# Detecting outer most-edge of image and plotting based on it

I'm working on a project that can calculate the angle of an elbow joint by image. The part I'm struggling on is the image processing.

Currently doing this in Python using an Intel RealSense R200 (although it can be taken that I'm using an image input).

I'm attempting to detect the edges of the left image, such that I can get the center image, aiming to extract the outer contour (right image):

Knowing that the sides of the two pipes coming out of the angle will be parallel (two orange sides and two green sides are parallel to the same colour)...

... I'm trying to construct 2 loci of points equidistant from the two pairs of colours and then 'extrapolate to the middle' in order to calculate the angle:

I've got as far as the second image and, unreliably, as far as the third image. I'm very open to suggestions and would be hugely grateful of any assistance.

• You say "unreliably, as far as the third image" but the example image you've given is very very easy to segment as to get the outer contours. Can you give an example of a more difficult image? Dec 12, 2017 at 18:16

I would use the following approach to try and find the four lines provided in the question.

1. Read the image, and convert it into grayscale

``````import cv2
import numpy as np
height, width = gray_img.shape
gray_img = cv2.cvtColor(rgb_img, cv2.COLOR_BGR2GRAY)
``````

2. Add some white padding to the top of the image ( Just to have some extra background )

``````white_padding = np.zeros((50, width, 3))
white_padding[:, :] = [255, 255, 255]
``````

Resultant image - 3. Invert the gray scale image and apply black padding to the top

``````gray_img = 255 - gray_img
gray_img[gray_img > 100] = 255
gray_img[gray_img <= 100] = 0
``````

4.Use Morphological closing to fill the holes in the image -

``````kernel = np.ones((30, 30), np.uint8)
closing = cv2.morphologyEx(gray_img, cv2.MORPH_CLOSE, kernel)
``````

5. Find edges in the image using Canny edge detection -

``````edges = cv2.Canny(closing, 100, 200)
``````

6. Now, we can use openCV's `HoughLinesP` function to find lines in the given image -

``````minLineLength = 500
maxLineGap = 10
lines = cv2.HoughLinesP(edges, 1, np.pi / 180, 50, None, 50, 100)
all_lines = lines[0]
for x1,y1,x2,y2 in lines[0]:
cv2.line(rgb_img,(x1,y1),(x2,y2),(0,0,255),2)
``````

7.Now, we have to find the two rightmost horizontal lines, and the two bottommost vertical lines. For the horizontal lines, we will sort the lines using both (x2, x1), in descending order. The first line in this sorted list will be the rightmost vertical line. Skipping that, if we take the next two lines, they will be the rightmost horizontal lines.

``````all_lines_x_sorted = sorted(all_lines, key=lambda k: (-k[2], -k[0]))
for x1,y1,x2,y2 in all_lines_x_sorted[1:3]:
cv2.line(rgb_img,(x1,y1),(x2,y2),(0,0,255),2)
``````

8. Similarly, the lines can be sorted using the y1 coordinate, in descending order, and the first two lines in the sorted list will be the bottommost vertical lines.

``````all_lines_y_sorted = sorted(all_lines, key=lambda k: (-k[1]))
for x1,y1,x2,y2 in all_lines_y_sorted[:2]:
cv2.line(rgb_img,(x1,y1),(x2,y2),(0,0,255),2)
``````

9. Image with both lines -

``````final_lines = all_lines_x_sorted[1:3] + all_lines_y_sorted[:2]
``````

• I would +1 this answer if you adjust the display format of the images (they are too f****** big right now). This will greatly improve your answer. I edited the question to do this and resize the images so you could take a look and learn how it's done. Here is the relevant code: `<img src="https://i.stack.imgur.com/GmHqQ.png" width="200" height="150">` Jan 30, 2018 at 20:01
• Sure @karlphillip. I will do this as soon as I get some free time. Thank you for your valuable suggestion. Jan 31, 2018 at 4:51
• As far I know, 'Canny Edge Detection' can be applied onto gray images. However, you applied it onto binary image. Also I tried your code exactly the same, it did not work. How did you run this code ? @GaneshTata Sep 6, 2018 at 19:40
• Is there any way I will be able to crop out the image based on the lines specified at Step 5. Mar 19, 2019 at 15:27
• @ChandraKanth In step 4, the background is in black, and the pipe consists of all white pixels. Thus, you should be able to get all image coordinates that contain a white pixel. These coordinates would represent the pipe. Mar 20, 2019 at 5:42

This has many good answers already, none accepted though. I tried something bit different, so thought of posting it even if the question is old. At least someone else might find this useful. This works only if there's nice uniform background as in the sample image.

• detect interest points (try different interest point detectors. I used FAST)
• find the minimum-enclosing-triangle of these points
• find the largest (is it?) angle of this triangle

This will give you a rough estimate.

