This tool alters the cumulative distribution function (CDF) of a raster image to match, as closely as possible, the CDF of a uniform distribution. Histogram equalization works by first calculating the histogram of the input image. This input histogram is then converted into a CDF. Each grid cell value in the input image is then mapped to the corresponding value in the uniform distribution's CDF that has an equivalent (or as close as possible) cumulative probability value. Histogram equalization provides a very effective means of performing image contrast adjustment in an efficient manner with little need for human input.

The user must specify the name of the input image to perform histogram equalization on. The user must also specify the number of tones, corresponding to the number of histogram bins used in the analysis.

histogram_equalization is related to the histogram_matching_two_images tool (used when an image's CDF is to be matched to a reference CDF derived from a reference image). Similarly, histogram_matching, and gaussian_contrast_stretch are similarly related tools frequently used for image contrast adjustment, where the reference CDFs are uniform and Gaussian (normal) respectively.

Notes:

See Also

piecewise_contrast_stretch, histogram_matching, histogram_matching_two_images, gaussian_contrast_stretch

Function Signature

def histogram_equalization(self, raster: Raster, num_tones: int = 256) -> Raster: ...

Project Links

WbW Homepage User Manual Support WbW