What i'm trying to do:
- Take an image
- Apply a gaussian filter to the image
- Equalise the image based on OpenCv equaliseHist function
- From the equalised image take the thresholded image:
if in the thresholded image pixel is equal to black then in the actual image decrease the brightness of that pixel, if its white in the threshold image increase the brightness in the actual image
Below is currently what code i have so far:
img = cv2.imread('1.bmp') img = cv2.GaussianBlur(img,(5,5),0) """ Take the image and slipt it into the HSV colour spectrem """ h,s,v= cv2.split(cv2.cvtColor(img, cv2.COLOR_BGR2HSV)) """ Equalise the histogram for the V value """ eq_V = cv2.equalizeHist(v) """ Merge all the values back into one image """ eq_image = cv2.cvtColor(cv2.merge([h, s, eq_V]), cv2.COLOR_HSV2BGR) ret1,th1 = cv2.threshold(eq_image,127,255,cv2.THRESH_BINARY) [rows, columns, channels] = img.shape blacks = np.zeros((rows,columns,channels)) whites = np.zeros((rows,columns,channels)) for row in range(rows): for column in range(columns): if th1[row,column].all() == 0: """ Equalise the v value """ blacks[row,column] = v[row,column] else: """ Equalise the v value """ whites[row,column] = v[row,column] addTogether = cv2.add(blacks,whites) cv2.imshow("frame", addTogether.astype(np.uint8)) cv2.waitKey(0) cv2.destroyAllWindows()
The part that i am struggling with is step 4. mentioned above. I am currently building an image based on whats black and whats white and then adding those images together to get back to my orginal image state.
What i seem to be unable to do/figure out is how to adjust the v value of the hsv for the image and then how to merge the whole image back together with the new v values alsongside the hue and saturation values.
Image from a latest attempt