Fringe spacing and frequency from image
9 views (last 30 days)
Show older comments
Hi,
I am trying to calculate the fringe spacing and numbers from the attached image. However, the noise that appears in the dark spot of the fringe causing the error in the frequency estimation using fft function. Could someone please help me with this.
load matlab; whos
imshow(x1',[])
2 Comments
Accepted Answer
Mathieu NOE
on 18 Apr 2025
Edited: Mathieu NOE
on 18 Apr 2025
hello
this is maybe a bit oversimplified but I assumed that I would not make a big error by considering that the fringes are parallel to the horizontal axis
my logic is just to take the mean of the x1 array , smooth a bit the result and pick the peaks (then you get a period in pixel units => up to you to convert in the freq units)
load('matlab.mat')
x1 = double(x1);
% x1(x1>1.5) = NaN; % not really needed , just to remove some large
% amplitude isolated spots
figure,
imagesc(x1)
s1 = mean(x1,2,'omitnan');
s1 = smoothdata(s1,'gaussian',25);
figure,
plot(s1)
hold on
[PKS,LOCS] = findpeaks(s1,'MinPeakHeight',max(s1)/5);
plot(LOCS,PKS,'dr')
spatial_period_pixels = diff(LOCS)
5 Comments
Mathieu NOE
on 18 Apr 2025
fyi , I tried two methods , results are very similar
load('matlab.mat')
x1 = double(x1);
% x1(x1>1.5) = NaN;
figure,
imagesc(x1)
s1 = mean(x1,2,'omitnan');
%% findpeaks period counting
s1 = smoothdata(s1,'gaussian',25);
[PKS,LOCS] = findpeaks(s1,'MinPeakHeight',max(s1)/5);
figure,
plot(s1)
hold on
plot(LOCS,PKS,'dr')
hold off
spatial_period_pixels1 = mean(diff(LOCS))
%% zero crossing period counting
% first some high pass filtering
[b,a] = butter(1,0.1,'high');
s1 = filtfilt(b,a,s1);
threshold = 0.1*max(s1);
x = (1:numel(s1))';
t0_pos1 = find_zc(x,s1,threshold);
spatial_period_pixels2 = mean(diff(t0_pos1))
figure
plot(x,s1,'b',t0_pos1,threshold*ones(size(t0_pos1)),'*r','linewidth',2,'markersize',6);grid on
legend('signal','signal positive slope crossing points');
%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%
function [Zx] = find_zc(x,y,threshold)
% positive slope "zero" crossing detection, using linear interpolation
y = y - threshold;
zci = @(data) find(diff(sign(data))>0); %define function: returns indices of +ZCs
ix=zci(y); %find indices of + zero crossings of x
ZeroX = @(x0,y0,x1,y1) x0 - (y0.*(x0 - x1))./(y0 - y1); % Interpolated x value for Zero-Crossing
Zx = ZeroX(x(ix),y(ix),x(ix+1),y(ix+1));
end
More Answers (0)
See Also
Categories
Find more on Denoising and Compression in Help Center and File Exchange
Community Treasure Hunt
Find the treasures in MATLAB Central and discover how the community can help you!
Start Hunting!