Why the output image is not visible after k means clustering ?
1 Ansicht (letzte 30 Tage)
Ältere Kommentare anzeigen
Here is the code,
img_folder='C:\Users\COMSOL\Documents\MATLAB\kss';
fname = dir(fullfile(img_folder,'*.jpg'))
grayImage= imread('calculi-140.jpg');
[rows, columns, numberOfColorChannels] = size(grayImage);
if numberOfColorChannels == 3
fprintf('That was a color image. I am converting it to grayscale.\n');
grayImage = rgb2gray(grayImage);
end
grayImage = imgaussfilt(grayImage);
gr= imadjust(grayImage,stretchlim(grayImage),[]);
features = extractLBPFeatures(gr);
numberOfClasses = 3; %k means clustering
indexes = kmeans(features(:), numberOfClasses);
classImage = reshape(indexes, size(features));
figure, imshow(classImage);
I am getting a white linea as the output
The input and output images are attached. Pls check and help me to solve this error. Any help is appreciated.
1 Kommentar
KSSV
am 31 Aug. 2021
It is because, you are inputting an array into kmeans.
features = extractLBPFeatures(gr);
Check features, this is 1X59 array.
Antworten (1)
Sahil Jain
am 3 Sep. 2021
Hi. As mentioned by another community member, the "extractLBPFeatures" function returns a vector of features which is why the output of your k-means is also a vector. To not have the output as a white line, you can try using "imshow(classImage, [])". This will display the minimum value of "classImage" as black and the maximum value as white.
Siehe auch
Community Treasure Hunt
Find the treasures in MATLAB Central and discover how the community can help you!
Start Hunting!