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7

You are looking for elements where the convolution with the kernel [1,1,1] does not differ with the original. The only complication is that we have to ignore the edge case: x = [1 0 2 0 0 3 0 4 5 6 0 7 0 8]; y = conv(x,[1,1,1],'same'); ind = find(x==y); x(ind(2:end-1)) = 0 or x(find(x(2:end-1)==conv(x,[1,1,1],'valid'))+1) = 0 if faced with the ...


5

Use bsxfun(MATLAB doc, Octave doc) and check to see if broadcasting the first slice is equal across all slices with a call to all(MATLAB doc, Octave doc): B = bsxfun(@eq, A, A(:,:,1)); result = all(B, 3); The beauty of the above approach is that you can have as many slices as you want in the third dimension, other than just three. Example %// Your data ...


4

Here would be my way to do it x_add = x(1:end-2) + x(2:end-1) + x(3:end); x(find([0,x(2:end-1)==x_add,0]))=0; It does add the previous value and the next value to each one and check which one didn't change


4

Using conv (along the lines of Dan's answer) is probably the best approach; but it can also be done with strfind: x(strfind(x~=0, [0 1 0]) + 1) = 0; Or using diff to compute a second-order difference: x(find(diff(~x, 2)==2) + 1) = 0;


4

Here's another approach: compute differences along third dimension and detect when all those differences are zero: result = ~any(diff(A,[],3),3);


4

You can do the following: >> arr = ones(10); % your input matrix >> arr(20,20) = 0; >> size(arr) ans = 20 20 Smaller sized example: >> arr = ones(3); >> arr(5,5) = 0 arr = 1 1 1 0 0 1 1 1 0 0 1 1 1 0 0 0 0 0 0 0 0 0 0 0 ...


6

use : cellfun(@unique,input,'UniformOutput',0) ans = 'CEGH' 'CEG' 'ABCDEF' 'BCFG' 'BCDEG' 'BEFH' 'ACEGH'


3

Maybe you are just searching for something simple like plot3. The points are connected by default. If you want to show the data-points, you can use linespec to easily define the style of the points and the line. x = [1,2,3; 2,3,4; 3,3,5; 7,3,6]; plot3(x(:,1),x(:,2),x(:,3),'*-'); grid on; This is the result: Here is an example that calculates new points ...


3

EDIT: Here's a revised version with impoly: % Read images skull = imread('skull.jpg'); skull_mask = true(size(skull,1),size(skull,2)); % Use mask for overlay shell = imread('shell2.jpg'); imshow(shell); hold on; p_h = impoly; % Find transformation (either set this manually or find it with something % like sift) input_points = [0 ...


3

Another approach is to use hankel: >> n = 5; >> hankel(1:n, n:2*n-1) ans = 1 2 3 4 5 2 3 4 5 6 3 4 5 6 7 4 5 6 7 8 5 6 7 8 9


3

This can be done using the copyobj function. You'll need to copy the Axes object from one figure to the other: f(1) = openfig('fig1.fig'); f(2) = openfig('fig2.fig'); ax(1) = get(f(1),'CurrentAxes'); % Save first axes handle ax(2) = copyobj(get(f(2),'CurrentAxes'),f(1)); % Copy axes and save handle Then you can move and resize both axes ...


3

If you are using knnsearch, just use IDX = knnsearch(X,Y, 'K', 4); ('K' defines the number of nearest neighbours) If you are using fitcknn, mdl = fitcknn(X,y,'NumNeighbors', 4) If you are using ClassificationKNN.fit, mdl = ClassificationKNN.fit(X,y,'NumNeighbors', 4);


3

bsxfun can do the job indeed: n = 5 ; a = bsxfun( @(x,y) x+y-1 , (1:n), (1:n).') a = 1 2 3 4 5 2 3 4 5 6 3 4 5 6 7 4 5 6 7 8 5 6 7 8 9 As Luis Mendo rightly reminded us, bsxfun will be even faster with the built-in functions (the list is in the ...


2

Use textscan for this purpose.Check it out here In your case you can do something of this sort- A = textscan(str,'%.4f %.4f %.4f %c %d %d %d %d %d %d %d %d %d %d %d %d'); You will get a 1X16 cell.You can access any element using A{i}.For example to get the character just do this- ch=char(A{4}); Likewise,you can access any element without having to ...


