# How to normalize Perlin Noise Values to range [0, 1]?

I am using a numpy array to hold Perlin Noise values. I have been told that Perlin Noise values in a 2D array are in the range [-0.7, 0.7] respectively, but this doesn't seem to be true. At least not for Caseman's "noise" library when I adjust the parameters for octaves, persistence, and lacunarity.

I would use a different library, except I can't find any for python that will run anywhere near as fast. Also, the typical formula for normalizing a value to range [0, 1] doesn't seem to work here regardless. Even If I get the min/max values of the unmodified noise, it still doesn't give me the value range I want. I just have to guess what to use for the min/max values until the range is roughly [0, 1].

How can I normalize Perlin Noise values to range [0, 1]?

``````import noise
import numpy
import sys

def __noise(noise_x, noise_y):
"""
Generates and returns a noise value normalized to (roughly) range [0, 1].

:param noise_x: The noise value of x
:param noise_y: The noise value of y
:return: float
"""

value = noise.pnoise2(noise_x, noise_y, 8, 1.7, 2)
# Normalize to range [0, 1]
value = numpy.float32((value + 0.6447) / (0.6697 + 0.6447))

return value

map_arr = numpy.zeros([900, 1600], numpy.float32)

for y in range(900):

for x in range(1600):

noise_x = x / 1600 - 0.5
noise_y = y / 900 - 0.5

value = __noise(noise_x, noise_y)
map_arr[y][x] = value

for row in map_arr:
for num in row:
sys.stdout.write(str(num) + " ")
print("")
``````
• Ah, my mistake. Why doesn't `(map_arr - map_arr.min()) / (map_arr.max() - map_arr.min())` work? – gmds Mar 22 at 1:24
• @MarcusLim I would have to iterate entirely through the array to generate the relevant min/max values. Then, I would have to iterate through the entire array again to adjust all of the values therein. This seems inefficient. Also, I mentioned that it doesn't get me a range close to [0, 1] anyway. – LuminousNutria Mar 22 at 1:30
• I am afraid I do not understand. Why would you have to perform iteration, since you can apply a vectorised operation using the code in my comment? – gmds Mar 22 at 1:32
• @MarcusLim Because when map_arr is first initialized, it is full of zeros. – LuminousNutria Mar 22 at 1:33
• So you're saying that you want to perform the min/max calculation at the same time as the generation of data, by caching already seen values? That can be done easily, but would it really be such a performance boost? – gmds Mar 22 at 1:34

`map_arr = (map_arr - map_arr.min()) / (map_arr.max() - map_arr.min())` (taking advantage of `numpy` broadcasting and vectorisation) should be sufficient.