## Hot answers tagged matlab

3

For a single number
You can include a C-like format specifier in num2str:
>> num2str(.125, '%0.4f')
ans =
0.1250
Or use sprintf:
>> sprintf('%0.4f', .125)
ans =
0.1250
For matrices
Use num2str with a matrix input. Include the desired separator column (such a space) in the format specifier:
>> num2str([.125 .5; 2 8], '%0.4f ')
ans =
...

3

Your test is flawed, as others have noted, and does not even address the statement made by the title. You are comparing an inbuilt Matlab function to C++, not Matlab code itself, which in fact executes 100x more slowly than C++. Matlab is just a wrapper around the BLAS/LAPACK libraries in C/Fortran so one would expect a Matlab script, and a competently ...

3

In your C++ code, you are doing 5000 allocations of double[5000] on the heap. You would probably get much better speed if you did a single allocation of a double[25000000], and then do your own arithmetic to convert your 2 indices to a single one.

2

You want an output of size [50,25] which is already summarized. The output of bsxfun should be of dimensions [50,25,42] which means all inputs must be of this size except for singleton dimensions. Your [42, 50] needs to be permute to [50,1,42] and the second input to [1,25,42]
x1=rand(42,50);
x2=rand(42,25);
x1=permute(x1,[2,3,1]);
x2=permute(x2,[3,2,1]);
...

2

A simple approach would be to:
Rotate the image according to the principal axis
Compute the difference of the points on the contour row-wise
Find the peaks in the difference vector, and keep the last.
Here the code (Version 2):
% Read the image
img = imread(path_to_image);
% Binarize the image
bw = img > 127;
% Compute principal component ...

1

Here's a way using bsxfun and shiftdim:
m = 3;
n = 4;
A = rand(m,n); % example data
C = bsxfun(@times,A,shiftdim(eye(n),-1));
shiftdim is used to map the N-by-N identity matrix to an 1-by-N-by-N array which is then multiplied by A and virtually replicated across the first dimension. This approach should be both memory-efficient and fast. Comparing to your ...

1

First of all you cannot do this : D(idx) = {[]} if you have a double array.
Then, isnan does not work with cell arrays. Consider the following cell:
a = cell(2,2);
a{1,1} = NaN;
a{1,2} = 2;
a{2,1} = NaN;
a{2,2} = 'hi';
you cab either use isnan element-wise (on each element of a cell), like:
isnan(a{1,1})
=
1
or when all the elements of the cell ...

1

It looks like you should be able to use a scale factor scale(i) to bring gm(k, i) into a representable range, because if you multiply gm(k, i) by scale(i) this will end up multiplying sumGM(i) as well, and be cancelled away when you work out res(k, i) = gm(k, i) / sumGM(i).
I would make scale(i) = 1 / max_k(exp(-0.5*(X(i,:)-mu(k,:))) in theory, and actually ...

1

Trying to come up with "equivalent" code is always fraught with hazards. Mathematica and Matlab's symbolic math are quite different in their philosophies and implementations.
In the case of your proposed Matlab code, the first thing you want to try to do is remove the double for loop. Then try to vectorize and operations and reuse previous results. If ...

1

What I usually just do is the following
figure('Position',[x,y,w,b]);
for i = 1:10
subplot('Position',[x2,y2-i*sc,w2,b2])
plot here
xl = get(gca,'XTickLabel');
set(gca,'XTickLabel','')
ylabel('bla')
end
set(gca,'XTickLabel',xl)
xlabel('bla2')
in figure you set your desired figure positon and size using x y w and b. By using the ...

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