1
2
3
4
5
6
7
8
9
10
11
12
13
14
15
16
17
18
19
20
21
22
23
24
25
26
27
28
29
30
31
32
33
34
35
|
# This sample shows the an efficient way of doing image processing
# over Blender's images using Python.
import bpy
import numpy as np
input_image_name = "Image"
output_image_name = "NewImage"
# Retrieve input image.
input_image = bpy.data.images[input_image_name]
w, h = input_image.size
# Allocate a numpy array to manipulate pixel data.
pixel_data = np.zeros((w, h, 4), 'f')
# Fast copy of pixel data from bpy.data to numpy array.
input_image.pixels.foreach_get(pixel_data.ravel())
# Do whatever image processing you want using numpy here:
# Example 1: Inverse red green and blue channels.
pixel_data[:,:,:3] = 1.0 - pixel_data[:,:,:3]
# Example 2: Change gamma on the red channel.
pixel_data[:,:,0] = np.power(pixel_data[:,:,0], 1.5)
# Create output image.
if output_image_name in bpy.data.images:
output_image = bpy.data.images[output_image_name]
else:
output_image = bpy.data.images.new(output_image_name, width=w, height=h)
# Copy of pixel data from numpy array back to the output image.
output_image.pixels.foreach_set(pixel_data.ravel())
output_image.update()
|