How to reduce the computation time for adding 3D-array?
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Hi, I am trying to add multiple 3D-arrays to a bigger 3D-array at a specific index (x,y,z)
Below is the code, and it does work and compute the answer but it seems very ineffecient.
In this example, i only have 4 sets of coordiantes (x,y,z) but in real code, i have more than 1e6 sets of points.
It takes very long to compute the result with that many points.
Is there any way to reduce the computation time?
Thank you in advance
Regards
J
Big=zeros(500,500,500); %%%% Bigger Array
Small=rand(250,250,250);
x=[245; 220; 256; 270];
y=[245; 220; 256; 270];
z=[245; 220; 256; 270];
for n = 1 : length(x)
x_cord=x(n)-length(Small)/2;
y_cord=y(n)-length(Small)/2;
z_cord=z(n)-length(Small)/2;
x_end= x_cord + length(Small) -1 ;
y_end= y_cord + length(Small) -1;
z_end=z_cord + length(Small) -1;
if x_end <= length(Big)
Big(x_cord:x_end, y_cord:y_end,z_cord:z_end)=Big(x_cord:x_end, y_cord:y_end,z_cord:z_end)+Small();
end
end
2 Comments
Walter Roberson
on 9 Dec 2020
could also be done with accumarray, but I am not sure that would be faster considering the time to generate the coordinate matrices... though I did just think of a shortcut for that.
jae lee
on 9 Dec 2020
Accepted Answer
More Answers (1)
Amrtanshu Raj
on 24 Dec 2020
0 votes
Hi,
You can use the parfor loop to use parallel processing and get higher computation speeds. However you will have to modify your for loop to be used for parfor loop.
Hope this helps !!
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