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I'm a student on a computer vision course. I'm trying to recognize images of Italian personal ID document like CI(Paper Identity Card) and CE (Electronic identity card). I try to use ORB or other feature extractor but the result is not good because of a lot of false matching, this false matching is due to the presence of the same pattern on the two different size of the document. For this reason, I'm trying now to recognize the shapes of the document as you can see in the picture Example of Reference CI contours but on the test image, the match fail, like Example of an error on match. My code to obtain this result is:

#%% Import section
import os
import numpy as np
import cv2
#%% Function for concatenating result:
def concatenate(image1, image2):
    total_width = image1.shape[1] + image2.shape[1] + 1
    if image1.shape[0] >= image2.shape[0]:
        total_heigh = image1.shape[0]
    else:
        total_heigh = image2.shape[0]
    new_image = np.zeros((total_heigh,total_width))
    new_image[0:image1.shape[0], 0:image1.shape[1]] = image1
    new_image[0:image2.shape[0], image1.shape[1] + 1:image1.shape[1] + image2.shape[1] + 1] = image2
    return new_image
#%% Global parameters definition:
bluring_kernel_size = (3, 3) #TODO try different size that can be usefull
morphological_kernel = np.ones((5, 5), np.uint8) #TODO try different kernel that can be usefull (to search)
canny_low = 100
canny_high = 200
number_of_contours = 10
#%% Opening Reference Image
reference_image = cv2.imread('ReferenceImages/rearCIC.jpg', cv2.IMREAD_GRAYSCALE)
#%% Bluring
reference_image = cv2.blur(reference_image, bluring_kernel_size)
#%% Canny
reference_image_canny = cv2.Canny(reference_image, canny_low, canny_high)
#%% Morphological operation
reference_image_canny_morph = cv2.morphologyEx(reference_image_canny, cv2.MORPH_CLOSE, morphological_kernel)
#%% Finding Contours on binary image
# cv2.RETR_CCOMP -> return the contours complete list (all contours)
# cv2.CHAIN_APPROX_NONE -> this not approximate a connection between contours
reference_contours, reference_hierarchy = cv2.findContours(reference_image_canny, cv2.RETR_CCOMP, cv2.CHAIN_APPROX_NONE)
# Rerder contours in descending mode to have the biggest area for first
reference_contours = sorted(reference_contours, key=cv2.contourArea, reverse= True)
# keep only first 10 contours
reference_contours = reference_contours[0:number_of_contours]
#%% Starting searching on test image:
# In this section the parameters are the same of the reference creation
# Definition of the test folder
test_images_path = 'TestImages/rear/'
saving_base_path = 'ContoursHU/New/'
for root, directories, files in os.walk(test_images_path):
    for file in files:
        # Read test file
        test_immage_path = os.path.join(root,file)
        test_image_name = file.split('.')[0]
        saving_complete_path = saving_base_path + test_image_name
        if file.endswith('.DS_Store'):
            continue
        if not os.path.exists(saving_complete_path):
            os.mkdir(saving_complete_path)
        test_image = cv2.imread(test_immage_path, cv2.IMREAD_GRAYSCALE)
        # Blur test image
        test_image = cv2.blur(test_image, bluring_kernel_size)
        # Edge detector
        test_image_canny = cv2.Canny(test_image, canny_low, canny_high)
        # Morphological operation
        test_image_canny_morph = cv2.morphologyEx(test_image_canny, cv2.MORPH_CLOSE, morphological_kernel)
        # Contours finding
        test_contours, test_hierarchy = cv2.findContours(test_image_canny, cv2.RETR_CCOMP, cv2.CHAIN_APPROX_NONE)
        test_contours = sorted(test_contours, key=cv2.contourArea, reverse=True)
        test_contours = test_contours[0:number_of_contours]
        # Search for mathing:
            # use a numpy nd_array for saving matching result is usefull for the fastest way to get match after
            # We use the third measure for matching and 0 is default mode because in python that parameters is unused
        all_match_score = np.zeros((len(reference_contours), len(test_contours)))
        # row -> reference
        # column -> test
        for i, ref_c in enumerate(reference_contours):
            for k, test_c in enumerate(test_contours):
                all_match_score[i][k] = cv2.matchShapes(ref_c, test_c, 3, 0)
        # Saving result
        np.savetxt(saving_complete_path + '/' + test_image_name + '-matches.csv', all_match_score, delimiter=';')
        for index, contour in enumerate(reference_contours):
            reference_image_copy = reference_image.copy()
            cv2.drawContours(reference_image_copy, contour, -1, (0, 255, 0), 2)
            cv2.imwrite(saving_complete_path + '/rearCIC' + 'reference_contour-' + str(index) + '.png',
                        reference_image_copy)
        for index, contour in enumerate(test_contours):
            test_image_copy = test_image.copy()
            cv2.drawContours(test_image_copy, contour, -1, (0, 255, 0), 2)
            cv2.imwrite(saving_complete_path + '/' + test_image_name + '-test_contour-' + str(index) + '.png',
                        test_image_copy)
        # Concatenating image with contours
        # for reference_index in range(0, len(reference_contours)):
        #     test_index = np.argmin(all_match_score[reference_index])
        #     if not os.path.exists(saving_complete_path):
        #         os.mkdir(saving_complete_path)
        #     cv2.imwrite(saving_complete_path + '/Reference_Canny.jpg', reference_image_canny)
        #     cv2.imwrite(saving_complete_path + '/Test_canny.jpg', test_image_canny)
        #     ## Create new figure to have the possibility to compare result
        #     reference_image_copy = reference_image.copy()
        #     cv2.drawContours(reference_image_copy, reference_contours[reference_index], -1, (0, 255, 0), 2)
        #     cv2.drawContours(test_image, test_contours[test_index], -1, (0, 255, 0), 2)
        #     concatenate_image = concatenate(reference_image_copy, test_image)
        #     cv2.imwrite(saving_complete_path + '/' + test_image_name + 'reference_contour-' +
        #                 str(reference_index) + '-test_contour-' + str(test_index) + '.png', concatenate_image)

Can anyone help me to solve this problem with the hu moment and shapes matcher?

Thank you a lot for your help.

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