GAMMA_ADJUSTMENT
Adjusts the gamma of an input image and outputs the adjusted image Params: default : Image The input image gain : float, default=1 The gain of the logarithmic correction. gamma : float, default=1 The gamma to correct to. Returns: out : Image The adjusted image.
Python Code
import numpy as np
from flojoy import Image, flojoy
from skimage.exposure import adjust_gamma
@flojoy(deps={"scikit-image": "0.21.0"})
def GAMMA_ADJUSTMENT(
default: Image,
gain: float = 1,
gamma: float = 1,
) -> Image:
"""
Adjusts the gamma of an input image and outputs the adjusted image
Parameters
----------
default: Image
The input image
gain: float, default=1
The gain of the logarithmic correction.
gamma: float, default=1
The gamma to correct to.
Returns
-------
Image
The adjusted image.
"""
r = default.r
g = default.g
b = default.b
a = default.a
if a is not None:
rgba_image = np.stack((r, g, b, a), axis=2)
else:
rgba_image = np.stack((r, g, b), axis=2)
# Check if the image is in the appropriate format
if rgba_image.dtype != np.uint8:
raise ValueError("Image must be in uint8 format")
# Apply logarithmic correction
corrected_image = adjust_gamma(rgba_image, gain=gain, gamma=gamma)
r = corrected_image[:, :, 0]
g = corrected_image[:, :, 1]
b = corrected_image[:, :, 2]
if a is not None:
a = corrected_image[:, :, 3]
return Image(r=r, g=g, b=b, a=a)
Example
Having problems with this example app? Join our Discord community and we will help you out!
In this example, contrast adjustments were performed on an example image.
First the necessary blocks were added: SKIMAGE
to fetch the example image, 3 IMAGE
blocks to view the images, LOGARITHMIC_ADJUSTMENT
, AND GAMMA_ADJUSTMENT
.
The gamma
parameter for GAMMA_ADJUSTMENT
was set to 1.5, and the SKLEARN
image was set to moon
. The remaining parameters were left at default values.
The blocks were connected as shown and the app was run.