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import numpy as np
dx = 8
dy = 10
bx = 5.34
by = 1.09
index = np.zeros((dx+dy),dtype = 'int32')
for i in np.arange(1,dy+1):
    for j in np.arange (1,dx+1):
        if i-by > 0:
            theta = 180*np.arctan(abs(j-bx)/(i-by))/np.pi
            if theta<10:
                r = np.around(np.sqrt((j-bx)**2+(i-by)**2))
                r = r.astype(int)               
                if r>0:
                    index[r]+=1
                    output = np.zeros((r, index[r]),dtype='int32')
                    output[r-1,index[r]-1] = i+(j-1)*dy

this code should use (r, index[r]) as indices and put the value of i+(j-1)*dy to the corresponding indices and record that in a new matrix/array which should look like this-

array([[ 0,  0,  0],
   [ 0,  0,  0],
   [44,  0,  0],
   [45, 55,  0],
   [46, 56,  0],
   [47, 57,  0],
   [48, 58,  0],
   [39, 49, 59],
   [40, 50, 60]]) 

But I am having the output like this instead which I don't want-

array([[ 0,  0,  0],
   [ 0,  0,  0],
   [ 0,  0,  0],
   [ 0,  0,  0],
   [ 0,  0,  0],
   [ 0,  0,  0],
   [ 0,  0,  0],
   [ 0,  0,  0],
   [ 0,  0, 60]])
share|improve this question
    
There is probably a much more efficient way to set these values instead of using nested loops. It would help if you would explain a bit more what the meaning of your output is. –  askewchan May 6 '13 at 15:39

1 Answer 1

up vote 0 down vote accepted

It's hard to tell what your code is trying to do. Is your desired output supposed to be s, c, or index?

Or, maybe you want to create a new array, I'll call it output and then you can set the value of output at s to c using: output[s] = c.

If you don't know the size in advance, then the best thing I can think of right now is keep track of all the index values in a list of rows and cols, and of the actual values in a list of values:

import numpy as np
dx = 8
dy = 10
bx = 5.34
by = 1.09
index = np.zeros(dx+dy,dtype = 'int32')
rows = []
cols = []
vals = []
for i in np.arange(2,dy+1):
    for j in np.arange(1,dx+1):
        theta = 180*np.arctan(abs(j-bx)/(i-by))/np.pi
        if theta < 10:
            r = np.around(np.sqrt((j-bx)**2+(i-by)**2))
            r = r.astype(int) 
            if r > 0:
                index[r] += 1
                rows.append(r-1)
                cols.append(index[r]-1)
                vals.append(i+(j-1)*dy)

outshape = max(rows)+1, max(cols)+1  # now you know the size
output = np.zeros(outshape, np.int)  
output[rows, cols] = vals

Then, output looks like this:

In [60]: output
Out[60]: 
array([[ 0,  0,  0],
       [ 0,  0,  0],
       [44,  0,  0],
       [45, 55,  0],
       [46, 56,  0],
       [47, 57,  0],
       [48, 58,  0],
       [39, 49, 59],
       [40, 50, 60]])

If you know the size in advance:

import numpy as np
dx = 8
dy = 10
bx = 5.34
by = 1.09
index = np.zeros(dx+dy,dtype = 'int32')
outshape = (nrows, ncols)                        # if you know the size
output = np.zeros(outshape, np.int)              # initialize the output matrix
for i in np.arange(2,dy+1):
    for j in np.arange(1,dx+1):
        theta = 180*np.arctan(abs(j-bx)/(i-by))/np.pi
        if theta < 10:
            r = np.around(np.sqrt((j-bx)**2+(i-by)**2))
            r = r.astype(int) 
            if r > 0:
                index[r] += 1
                output[r-1, index[r]-1] = i+(j-1)*dy  # no need to set `s` or `c`
share|improve this answer
    
@ askewchan - Hi, the way you solve is giving the right output. But I dont know the size of the output. The output size actually depends on (r,index[r]). In that case how can I define the output array so that it will make the output depending on the indice values of r,index[r]. –  user2095624 May 6 '13 at 18:14
    
so actually in this code r is radius within 20 degree(defined by theta<10), index is counting how many radius are there and output should positioned the index in a matrix. –  user2095624 May 6 '13 at 18:18
    
Is there any way I can set the output like output = np.zeros(r,index[r]) so that it will create the output the exact size and use (r-1,index[r]-1) as indices and put the value of i+(j-1)*dy in the corresponding indices position of the output array which should give the exact output as you mentioned in your answer –  user2095624 May 6 '13 at 18:32
    
I have edited the question what I tried later and still no luck. please have a look and thanks for your time –  user2095624 May 6 '13 at 18:52
    
@user2095624 The problem with your edit (and using r to define the size) is that r changes with each loop, but you want to have only one output. You want to try to find out what max(rs) and max(index) would be, and make the shape of your output array be (max(rs), max(index)). If you use np.zeros inside your loop, you'll erase all the changes from previous loops. –  askewchan May 6 '13 at 19:10

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