I'm new to python programming and I am trying to implement uniform LBP for facial detection.

LBP involves taking the pixel values of a 3x3 patch and comparing them to the center pixel and add up the weighted values if they are greater than or equal to the center pixel.

Implementation of LBP

Uniform LBP has 59 "bins". 58 (uniform) if the value equals anything in my uniform_LBP_codes otherwise it is in the 59th "bin" (nonuniform). My understanding is that 90% of images are uniform, and I'm not getting that out of my results.

I have an image 290x338 but I only want to traverse 288x336 which is why I start at 1 and go to width(height)-2. Here is one of my histograms of the entire face image. histogram of face image. From my understanding, the 59th bin should not contain that many values.

I don't know if I'm accessing the pixels of the image correctly or if the array/list of pixels is not being properly traversed.

These images are grayscale images being loaded after being saved from a previous python script. They were converted using

img_arr = np.array(image.convert('L'))

Here is my LBP implementation

import sys, math
from PIL import Image
import json
from pprint import pprint
import numpy as np
import cv2
import matplotlib.pyplot as plt
import os
import itertools



def compare(pixel_val, center_point):
    #compare the center point to the pixel
    # if center_point > pixel_val => return 0
    # if pixel_val >= center_point return 1
    #print("pix val", pixel_val, "center", center_point)
    if center_point > pixel_val:
        return 0
    else:
        return 1

def makeEmptyList(n):
    a = [0 for x in range(n)]
    return a

def isInBin(lbp_val):
    try:
        return uniform_LBP_codes.index(lbp_val)
    except ValueError:
        return 58

#Perform LBP at the current x,y location
def LBP(x, y, im, curr_hist):

    total = 0
    arr = [0,0,0,0,0,0,0,0]
    for counter in range(0,7):
        if counter == 0:
            temp = compare(im[x-1,y-1], im[x,y])
            #temp = compare(im[y-1,x-1], im[y,x]) # y,x
            if temp == 1:
                total = total + 2**0
        elif counter == 1:
            temp2 = compare(im[x,y-1], im[x,y])
            if temp2 == 1:
                total = total + 2**1
        elif counter == 2:
            temp3 = compare(im[x+1,y-1], im[x,y])
            if temp3 == 1:
                total = total + 2**2
        elif counter == 3:
            temp4 = compare(im[x+1,y], im[x,y])
            if temp4 == 1:
                total = total + 2**3
        elif counter == 4:
            temp5 = compare(im[x+1,y+1], im[x,y])
            if temp5 == 1:
                total = total + 2**4
        elif counter == 5:
            temp6 = compare(im[x,y+1], im[x,y])
            if temp6 == 1:
                total = total + 2**5
        elif counter == 6:
            temp7 = compare(im[x-1,y+1], im[x,y])
            if temp7 == 1:
                total = total + 2**6
        elif counter == 7:
            temp8 = compare(im[x-1,y], im[x,y])
            if temp8 == 1:
                total = total + 2**7

    new_image[x,y] = total
    bin_num = isInBin(total)
    hist_arr[curr_hist][bin_num] = hist_arr[curr_hist][bin_num] + 1

#Iterate over a 16x16 patch starting at x_dist, y_dist and perform LBP over each pixel in the patch
def performGridLBP(x_dist, y_dist, im, count):
    for x in range(x_dist, x_dist+16):
        for y in range(y_dist, y_dist+16):
            LBP(x, y, im, count)


def getUniformPatterns():
    lst = [0,1,2,4,8,16,32,64,128,3,6,12,24,48,96,192,129,7,14,28,56,112,224,193,131,15,30,60,120,240,225,195,135,31,62,124,248,241,227,199,143,63,126,252,249,243,231,207,159,127,254,253,251,247,239,223,191,255]
    lst.sort()
    return lst

def CropImage(image, lmPoints, imageName):
    grid_size = 16
    output_directory = "histogramImages/"
    plot_output_dir = "lbpPlots/"

    height, width = image.size

    global hist_arr
    global uniform_LBP_codes
    global new_image
    new_image = np.array(image)

    hist_arr = []

    uniform_LBP_codes = getUniformPatterns()

    image_arr = np.array(image) #convert image to array to be able to 'get' pixel values

    start_x = 1
    start_y = 1

    cnt = 0
    #part 1
    for x_dist in range(start_x, width-2, grid_size):
        for y_dist in range(start_y, height-2, grid_size):
            bins = makeEmptyList(59)
            hist_arr.append(bins)
            performGridLBP(x_dist, y_dist, image_arr, cnt)

            cnt = cnt+1

    lbp_picture = Image.fromarray(new_image)
    # SAVE PICTURE vvvvvv
    lbp_picture.save(output_directory + imageName + ".jpg")

    total_bins = makeEmptyList(59)

    for pieces in hist_arr:
        total_bins.extend(pieces)

    p = plt.figure()
    plt.bar(range(0,59), total_bins)
    p.savefig(plot_output_dir + imageName + ".jpg")
    #return total_bins

if __name__ == "__main__":

    # Dictionary of landmark points
    landmarks = {'Left Brow Left Corner': [0, 0],
    'Left Brow Right Corner': [0, 0],
    'Left Eye Bottom Center': [0, 0],
    'Left Eye Center': [0, 0],
    'Left Eye Left Corner': [0, 0],
    'Left Eye Right Corner': [0, 0],
    'Left Eye Top center': [0, 0],
    'Mouth Bottom Lip Center': [0, 0],
    'Mouth Center': [0, 0],
    'Mouth Left Corner': [0, 0],
    'Mouth Right Corner': [0, 0],
    'Mouth Upper Lip Center': [0, 0],
    'Nose Center': [0, 0],
    'Nose Left': [0, 0],
    'Nose Right': [0, 0],
    'Right Brow Left Corner': [0, 0],
    'Right Brow Right Corner': [0, 0],
    'Right Eye Bottom Center': [0, 0],
    'Right Eye Center': [0, 0],
    'Right Eye Left Corner': [0, 0],
    'Right Eye Right Corner': [0, 0],
    'Right Eye Top center': [0, 0]}

    directory = "grayscale/"

    # #Read in text and image files
    for filename in os.listdir(directory):
        if filename.endswith(".jpg"):
            filePath = os.path.join(directory, filename)
            base = os.path.basename(filePath)
            fileName = os.path.splitext(base)[0]
            #print(fileName)
            fileNamePathImage = directory + fileName + ".jpg"

            image =  Image.open(fileNamePathImage)

            CropImage(image, landmarks, fileName)

            continue
        else:
           continue
  • Could you share the image you are trying to extract uniform LBP features from? – Tonechas Oct 30 '17 at 9:01

Your Answer

 

By clicking "Post Your Answer", you acknowledge that you have read our updated terms of service, privacy policy and cookie policy, and that your continued use of the website is subject to these policies.

Browse other questions tagged or ask your own question.