Quesion and code is at the end I hope this question belongs here and not to the TCS's stack. I am trying to go through algorithms in Turk and Pentland's "Eigenfaces for Recognition".
On page 74 one can read (last paragraph of left column):
Let the training (...) The average face of the set is defined by [*]
Where [*] is an equation saying that average face is equal to sum of images divided by it's count. In order to use this equantion I created python script using OpenCV and numpy.
On page 75 there is Figure 1. which should represent average face from Figure 1. (pg. 74) and this is what I am trying to achieve.
As a face set I am using all faces from Faces94. When I calculate traditionall average (1/M*sum) the result looks like this:
which is far away from expected, mostly because of those wierd 'spots'. However, when I calculate average like there was more faces than actually is (e.g. 1/(2*M) * sum) result looks more accurate:
I think there is some problem in converting int8<->int but I cannot prove it. If anyone can spot any problem with the code please let me know even if it is not solution.
Question: what am I doing wrong / what to do to get better results. Here is the code:
import numpy as np import glob import cv2 from cv2 import imread dir = "../images/faces94/**/**.jpg" files = list(glob.iglob(dir, recursive=True)) img = np.zeros(imread(files,0).shape) img = img.astype('int') for i in range(len(files)): img += imread(files[i],0).astype('int') img = np.divide(img,len(files)*2) # HERE you can change it to np.divide(img,len(files)) in order to see bad result img = np.mod(img,128) img = img.astype(np.int8) cv2.imshow("image", img) cv2.waitKey(0)