I did few more works on output of `list(contour)`

to get an understanding about contour based on the answer provided above by mathematical.coffee.

1) I did a mistake on my test image. I thought it was a binary image while actually it was a grayscale image with some other colors also. ( Thanks to mathematical.coffee). So i changed image to pure black-and-white-only image so that i would get only one contour and tested again. This time, `list(contour)`

gave a result of 4 values which, when drawn on image, were four corners of that box.

So when we use 'cv.DrawContours' function, lines are drawn joining all these vertices. So i made an assumption that cv.FindContours stores the position of the vertices of contour which is actually a polygon.

2) To test again, i took another image which is a T-shape .

For this, i expect a list of 8 values which are 8 corners of T.

`list(contour)' prints following list which contains 10 values. (2 extra values may be due to errors in my drawing)

```
[(92, 58), (92, 108), (174, 108), (175, 109), (175, 239), (225, 239), (225, 109), (226, 108), (285, 108), (285, 58)]
```

This means cv.FindContours create cvseq object. Inside it stores the values as i assumed above.

3) Above examples finds only one contour. What will be the condition when multiple contours are found out? I didn't clearly understand the concept of *multiple linked sequences* as explained by mathematical.coffee. So to test that, i took third image.

Now cv.FindContours finds three contours. Remember, each contour is list of 4 corners of boxes. These three lists are stored in a single cvseq object and pointer points to first contour only, ie , list of vertices of first box only. So with above code, corners of only one box is drawn.

To get list of second vertices, we use the contour.h_next function ( Thanks to mathematical.coffee, i didn't know its function until now). Now it points to second box's contour. Thus we iterate through all list in it.

So i added a simple while loop as follows:

```
while contours:
print list(contours)
for i in list(contours):
cv.Circle(img,i,5,(0,0,255),3)
contours = contours.h_next()
```

And i got three list corresponding to three boxes' corners:

```
[(196, 237), (196, 279), (357, 279), (357, 237)]
[(141, 136), (141, 201), (346, 201), (346, 136)]
[(33, 39), (33, 92), (206, 92), (206, 39)]
```

And the output image :

So you can expect what will be output of a circle, "which has a large number of vertices".

Well, everything is simple now. I couldn't get a grasp of contour values. That is why, all this mess. Thanks.

UPDATE - 1:

More details about contour in new `cv2`

module have given here : Contours -1 : Getting Started

UPDATE - 2:

All these explanation is correct with respect to cv2.CHAIN_APPROX_SIMPLE. But if we use cv2.CHAIN_APPROX_NONE instead, we get all the points on the contour. It is explained in detail with examples in this article : Contours - 5 : Hierarchy

`method`

are you using?`CV_CHAIN_APPROX_SIMPLE`

? (In that case the docs say "an up-right rectangular contour is encoded with 4 points", but it doesn't seem so...) – mathematical.coffee Jan 30 '12 at 7:16`contours = cv.FindContours(img, storage, cv.CV_RETR_TREE, cv.CV_CHAIN_APPROX_SIMPLE, (0,0))`

– Abid Rahman K Jan 30 '12 at 7:18`z=np.zeros((100,200)).astype('uint8'); cv2.rectangle(z,(20,30),(60,80),255,-1); cs=cv.FindContours(cv.fromarray(z),cv.CreateMemStorage(),mode=cv.CV_RETR_TREE,method=cv.CV_CHAIN_APPROX_SIMPLE); list(cs)`

returns`[(20, 30), (20, 80), (60, 80), (60, 30)]`

as expected. – mathematical.coffee Jan 30 '12 at 7:30