In this article, we will see how we can implement bernsen local thresholding in mahotas. Bernsen’s method is one of locally adaptive binarization methods developed for image segmentation. In this study, Bernsen’s locally adaptive binarization method is implemented and then tested for different grayscale images.
In this tutorial, we will use “luispedro” image, below is the command to load it.
mahotas.demos.load('luispedro')
Below is the luispedro image
In order to do this we will use mahotas.thresholding.bernsen method
Syntax : mahotas.thresholding.bernsen(image, contrast_threshold, global_threshold)
Argument : It takes image object and two integer as argument
Return : It returns image object
Note: Input image should be filtered or should be loaded as grey
In order to filter the image we will take the image object which is numpy.ndarray and filter it with the help of indexing, below is the command to do this
image = image[:, :, 0]
Example 1:
Python3
# importing required libraries import mahotas import mahotas.demos import numpy as np from pylab import imshow, gray, show from os import path # loading the image photo = mahotas.demos.load( 'luispedro' ) # loading image as grey photo = mahotas.demos.load( 'luispedro' , as_grey = True ) # converting image type to unit8 # because as_grey returns floating values photo = photo.astype(np.uint8) # showing original image print ( "Image" ) imshow(photo) show() # bernsen threshold photo = mahotas.thresholding.bernsen(photo, 7 , 200 ) print ( "Image with bernsen threshold" ) # showing image imshow(photo) show() |
Output :
Example 2:
Python3
# importing required libraries import mahotas import numpy as np from pylab import imshow, show import os # loading image img = mahotas.imread( 'dog_image.png' ) # setting filter to the image img = img[:, :, 0 ] print ( "Image" ) # showing the image imshow(img) show() # bernsen threshold img = mahotas.thresholding.bernsen(img, 5 , 100 ) print ( "Image with bernsen threshold" ) # showing image imshow(img) show() |
Output :