Azzera filtri
Azzera filtri

Find all the peaks higher than this threshold and save the corresponding range in a variable.

7 visualizzazioni (ultimi 30 giorni)
I have two plots on the same graph. The blue one is the MaxPerRangeBin and the red one is CfarThold.
I want to locate the peaks in blue which are higher than the red plot.
I have used islocalmax to locate all the peaks in MaxPerRangeBin , which is the logic I have to apply. Now, I have to just find out all the peaks which are just greater than red plot i.e. CfarThold.
I am sharing the snippet, along with the graph.
TF = islocalmax(data(i).MaxPerRangeBin,2);
aa(num_values,:) = data(i).MaxPerRangeBin(num_values,:);
peakvalue_MPRB = aa(TF(num_values,:));
  3 Commenti
Sara Nasir
Sara Nasir il 23 Mar 2022
files = dir('*.mat');
data = struct();
for i = 1:length(files)
result = load([files(i).folder,'\', files(i).name]);
for num_values= 1:length(result.data)
data(i).scanindex(num_values,:) =( result.data(num_values).ScanIndex);
data(i).MaxPerRangeBin(num_values,:) = result.data(num_values).MaxPerRangeBin;
data(i).CfarThold(num_values,:) = result.data(num_values).CfarThold;
% extracting peaks
TF = islocalmax(data(i).MaxPerRangeBin,2);
aa(num_values,:) = data(i).MaxPerRangeBin(num_values,:);
peakvalue_MPRB = aa(TF(num_values,:));
end
plot(data(i).MaxPerRangeBin(1,:)); % Blue plot
hold on;
plot(data(i).CfarThold(1,:)); % Red plot
end
Image Analyst
Image Analyst il 23 Mar 2022
Again, can you attach the data? You forgot to attach any .mat files with the paperclip icon.

Accedi per commentare.

Risposta accettata

Star Strider
Star Strider il 23 Mar 2022
Possibly:
idxv = 1:numel(data(i).MaxPerRangeBin(1,:)); % Index Vector
Lv = (data(i).MaxPerRangeBin(1,:)) >= (data(i).CfarThold(1,:)); % Logical Vector
TF = islocalmax(data(i).MaxPerRangeBin(1,Lv)); % Peaks Logical Vector
TFidx = find(TF); % Numeric Indices
PeakIndices{i} = TFidx; % Save Peak Index Values
.
  4 Commenti
Sara Nasir
Sara Nasir il 23 Mar 2022
Thank you Star Strider for the help. I was able to save the values in a structure.
all_peaks = uu( TF(num_values,:));
sorted_peaks = sort(all_peaks,'descend');
data(num_values).result = sorted_peaks; % saving to struct
c = ismember(Thold, sorted_peaks); % extracting x-values
[ data(num_values).scan_value, data(num_values).bins] = find(c);

Accedi per commentare.

Più risposte (0)

Community Treasure Hunt

Find the treasures in MATLAB Central and discover how the community can help you!

Start Hunting!

Translated by