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: