# Determine height of Coffee in the pot using Python imaging

This is a bit of a funny question but...

We have a web-cam in our office kitchenette focused at our coffee maker. The coffee pot is clearly visible. Both the location of the coffee pot and the camera are static. Is it possible to calculate the height of coffee in the pot using image recognition? I've seen image recognition used for quite complex stuff like face-recognition. As compared to those projects, this seems to be a trivial task of measuring the height.

(That's my best guess and I have no idea of the underlying complexities.)

How would I go about this? Would this be considered a very complex job to partake? FYI, I've never done any kind of imaging-related work.

Thanks

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I wonder if the productivity gains will pay for the developer time used on this project... –  Mark Byers Jul 12 '10 at 10:59
+1 for the geekiest question I've ever read –  YuppieNetworking Jul 12 '10 at 11:03
Use the webcam to find out who took the last cup and didn't refill –  gnibbler Jul 12 '10 at 11:13
Geekdom knows no boundaries. Next one is gonna be audio-recognition to see who didn't flush. :p –  Mridang Agarwalla Jul 12 '10 at 11:46
Reminds me of the Trojan Room. –  KennyTM Jul 12 '10 at 18:16

Since the coffee pot position is stationary, get a sample frame and locate a single column of pixels where the minimum and maximum coffee quantities can easily be seen, in a spot where there are no reflections. Check the green vertical line segment in the following picture:

The easiest way is to have two frames, one with the pot empty, one with the pot full (obviously under the same lighting conditions, which typically would be the case), convert to grayscale (`colorsys.rgb_to_hsv` each RGB pixel and keep only the `v` (3rd) component) and sum the luminosity of all pixels in the chosen line segment. Let's say the pot-empty case reaches a sum of 550 and the pot-full case a sum of 220 (coffee is dark). By comparing an input frame sum to these two sums, you can have a rough estimate of the percentage of coffee in the pot.

I wouldn't bet my life on the accuracy of this method, though, and the fluctuations even from second to second might be wild :)

N.B: in my example, the green column of pixels should extend to the bottom of the pot; I just provided an example of what I meant.

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That looks so good I'm going to get some coffee right now. –  Paul Nathan Jul 12 '10 at 15:53
@Paul: sure, as if you needed an external stimulus to have some coffee. Take responsibility of your addictions, sir! :) –  tzot Jul 12 '10 at 15:57

Steps that I'd try:

1. Convert the image in grayscale.
2. Binarize the image, and leave only the coffee. You can discover a good threshold manually through experimentation.
3. Blob extraction. Blob's area (number of pixels) is one way to calculate the height, ie area / width.
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First do thresholding, then segmentation. Then you can more easily detect edges.

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You're looking for edge detection. But you only need to do it between the brown/black of the coffee and the color of the background behind the pot.

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There is the Python Image Library which can do edge detection. But I'm not a Python user :).

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You should turn this question into a school assignment for an IT student. Most IT schools teach Computer Vision. Asking the question here is funny, getting a student and a teacher researching the subject would be hilarious!

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