For the sample image, the code gives

``````90.868604
42.180990
46.950407
``````

Code is in `c++`. You can easily port it if you find this useful.

``````// helper function:
// finds a cosine of angle between vectors
// from pt0->pt1 and from pt0->pt2
static double angle( Point2f pt1, Point2f pt2, Point2f pt0 )
{
double dx1 = pt1.x - pt0.x;
double dy1 = pt1.y - pt0.y;
double dx2 = pt2.x - pt0.x;
double dy2 = pt2.y - pt0.y;
return (dx1*dx2 + dy1*dy2)/sqrt((dx1*dx1 + dy1*dy1)*(dx2*dx2 + dy2*dy2) + 1e-10);
}

int _tmain(int argc, _TCHAR* argv[])
{

Mat im;
cvtColor(rgb, im, CV_BGR2GRAY);

Ptr<FeatureDetector> detector = FastFeatureDetector::create();
vector<KeyPoint> keypoints;
detector->detect(im, keypoints);

drawKeypoints(im, keypoints, rgb, Scalar(0, 0, 255));

vector<Point2f> points;
for (KeyPoint& kp: keypoints)
{
points.push_back(kp.pt);
}

vector<Point2f> triangle(3);
minEnclosingTriangle(points, triangle);

for (size_t i = 0; i < triangle.size(); i++)
{
line(rgb, triangle[i], triangle[(i + 1) % triangle.size()], Scalar(255, 0, 0), 2);
printf("%f\n", acosf( angle(triangle[i],
triangle[(i + 1) % triangle.size()],
triangle[(i + 2) % triangle.size()]) ) * 180 / CV_PI);
}

return 0;
}
``````
• best solution for me :) . Adding to your approach may be we can make this more robust (for cases containing multiple objects) by detecting target object region based on hue value in HSV space followed by applying bounding rectangle on feature points in this ROI Dec 18, 2017 at 14:06
• @flamelite The OP says he's using a RealSense, so it is also possible to segment the object by depth, if he gets a depth image or a point cloud as the output. In case of the point cloud, he can project the segmented points to a plane and fit a min-enclosing-triangle. Dec 19, 2017 at 11:19

It's unclear if this geometry is fixed or if other layouts are possible.

As you have excellent contrast of the object wrt the background, you can detect a few points by finding the first and last transitions along a probe line.

Pairs of points give you a direction. More points allow you to do line fitting, and you can use all the points in your orange and gree areas. It is even possible to do simultaneous fitting of two parallel lines.

Note that if you only need an angle, there is no need to find the axis of the tubes.

As you can see, the line in the binary image is not that straight, also there are so many lines similar. So directly doing `HoughLine` on such an image is `a bad choice`, not responsibility.

I try to binary the image , drop the left-top region `(3*w/4, h*2/3)`, then I get the two separate regions:

``````img = cv2.imread("img04.jpg", 0)
gray = cv2.cvtColor(img, cv2.COLOR_BGR2GRAY)
th, threshed = cv2.threshold(gray, 100, 255, cv2.THRESH_BINARY_INV|cv2.THRESH_OTSU)
H,W = img.shape[:2]
threshed[:H*2//3,:W*3//4] = 0

cv2.imwrite("regions.png", threshed)
``````

Then you can do other post steps as you like.

Seems that Hough transform for the second image should give two strong vertical (in Theta-Rho space) clusters, that correspond to the bundles of parallel lines. So you can determine main directions.

Here is result of my quick test using the second image and `OpenCV` function `HoughLines`

Then I counted lines with all directions(rounded to integer degrees) in range `0..180` and printed results with `count>1`. We apparently can see larger counts at 86-87 and 175-176 degrees (note almost 90-degrees difference)

``````line
angle : count
84: 3
85: 3
86: 8
87: 12
88: 3
102: 3
135: 3
140: 2
141: 2
165: 2
171: 4
172: 2
173: 2
175: 7
176: 17
177: 3
``````

Note: I've used arbitrary Delphi example of `HoughLines` function usage and added direction counting. You can get this Python example and build histogram for theta values

• That looks really promising. Thank you so much. Would you be able to provide the source code, please? Dec 13, 2017 at 9:13
• I'm afraid that my code would not be so useful, see my note
– MBo
Dec 13, 2017 at 15:15

Sadly, your method won't work because the angle you calculate by this method is only the actual angle if the camera is held exactly perpendicular to the plane of the joint. You need a reference square in your images in order to be able to calculate the angle at which the camera is held so as to be able to correct for the camera angle. And the reference square has to be placed on the same flat surface as the pipe joint.

• I did have some concerns about this. The project does involve a mount that keeps the elbow "flat"/normal with respect to the board below and the camera mounted above. I will put a grid on the platform. Dec 13, 2017 at 9:26