## Hot answers tagged matlab

2

You way of importing data is quite clumsy. I invite you to read the textscan function documentation, which allows much more flexibility in importing mixed data type (text and numeric data).
I propose you another way of importing, which uses textscan:
%% // Import only the 4th column of data
fid = fopen('co2a0000364.csv') ;
M = textscan( fid , '%*s%*s%*s%f' ...

2

In a struct defined as struct('speed',{100.3},'nr',{55.4},'on',{54}), the field on is a double. Pass as a uint8 from MATLAB:
struct('speed',{100.3},'nr',{55.4},...
'on',{uint8(54)}),
Any numeric value without a specified type in MATLAB is a double.
Also note that for reading a scalar value, the problem is simplified somewhat by mxGetScalar. It will ...

2

Your mask is being divided by the wrong coefficients. You normalize each coefficient by sum(abs(b(:))) or sum(abs(c(:))) to ensure that when you filter using convolution masks, the output dynamic range matches the input.
In your case, you need to divide by 6 and not 256. That's why you have a decreased contrast in comparison to what the IPT gives you in ...

2

Under the assumption that the "rest" point is the steady-state value in your data and the fact that the steady-state value happens the majority of the times in your data, you can simply bin all of the points and use each unique value as a separate bin. The bin with the highest count should correspond to the steady-state value.
You can do this by a ...

1

You assume too much on how memory management is operated.
I just ran a benchmark with timeit. From N=10 to N=20000 there is absolutely no noticeable difference in the execution time of both forms.
Moreover, I still get the very same results if I turn the JIT acceleration off ... so the optimization may be just the result of Matlab lazy-copy behaviour.
I ...

1

You just need cell2mat with a little of permute:
c = repmat({(1:4).'},2,3); %'// example cell array
result = permute(cell2mat(permute(c,[3 1 2])), [2 3 1])

1

There are two answers , if you will always be looking for complete columns, the answer is simple
t=sum(X);
is a row with the sum of all the columns
then
ans=sum(t(i))
is what you want.
if you might be looking for odd shapes linear indices might be what you are looking for.
See
sub2ind
First create a linear index into the matrix (a 1D indexing) ...

1

It seems like you need to provide a wrapper of your data that interpolates it for arbitrary t, for example
my_interp = @(t) interp1(my_data_t, my_data_x, t)
http://se.mathworks.com/help/matlab/ref/interp1.html
and then implement your RHS (@Model_Bio) in terms of my_interp

1

Use imrect, set the size and make it non-resizable, then imcrop, something like:
figure, imshow(I);
h = imrect(gca, [10 10 250 250]);
setResizable(h,0)
rect = wait(h);
% now move to appropriate position
% command line blocked until rectangle is double clicked
I2 = imcrop(I, rect)

1

Just use reshape with a 1*3 size:
den = reshape([ones(1,length(K));ones(1,length(K))*5; K-6; K],[1 4 length(K)]);
I think the used extra memory by reshape should be low and constant (dependent only on the length of the vector of new sizes).

1

You need to "broadcast" the scalar values in columns so they are of the same length as your K vector. MATLAB does not do this broadcasting automatically, so you need to repeat the scalars and create vectors of the appropriate size. You can use repmat() for this.
K = 2:2.5:10;
%% // transpose K to a column vector:
K = transpose(K);
%% // helper function ...

1

To complete the question based on @kkuillas answer:
You can find out the maximum length of the columns by
max_len = max(cell2mat(cellfun(@(x)size(x,1),temp_mat,'UniformOutput',false)));
and then create your final matrix
fin_mat = zeros(max_len,size(temp_mat,2));
for i = 1:length(temp_mat)
fin_mat(1:size(temp_mat{i},1),i) = temp_mat{i};
end
(maybe ...

1

Use a cell array instead.
a = rand(5,1);
for ii = 1 : 6
delay = round(abs(randn(1,1)));
shifted_a = [zeros(delay,1);a];
temp_mat{ii} = shifted_a; % // Use a cell array instead
end
And if you want to join them, you can use vertcat to make one long vector.
B=vertcat(temp_mat{:});

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