# Measure edge strength in OpenCV, magnitude of gradient

I have an application where I need to check the focus of a camera. For this, I want to measure edge strength (magnitude of gradient) in several predefined locations on a single axis (1D). The image target will be a simple printout of black objects on a while background.

I am using OpenCV with Python. I know there are several edge detection algorithms within OpenCV like Canny, Sobel, laplace but all of these are to filter the image. I want to actually measure the strength of an edge. Are there any algorithms within OpenCV that can provide this? Or do I just write my own algorithm to measure edge strength?

Here's a Python version:

``````def getGradientMagnitude(im):
"Get magnitude of gradient for given image"
ddepth = cv2.CV_32F
dx = cv2.Sobel(im, ddepth, 1, 0)
dy = cv2.Sobel(im, ddepth, 0, 1)
dxabs = cv2.convertScaleAbs(dx)
dyabs = cv2.convertScaleAbs(dy)
mag = cv2.addWeighted(dxabs, 0.5, dyabs, 0.5, 0)
return mag

``````
• This code is incorrect. It computes `0.5 * abs(dx) + 0.5 * abs(dy)`. What is needed is `sqrt(dx**2 + dy**2)`. The function `cv2.magnitude` will compute this: `mag = cv2.magnitude(dx, dy)`. Sep 29 '19 at 5:58

You can compute the magnitude like:

1. Compute `dx` and `dy` derivatives (using `cv::Sobel`)
2. Compute the magnitude `sqrt(dx^2 + dy^2)` (using `cv::magnitude`)

This is a simple C++ code that compute the magnitude of the gradient. You can easily port to Python, since it's just a few calls to OpenCV functions:

``````#include <opencv2/opencv.hpp>
using namespace cv;

int main()
{

//Convert to grayscale
Mat1b gray;
cvtColor(img, gray, COLOR_BGR2GRAY);

//Compute dx and dy derivatives
Mat1f dx, dy;
Sobel(gray, dx, CV_32F, 1, 0);
Sobel(gray, dy, CV_32F, 0, 1);

Mat1f magn;
magnitude(dx, dy, magn);

imshow("Magnitude", magn);
waitKey();

return 0;
}
``````
• This is excellent, but how to I get one resultant value for the strength of the edge? The magnitude returns a list of values, do these values just need to be averaged?
• @Miki i found the correct answer `calcBlurriness` for details see Dec 15 '15 at 18:30