2

It's not clear what distribution you want. This is a generic answer for any length distribution. S = 'ABCDEFGH'; %// input characters distr = [.1 .2 .1 .2 .1 .1 .1 .1]; %// probability of getting lengths 1, 2, ..., numel(S) n = randsample(numel(distr), 1, 1, distr); %// random length with the specified distribution ind = sort(randperm(numel(S), n)); %// ...


2

You can use sprintf and \n to get multiple lines. The additional HorizontalAlignment-property aligns the text horizontally. Then you just need to fine fine-tune the overall position. f = figure('menu','none','toolbar','none'); txt = sprintf('Line 1\nA longer line 2\nLine 3'); uicontrol('Style','text','Position',[30 45 180 40],'String',txt,... ...


2

Although rayryeng's answer pointed out the mistake and corrected it, but i still want to try a 1-line-code version with cellfun: function L = remove_all(L,E) % remove_all(List,element) - delete all occurrences of E from L L.elements(cellfun(@(x) x == E, L.elements)) = []; end


2

You are mutating the structure in the for loop by removing elements in this structure but forgetting the fact that the length of the structure changes as you are removing elements. As such, the length of the structure decreases with each removal, and you will eventually go out of bounds when removing items. Specifically, you used length to capture the ...


2

To copy cell array elements from one cell array to another without having to access the content of the element you can use the standard matrix indexing syntax, which uses the brackets (i,j) instead of the curly braces {i,j}. let M be a cell array: M(i,j) return a 1x1 cell, copy of the (i,j) element of M M{i,j} return the content of the (i,j)th element of M. ...


2

You're probably looking to use surf and will need meshgrid as well: [p,n] = meshgrid(P,N)dimensions are wrong... surf(p,n,K) Although looking at the docs, I think you might be able to skip the meshgrid line here: surf(P,N,K)


2

Try using sprintf instead: str = sprintf('%.4f', f)


2

If I understood the question correctly, listed in this post could be one approach to solve it. Please note that since A is the matrix of unique columns from M considering upto the third row, it is skipped here as the input because we generate it internally with the solution code. Here's the implementation - %// Inputs M = [1007 1007 4044 1007 4044 1007 ...


1

Matlab is a typeless language, so you don't know what type y is actually going to be. When you try data = [3 6 2 9 5 1] and call class(y) you will get double as an answer, which in this example is a vector of real numbers max() can work on. However when you use data = [3 6 2 ; 9 5 1], you get different y : >> class(y) ans = cell >> y y = ...


1

Cell array is what you need. data_date = '08/15/2003'; num1 = 56; num2 = 23; num3 = 2; array = {data_date, num1, num2, num3};


1

Yes, you can do this by accessing only the columns matching a certain value in your day or condition rows. For example, say your input matrix is A, and that the entries in the third row A(3,:) are the days, and the entries in the fourth row A(4,:) are the conditions. Then A(:, A(3,:) == 2) will give you the subset of columns in A where the day is 2. And ...


1

stack=[ 0.3377 13.2877 0.9998 12.4943 0.9510 12.4842 0.9574 13.9244 0.9777 13.2662 0.9979 13.1708 0.9875 13.1157 0.9031 13.6960 0.9960 12.4719 0.9979 13.6824 1.0000 13.7335 0.7812 14.2022 0.9998 14.7640 0.9945 13.1227 0.9999 13.3503 1.0000 12.8568 0.9999 ...


1

The issue is because you're passing 15 values to printf in this line: fprintf(fileID,' %f %f 0.0000 %c 0 0 0 0 0 0 0 0 0 0 0 0\n',double(n1{1}),... double(n1{2}),char(n1{4}),double(n1{5}),double(n1{6}),double(n1{7}),... double(n1{8}),double(n1{9}),double(n1{10}),double(n1{11}),double(n1{12}),... ...


1

You should avoid loops or whiles in Matlab. Try to use one line sentences taking advantage of the matrix syntax. In this case, instead of reading the file with fgets, use directly textscan to read the file. C = textscan(fileID,formatSpec) Avoid using the same commands than c if there is an specialized one in Matlab. It usually have better performance ...


1

Your approach is correct , but prctile expects percentages (between 0 and 100). So: a = prctile(tcIED.', 90); Or, equivalently, use quantile with proportions (between 0 and 1): a = quantile(tcIED.', 0.9); For example, with your data you get >> a(1) ans = 6190 which means that about 90% of the values row 1 of your data matrix are less ...



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