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I'd like to detect my hand from a live video stream and create a mask of my hand. However I'm reaching quite a poor result, as you can see from the picture.

My goal is to track the hand movement, so what I did was convert the video stream from BGR to HSV color space then I thresholded the image in order to isolate the color of my hand, then I tried to find the contours of my hand although the final result isn't quite what I wanted to achieve.

How could I improve the end result?

import cv2
import numpy as np

cam = cv2.VideoCapture(1)
cam.set(3,640)
cam.set(4,480)
ret, image = cam.read()

skin_min = np.array([0, 40, 150],np.uint8)
skin_max = np.array([20, 150, 255],np.uint8)    
while True:
    ret, image = cam.read()

    gaussian_blur = cv2.GaussianBlur(image,(5,5),0)
    blur_hsv = cv2.cvtColor(gaussian_blur, cv2.COLOR_BGR2HSV)

#threshould using min and max values
    tre_green = cv2.inRange(blur_hsv, skin_min, skin_max)
#getting object green contour
    contours, hierarchy = cv2.findContours(tre_green,cv2.RETR_TREE,cv2.CHAIN_APPROX_SIMPLE)

#draw contours
    cv2.drawContours(image,contours,-1,(0,255,0),3)

    cv2.imshow('real', image)
    cv2.imshow('tre_green', tre_green)   

    key = cv2.waitKey(10)
    if key == 27:
        break

Here the link with the pictures: https://picasaweb.google.com/103610822612915300423/February7201303. New link with image plus contours, mask, and original. https://picasaweb.google.com/103610822612915300423/February7201304

And here's a sample picture from above:

Sample picture of a torso with arms ... and a hand

21
  • Include the sample video you are having trouble with, otherwise it is pointless to try to guess what you are actually working with.
    – mmgp
    Feb 7, 2013 at 13:20
  • 1
    I can't upload the pictures, since I don't have enough reputation points :(
    – wind85
    Feb 7, 2013 at 13:21
  • 1
    Just include a link. And include link to the /video/, not individual frames.
    – mmgp
    Feb 7, 2013 at 13:22
  • It's a live stream. Do you want a sample of it?
    – wind85
    Feb 7, 2013 at 13:23
  • I don't know what is that, just include a sample of what you are working with.
    – mmgp
    Feb 7, 2013 at 13:24

2 Answers 2

15

There are many ways to perform pixel-wise threshold to separate "skin pixels" from "non-skin pixels", and there are papers based on virtually any colorspace (even with RGB). So, my answer is simply based on the paper Face Segmentation Using Skin-Color Map in Videophone Applications by Chai and Ngan. They worked with the YCbCr colorspace and got quite nice results, the paper also mentions a threshold that worked well for them:

(Cb in [77, 127]) and (Cr in [133, 173])

The thresholds for the Y channel are not specified, but there are papers that mention Y > 80. For your single image, Y in the whole range is fine, i.e. it doesn't matter for actually distinguishing skin.

Here is the input, the binary image according to the thresholds mentioned, and the resulting image after discarding small components.

enter image description here enter image description here enter image description here

import sys
import numpy
import cv2

im = cv2.imread(sys.argv[1])
im_ycrcb = cv2.cvtColor(im, cv2.COLOR_BGR2YCR_CB)

skin_ycrcb_mint = numpy.array((0, 133, 77))
skin_ycrcb_maxt = numpy.array((255, 173, 127))
skin_ycrcb = cv2.inRange(im_ycrcb, skin_ycrcb_mint, skin_ycrcb_maxt)
cv2.imwrite(sys.argv[2], skin_ycrcb) # Second image

contours, _ = cv2.findContours(skin_ycrcb, cv2.RETR_EXTERNAL, 
        cv2.CHAIN_APPROX_SIMPLE)
for i, c in enumerate(contours):
    area = cv2.contourArea(c)
    if area > 1000:
        cv2.drawContours(im, contours, i, (255, 0, 0), 3)
cv2.imwrite(sys.argv[3], im)         # Final image

Lastly, there are a quite decent amount of papers that do not rely on individual pixel-wise classification for this task. Instead, they start from a base of labeled images that are known to contain either skin pixels or non-skin pixels. From that they train, for example, a SVM and then distinguish other inputs based on this classifier.

2
  • @mmpg wow this really works astonishingly well! thanks. i had a bit of trouble while using cv2.inRange() but that got solved by using min_YCrCb = numpy.array([0,133,77],numpy.uint8) and max_YCrCb = numpy.array([255,173,127],numpy.uint8)
    – samkhan13
    Jun 8, 2013 at 20:42
  • @samkhan13 :- Any reference to achieve this in iOS language
    – pkc456
    Nov 18, 2018 at 6:40
3

A simple and powerful option is histogram backprojection. For example, create a 2D histogram using H and S (from HSV color space) or a* and b* (from La*b* color space), using pixels from different training images of your hand. Then use [cv2.calcBackProject][1] to classify the pixels in your stream. It's very fast and you should get 25 to 30 fps easily, I guess. Note this is a way to learn the color distribution of your object of interest. The same method can be used in other situations.

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