Nested for loops for cell array
1 view (last 30 days)
Show older comments
Hi,
I have a cell RDM {1x10} and every cell contains (512x1024) matrix. Now i have applied the following algorithm on one Matrix which i have to apply on all the matrices of cell.
fft_size = 2^6;
Tr = 10;
Td = 8;
Gr = 4;
Gd = 4;
% offset the threshold by SNR value in dB
offset = 1.4;
for i = Tr+Gr+1:(fft_size/2)-(Gr+Tr)
for j = Td+Gd+1:fft_size-(Gd+Td)
noise_level = zeros(1,1);
for p = i-(Tr+Gr) : i+(Tr+Gr)
for q = j-(Td+Gd) : j+(Td+Gd)
if (abs(i-p) > Gr || abs(j-q) > Gd)
noise_level = noise_level + 10.^(RDM(p,q)/10);
end
end
end
threshold = 10*log10(noise_level/(2*(Td+Gd+1)*2*(Tr+Gr+1)-(Gr*Gd)-1));
threshold = threshold + offset;
CUT = RDM(i,j);
if (CUT < threshold)
RDM(i,j) = 0;
else
RDM(i,j) = 1;
end
end
end
I get error on indexing every time. How can i implement that for all 10 matrices. i tried the following.
for k = length(RDM)
RDM{k} = RDM{k}/max(max(RDM{k}));
for i = Tr+Gr+1:(fft_size/2)-(Gr+Tr)
for j = Td+Gd+1:fft_size-(Gd+Td)
%Create a vector to store noise_level for each iteration on training cells
%noise_level = cell{zeros(1,1)};
% Calculate noise SUM in the area around CUT
for p = i-(Tr+Gr) : i+(Tr+Gr)
for q = j-(Td+Gd) : j+(Td+Gd)
if (abs(i-p) > Gr || abs(j-q) > Gd)
noise_level{k} = noise_level{k} + 10.^(RDM{k}(p,q)/10);
end
end
end
% Calculate threshould from noise average then add the offset
threshold{k} = 10*log10(noise_level{k}/(2*(Td+Gd+1)*2*(Tr+Gr+1)-(Gr*Gd)-1));
threshold{k} = threshold{k} + offset;
CUT{k} = RDM{k}(i,j);
if (CUT{k} < threshold{k})
RDM{k}(i,j) = 0;
else
RDM{k}(i,j) = 1;
end
end
end
end
4 Comments
Tommy
on 25 May 2020
Ok. Does this work?
for k = length(RDM)
RDM{k} = RDM{k}/max(max(RDM{k}));
for i = Tr+Gr+1:(fft_size/2)-(Gr+Tr)
for j = Td+Gd+1:fft_size-(Gd+Td)
%Create a vector to store noise_level for each iteration on training cells
noise_level{k} = zeros(1,1);
% Calculate noise SUM in the area around CUT
for p = i-(Tr+Gr) : i+(Tr+Gr)
for q = j-(Td+Gd) : j+(Td+Gd)
if (abs(i-p) > Gr || abs(j-q) > Gd)
noise_level{k} = noise_level{k} + 10.^(RDM{k}(p,q)/10);
end
end
end
% Calculate threshould from noise average then add the offset
threshold(k) = 10*log10(noise_level{k}/(2*(Td+Gd+1)*2*(Tr+Gr+1)-(Gr*Gd)-1));
threshold(k) = threshold(k) + offset;
CUT(k) = RDM{k}(i,j);
if (CUT(k) < threshold(k))
RDM{k}(i,j) = 0;
else
RDM{k}(i,j) = 1;
end
end
end
end
If not, what's the error you're getting?
Answers (0)
See Also
Categories
Find more on Matrices and Arrays in Help Center and File Exchange
Products
Community Treasure Hunt
Find the treasures in MATLAB Central and discover how the community can help you!
Start Hunting!