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path: root/binarize/sauvola.go
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package main

import (
	"image"
	"image/color"
)

// Implements Sauvola's algorithm for text binarization, see paper
// "Adaptive document image binarization" (2000)
func Sauvola(img *image.Gray, ksize float64, windowsize int) *image.Gray {
	b := img.Bounds()
	new := image.NewGray(b)

	for y := b.Min.Y; y < b.Max.Y; y++ {
		for x := b.Min.X; x < b.Max.X; x++ {
			window := surrounding(img, x, y, windowsize)
			m, dev := meanstddev(window)
			threshold := m * (1 + ksize * ((dev / 128) - 1))
			if img.GrayAt(x, y).Y < uint8(threshold) {
				new.SetGray(x, y, color.Gray{0})
			} else {
				new.SetGray(x, y, color.Gray{255})
			}
		}
	}

	return new
}

// Implements Sauvola's algorithm using Integral Images, see paper
// "Effcient Implementation of Local Adaptive Thresholding Techniques Using Integral Images"
// and
// https://stackoverflow.com/questions/13110733/computing-image-integral
func IntegralSauvola(img *image.Gray, ksize float64, windowsize int) *image.Gray {
	b := img.Bounds()
	new := image.NewGray(b)

	integral := integralimg(img)
	integralsq := integralimgsq(img)

	for y := b.Min.Y; y < b.Max.Y; y++ {
		for x := b.Min.X; x < b.Max.X; x++ {
			m, dev := integralmeanstddev(integral, integralsq, x, y, windowsize)
			threshold := m * (1 + ksize * ((dev / 128) - 1))
			if img.GrayAt(x, y).Y < uint8(threshold) {
				new.SetGray(x, y, color.Gray{0})
			} else {
				new.SetGray(x, y, color.Gray{255})
			}
		}
	}

	return new
}