I am currently applying the Zhang-Suen thinning algorithm to hone down on some filaments I would like to later track. This requires me to output a grayscale image in order to identify objects using OpenCV.
import matplotlib import matplotlib.pyplot as plt import skimage.io as io "load image data" Img_Original = io.imread( './data/test1.bmp') # Gray image, rgb images need pre-conversion "Convert gray images to binary images using Otsu's method" from skimage.filter import threshold_otsu Otsu_Threshold = threshold_otsu(Img_Original) BW_Original = Img_Original < Otsu_Threshold # must set object region as 1, background region as 0 ! #... "Apply the algorithm on images" BW_Skeleton = zhangSuen(BW_Original) # BW_Skeleton = BW_Original "Display the results" fig, ax = plt.subplots(1, 2) ax1, ax2 = ax.ravel() ax1.imshow(BW_Original, cmap=plt.cm.gray) ax1.set_title('Original binary image') ax1.axis('off') ax2.imshow(BW_Skeleton, cmap=plt.cm.gray) ax2.set_title('Skeleton of the image') ax2.axis('off') plt.show()
The image plotted using matplotlib is exactly what I want (black and white). When I use either skimage or cv2 to write the output image to a file path, I get a similar image in blue and red. My only problem is that I can't convert this blue/red image to grayscale! So in essence, my output image is useless. Forgive me if this is a trivial question, but is there a protocol for writing images to file paths? What should I be looking out for in terms of image types (ie. bytes, colour/grayscale, format) when I use these tools? Thanks in advance!