count rectangles on big matrices
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    freebil
      
 el 27 de Sept. de 2013
  
Hello. I have very large sparse matrices with zero and one only and i have to count all the rectangles that there are in it. For example:
   1 0 0 0 1
H=[1 1 0 1 1]
   0 1 1 1 0
   0 0 0 0 1
There are 2 rectangles inside.
1st--> H(1,1),H(2,1),H(1,5),H(2,5)
2nd--> H(2,2),H(3,2),H(2,4),H(3,4)
I wrote a code but it is very slow with large matrices..
for i=1:m
  for j=1:n
      if H(i,j)==1
          for ii=i+1:m
              if H(ii,j)==1
                  for jj=j+1:n
                      if H(i,jj)==1
                          if H(ii,jj)==1
                              cycles=cycles+1;
                          end   
                      end
                  end
              end
          end
      end
  end
end
Any ideas please?
10 comentarios
Respuesta aceptada
  Cedric
      
      
 el 28 de Sept. de 2013
        
      Editada: Cedric
      
      
 el 5 de Nov. de 2013
  
      == Final answer in comments.
== ANSWER Sun@10:10am
The only easy improvement that I could think of is to eliminate elements which are alone on their row and/or column. It could be significant if the density is low.
 [r,c] = find( H ) ;
 n = numel( r ) ;
 % - Preprocessor: eliminates entries which are "alone" row or column-wise.
 v1s = ones(n, 1) ;
 rCnt = accumarray( r, v1s ) ;  cCnt = accumarray( c, v1s ) ;
 isAlone = rCnt(r) == 1 | cCnt(c) == 1 ;
 r = r(~isAlone) ;  c = c(~isAlone) ;  n = numel( r ) ;
 % - Main loop.
 nCycles = 0 ;
 % Loop through potential upper-left corners.
 for k_ul = 1 : n-3
    if c(k_ul) == n,  break ;  end    
    if r(k_ul) == n,  continue ;  end
    % Find and loop through potential lower left corners.
    ix_ll = find( c == c(k_ul) & r > r(k_ul) ) ;
    if isempty( ix_ll ),  continue ;  end
    for k_ll = ix_ll.'
        % Find all potential columns matching upper right corners.
        c_ur = c( r == r(k_ul) & c > c(k_ul) ) ;
        % Find all potential columns matching row of lower left corner.
        c_r_ll = c( r == r(k_ll) & c > c(k_ll) ) ;
        % Count cycles as # elements of intersect.
        nCycles = nCycles + nnz( bsxfun(@eq, c_ur.', c_r_ll )) ;
    end
 end
== ANSWER Sat@2:04pm
EDIT Sat@7:30pm : replaced call to INTERSECT (slow) with a solution based on BSXFUN.
I am in a rush and I have to leave, so I don't have time to write explanations or to perform tests, but here is what I guess could be a solution. Have a look and I'll come back later today to discuss it if needed.
 [r,c] = find( H ) ;
 n = numel( r ) ;
 nCycles = 0 ;
 % Loop through potential upper-left corners.
 for k_ul = 1 : n-3
    if c(k_ul) == n,  break ;  end    
    if r(k_ul) == n,  continue ;  end
    % Find and loop through potential lower left corners.
    ix_ll = find( c == c(k_ul) & r > r(k_ul) ) ;
    if isempty( ix_ll ),  continue ;  end
    for k_ll = ix_ll.'
        % Find all potential columns matching upper right corners.
        c_ur = c( r == r(k_ul) & c > c(k_ul) ) ;
        % Find all potential columns matching row of lower left corner.
        c_r_ll = c( r == r(k_ll) & c > c(k_ll) ) ;
        % Count cycles as # elements of intersect.
        nCycles = nCycles + nnz( bsxfun(@eq, c_ur.', c_r_ll )) ;
    end
 end
On my laptop, counting cycles takes ~1s for a 1e3 x 1e5 sparse matrix filled with a density of 1e-4. There might be a more efficient solution, but if you needed much more efficiency, you should consider a C/MEX based solution.
== INITIAL answer
I will adapt this answer according to what you'll reply to my last comment above, but I'd personally go for a solution based uniquely on non-zero elements. The code below, for example
 H = [1 0 0 0 1; ...
      1 1 0 1 1; ...
      0 1 1 1 0; ...
      0 0 0 0 1] ;
 [r,c] = find( H ) ;
 n = numel( r ) ;
 %                           1
 % - Angles in 1st quadrant: 1 1
 %
 angles_q1 = zeros( n, 2 ) ;
 ia = 0 ;
 for k = 1 : n
    if r(k) > 1 && c(k) < n
        % Check if there are non-zero values above and on the right.
        if any( r == r(k) & c == c(k)+1 ) && any( c == c(k) & r == r(k)-1 )
            ia = ia + 1 ;
            angles_q1(ia,:) = [r(k), c(k)] ;
        end
    end
 end
 angles_q1 = angles_q1(1:ia,:) ;
builds an array of angles opened in quadrant I. Running that on the H that you provided outputs
 angles_q1 =
     2     1
     3     2
which gives you the quadrant 1 angles in (2,1) and (3,2).
It should be quite fast even on your large array. The same could be repeated for the other 3 cases, which would generate all the information that you need to "easily" spot rectangles. However, this works only if rectangles can be cut by lines of 1's or interlaced, and it fails if rectangles must be "empty".
11 comentarios
  Cedric
      
      
 el 5 de Nov. de 2013
				Hi, I am traveling right now and I won't have time to answer I guess. Post this as a new question and make a reference to this thread.
Más respuestas (1)
  Image Analyst
      
      
 el 28 de Sept. de 2013
        Rather than spend time looping over all the indices, many of which don't have 1's and are thus a waste of time, why not just get the rows and columns where the 1's live and then just loop over them?
[rows, columns] = find(H);
numberOfPoints = length(rows);
for k1 = 1 : numberOfPoints 
  row1 = rows(k1);
  col1 = columns(k1);
  for k2 = k1+1 : numberOfPoints 
    row2 = rows(k2);
    col2 = columns(k2);
    for k3 = k2+1 : numberOfPoints 
      row3 = rows(k3);
      col3 = columns(k3);
        for k4 = k3+1 : numberOfPoints 
         row4 = rows(k4);
         col4 = columns(k4);
etc.
or something like that...
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