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from interactive_pipe import interactive_pipeline, interactive
import numpy as np
@interactive()
def exposure(img, coeff=(1., [0.5, 2.], "exposure"), bias=(0., [-0.2, 0.2])):
'''Applies a multiplication by coeff & adds a constant bias to the image'''
# In the GUI, the coeff will be labelled as "exposure".
# As the default tuple provided to bias does not end up with a string,
# the widget label will be "bias", simply named after the keyword arg.
return img*coeff + bias
@interactive()
def black_and_white(img, bnw=(True, "black and white")):
'''Averages the 3 color channels (Black & White) if bnw=True
'''
# Special mention for booleans: using a tuple like (True,) allows creating the tick box.
return np.repeat(np.expand_dims(np.average(img, axis=-1), -1), img.shape[-1], axis=-1) if bnw else img
@interactive()
def blend(img0, img1, blend_coeff=([0., 1.])):
'''Blends between two image.
- when blend_coeff=0 -> image 0 [slider to the left ]
- when blend_coeff=1 -> image 1 [slider to the right]
'''
return (1-blend_coeff)*img0 + blend_coeff*img1
@interactive_pipeline(gui="gradio", size="maximum")
def sample_pipeline(input_image):
exposed = exposure(input_image)
bnw_image = black_and_white(input_image)
blended = blend(exposed, bnw_image)
return exposed, blended, bnw_image
if __name__ == '__main__':
input_image = np.array([0., 0.5, 0.8])*np.ones((256, 512, 3))
sample_pipeline(input_image)
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