I am working on a project where I'm trying to detect green and red circles on a specific surface (arena). When I try to do so with the digital version of that arena (PNG image), I can successfully detect both the colored circles.

Here's the digital image of the surface: Arena Image Original

Now, I printed this arena on a flex(without those two colored circles ), and manually placed coloured circular coins on it. But after capturing its image through a 1.3 MP webcam, the color detection didn't work and gave false results.

Here's the printed arena captured through webcam:

webcam image of printed arena

Why aren't the colors being detected? Do I need to do post-processing on webcam image? I've tried sharpening the image via cv2.filter2D but it didn't work either.

Here's a snippet for detecting Red circles from my Python code:

kernel = np.array([[-1,-1,-1],[-1,9,-1],[-1,-1,-1]])
mask0= cv2.inRange(hsv,red_low,red_up)
r_img= ip_image.copy()
r_img[np.where(mask_red==0)] = 0
gray_img0 = cv2.cvtColor(r_img,cv2.COLOR_BGR2GRAY)
ret,thresh = cv2.threshold(gray_img0,0,255,0)
M = cv2.moments(thresh)
rX=int(M["m10"] / M["m00"])
rY=int(M["m01"] / M["m00"])
cv2.circle(ip_image,(rX,rY), 17, (255,255,255), 2)

Also, the fourth parameter in cv2.threshold() when set to "0" works correctly with digital image while with webcam image it throws zero division error at the line :

  • The are at least three possible issues with the color accuracy of the captured photo: 1. The color of light is not sun light (looks greenish, but I could be wrong). 2. The webcam has a poor color calibration. 3. The automatic white balance (automatic color balancing) algorithm failed (algorithm is heuristic and tend to fail). In general color fidelity of a photo is problematic, in many cases camera manufactures modify the colors just to look nicer. I tried applying manual white balance: Corrected image. Check if it it helps.
    – Rotem
    Dec 25, 2019 at 22:54
  • Colors in the 2nd image are different from colors in the first. Check what RGB values your camera sees for those coins, and threshold based on that. Dec 25, 2019 at 22:54
  • 2
    your saturation and intensity thresholds are way too high for any "real" images (you only accept 255 for both). Set the lower saturation and intensity lower!
    – Micka
    Dec 25, 2019 at 23:29
  • I've tried capturing the image from a better perspective (from the centre top ), improved lighting conditions. I also tried finding the exact hsv values of the red color and then used a +-10 range for them in thresholding, still no luck! Dec 27, 2019 at 19:27

2 Answers 2


It is definitely worth trying to improve initial conditions (perspective, light, resolution, etc). Current result produced by the webcam is somewhat awful, so instead of spending lots of time fixing that it might be better to use less cheaper hardware.

You can use some fancy methods to improve your image, but still, it is better to have more valuable input.

enter image description here Anyway, here is the useful part. Your markers are not unique, so any attempt to use color will require additional shape analysis. Here are some results using color segmentation:

enter image description here

As you can see some areas have pretty similar colors. I use a bit more advanced color similarity function to handle complex cases. Basically, I specified red and green with some thresholds. Delta E will be the right starting point. Let's see the actual shapes:

enter image description here

With those results you can do a simple shape analysis or just compare areas to find your markers. I'd prefer to have a bit more unique colors and better initial conditions.

Anyway, any real-life scene will require you to be really careful working with colors:

enter image description here

(see in action)

Similar problem:

Issue of the recognize people by their clothes color with not severe illumination environments

  • can you please share the code for the above operations you did?! Jun 21, 2020 at 22:04
  • Sorry, no code to share, I've used a gui tool to provide somewhat like a PoC. It is color-based segmentation based on delta-E. Jun 27, 2020 at 17:22

Because of the light changes, hard thresholding won't help you to find the desired circles, you should consider an interval for the target color. For example find all the pixels that their green value are between 200 and 255 (set these by trial and error) to make sure you always catch the little circels.

Now some other parts of the image too, may survive the thresholding. In this situation you can filter those unwanted parts by shape analysis methods like Hough Circle detector or based on their sizes.

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