11

I'm using the selective search here: http://koen.me/research/selectivesearch/ This gives possible regions of interest where an object might be. I want to do some processing and retain only some of the regions, and then remove duplicate bounding boxes to have a final neat collection of bounding boxes. To discard unwanted/duplicated bounding boxes regions, I'm using the grouprectangles function of opencv for pruning.

Once I get the interesting regions from Matlab from the "selective search algorithm" in the link above, I save the results in a .mat file and then retrieve them in a python program, like this:

 import scipy.io as sio
 inboxes = sio.loadmat('C:\\PATH_TO_MATFILE.mat')
 candidates = np.array(inboxes['boxes'])
 # candidates is 4 x N array with each row describing a bounding box like this: 
 # [rowBegin colBegin rowEnd colEnd]
 # Now I will process the candidates and retain only those regions that are interesting
 found = [] # This is the list in which I will retain what's interesting
 for win in candidates: 
     # doing some processing here, and if some condition is met, then retain it:
     found.append(win)

# Now I want to store only the interesting regions, stored in 'found', 
# and prune unnecessary bounding boxes

boxes = cv2.groupRectangles(found, 1, 2) # But I get an error here

The error is:

    boxes = cv2.groupRectangles(found, 1, 2)
TypeError: Layout of the output array rectList is incompatible with cv::Mat (step[ndims-1] != elemsize or step[1] != elemsize*nchannels)

What's wrong? I did something very similar in another piece of code which gave no errors. This was the error-free code:

inboxes = sio.loadmat('C:\\PATH_TO_MY_FILE\\boxes.mat')
boxes = np.array(inboxes['boxes'])
pruned_boxes = cv2.groupRectangles(boxes.tolist(), 100, 300)

The only difference I can see is that boxes was a numpy array which I then converted to a list. But in my problematic code, found is already a list.

49

My own solution was simply to ask a copy of original array...(god & gary bradski knows why...)

im = dbimg[i]
bb = boxes[i]  
m = im.transpose((1, 2, 0)).astype(np.uint8).copy() 
pt1 = (bb[0],bb[1])
pt2 = (bb[0]+bb[2],bb[1]+bb[3])  
cv2.rectangle(m,pt1,pt2,(0,255,0),2)  
  • 4
    simply copying the array worked for me for a similar error as well. – nair.ashvin Aug 13 '15 at 2:48
  • Can confirm this as well, there seems to be no visible difference, tho. – Pwnna Oct 4 '15 at 2:24
  • This solution worked for a similar error produced by the cv2.ellipse() function – DanGoodrick Jul 20 '16 at 17:59
  • Same with cv2.line ... although it seems that the issue was solved by changing it to a np array rather than "just" making a copy of it (that is, it should be a np array copy of your list) – DarkCygnus Nov 27 '17 at 21:22
  • 1
    I had the same problem, and I noticed if I just use astype(np.uint8) it also just works. But then I read that astype automatically copies the array. – CMCDragonkai Mar 20 '18 at 1:35
18

Another reason may be that the array is not contiguous. Making it contiguous would also solve the issue

image = np.ascontiguousarray(image, dtype=np.uint8)

4

The solution was to convert found first to a numpy array, and then to recovert it into a list:

found = np.array(found)
boxes = cv2.groupRectangles(found.tolist(), 1, 2)
4

Opencv appears to have issues drawing to numpy arrays that have the data type np.int64, which is the default data type returned by methods such as np.array and np.full:

>>> canvas = np.full((256, 256, 3), 255)
>>> canvas
array([[255, 255, 255],
       [255, 255, 255],
       [255, 255, 255]])
>>> canvas.dtype
dtype('int64')
>>> cv2.rectangle(canvas, (0, 0), (2, 2), (0, 0, 0))
Traceback (most recent call last):
  File "<stdin>", line 1, in <module>
TypeError: Layout of the output array img is incompatible with cv::Mat (step[ndims-1] != elemsize or step[1] != elemsize*nchannels)

The solution is to convert the array to np.int32 first:

>>> cv2.rectangle(canvas.astype(np.int32), (0, 0), (2, 2), (0, 0, 0))
array([[  0,   0,   0],
       [  0, 255,   0],
       [  0,   0,   0]], dtype=int32)

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