise / Colors of noise / Pink noise / White noise / Spectral density estimation / Procedural texture
Date: 2011-03-25 22:04:41
Noise
Sound
Signal processing
Mathematical analysis
Gradient noise
Perlin noise
Value noise
Colors of noise
Pink noise
White noise
Spectral density estimation
Procedural texture

EUROGRAPHICSH. Hauser and E. Reinhard STAR – State of The Art Report State of the Art in Procedural Noise Functions A. Lagae1,2 S. Lefebvre2,3 R. Cook4 T. DeRose4 G. Drettakis2 D.S. Ebert5 J.P. Lewis6 K. Perlin

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