示例#1
0
def create_photos(photos_path, json_file, format_photos=(6,4)):
    data = load_features_from_json(json_file)
    format = data['format']
    mini_shape = tuple(data['mini_shape'])
    hmini, wmini = mini_shape[:2]
    list_pos_files = data['list_pos_files']
    photo_res = (format_photos[0] * mini_shape[0], format_photos[1] * mini_shape[1] , 3)
    shape_photos = (format[0]//format_photos[0], format[1]//format_photos[1])
    n_little = shape_photos[0] * shape_photos[1]
    # for i in range(shape_photos[0]):
    #    for j in range(shape_photos[1]):
    #        for item in list_pos_files:
    photo = np.zeros(photo_res, dtype=np.uint8)
    combs = itertools.product(list(range(shape_photos[0])), list(range(shape_photos[1])), list_pos_files)
    for i,j, item in combs:
        coord = item[0]
        if coord[0]//format_photos[0] == i and coord[1]//format_photos[1] == j:
            rot = item[1]
            filename = item[2]
            image = square_image(imread(filename), mini_shape)
            hpos = mini_shape[0]*(coord[0]%format_photos[0])
            #print(hpos)
            wpos = mini_shape[1]*(coord[1]%format_photos[1])
            # print(wpos)
            photo[hpos:hpos+hmini, wpos:wpos+wmini] = imgrotate(image, rot)
            # print('jaja')
            # print(coord)

        output_filename = join_path(photos_path, str(i + 1) + '_' + str(j + 1) + '.png')
        imwrite(output_filename, photo)
        # imshow(photo, figure=True, show=True)
        print('creating small images... progress: ' +
            format_percent(100*(shape_photos[1] * i + j) / n_little) +
            '%   ', end='\r')
    print('creating small images... progress: 100.00%')
示例#2
0
def segments_main_image(path_image, output_path, little_shape,
    format=(9,16)):
    image = imread(path_image)
    main_size = (little_shape[0] * format[0], little_shape[1] * format[1])
    # print(main_size)
    # print(little_shape)
    # print(format)
    # print(image.shape)
    #jk = input()
    output = resize_format(image, main_size)
    # imshow(output)
    cont = 0
    n_little = format[0]
    for i in range(n_little):
        for j in range(format[1]):
            filename_out = (
                join_path(output_path, "image_" + format_number(cont)) +
                '.png'
                )
            if is_file_exist(filename_out):
                break
            p1 = (little_shape[0] * i, little_shape[1] * j)
            p2 =(little_shape[0] * (i + 1), little_shape[1] * (j + 1))
            crop = crop_image(output, p1, p2)
            # imshow(crop)
            # time.sleep(0.3)
            imwrite(filename_out, crop)
            cont += 1
        print('creating small images... progress: ' +
            format_percent(100*(i+1)/n_little)+ '%        ', end='\r')
    print('')
    pass
示例#3
0
def generate_mosaic(mosaic_shape, correlation_matrix, set_files,
    position_matrix, mini_image_shape, output_path,
    output_filenames_list_pos=None):
    hmos = mini_image_shape[0] * mosaic_shape[0]
    wmos = mini_image_shape[1] * mosaic_shape[1]
    mosaic = np.zeros((hmos, wmos, 3), dtype = np.uint8)
    # las correlaciones no exceden este valor
    max_corr = 12
    index = [ (int(i),int(j))  for d,i,j in distances_to_point(mosaic_shape)]
    number_mini_images = len(index)
    hmin,wmin = mini_image_shape[:2]
    filenames_list = [[(0,0), ''] for i in range(number_mini_images)]
    # print(mini_image_shape)
    # print(mosaic_shape)
    #for item in index:
    #    print(item)
    #k = input()
    #print(mosaic_shape[0])
    #input()
    for n in range(number_mini_images):
        i, j = index[n]
        col = i *  mosaic_shape[1] + j
        #print(col)
        #jk = input()
        argmin = np.argmin(correlation_matrix[:,col].flatten())
        #print(argmin)
        #min_corr = correlation_matrix[argmin, col]
        #if min_corr == 12:
        #    print(min_corr)
        #    print(correlation_matrix[:,col])
        #    input()
        correlation_matrix[:, col] = max_corr
        correlation_matrix[argmin, :] = max_corr
        #print(correlation_matrix[:, col])
        #print(correlation_matrix[argmin, :])
        #input()
        pos = position_matrix[argmin, col]
        fn = set_files[argmin]
        mini_image = imread(fn)
        filenames_list[n] = [(i,j), fn]
        rot_mini_image = imgrotate(mini_image, pos)
        #print(mini_image_shape)
        #print(rot_mini_image.shape)
        #print(i, ' ',j)
        #jk = input()
        mosaic[hmin*i:hmin*i+hmin, wmin*j:wmin*(j+1)] = rot_mini_image
    #---------------------------------------------------------------------------
    if not is_file_exist(output_path):
        imwrite(output_path, mosaic)
    #print(output_path)
    #jk = input()
    if not output_filenames_list_pos == None:
        #save_list(output_filenames_list_pos, filenames_list)
        cretare_json_features(output_filenames_list_pos, '', set_files, (hmos, wmos), mosaic_shape, mini_image_shape, list_pos_files)
示例#4
0
def photos_from_mosaic(image, photos_path, little_shape, mosaic_format, shape_photos=(6,4)):
    h, w = little_shape[:2]
    n_little = mosaic_format[0] * mosaic_format[1]
    combs = itertools.product(list(range(mosaic_format[0])), list(range(mosaic_format[1])))
    # for i in range(mosaic_format[0]):
    #     for j in range(mosaic_format[1]):
    for i,j in combs:
        photo = image[i*h:i*h+h*shape_photos[0], j*w:j*w+w*shape_photos[1]]
        output_filename = join_path(photos_path, str(i + 1) + '_' + str(j + 1) + '.png')
        imwrite(output_filename, photo)
        print('creating small images... progress: ' +
            format_percent(100*(shape_photos[1] * i + j) / n_little) +
            '%   ', end='\r')
    print('creating small images... progress: 100.00%')
示例#5
0
def create_small_images(set_path, resize_path, little_shape, check=False):
    # ya se tienen los archivos, se varifican si existen en el path de salida
    # se crea un directorio donde guardar los archivos
    set_files = files_from_dir(set_path, root=False)
    mkdir(resize_path)
    n_little = len(set_files)
    # se recorren los archivo
    if check:
        for i,f in enumerate(set_files):
            fileout = join_path(resize_path, f)
            if not is_file_exist(fileout):
                #print('File not found, creating image...')
                limage = imread(join_path(set_path, f))
                #limage = imread(f)
                resize = resize_image(limage, little_shape[:2])
                #imshow(resize, axis='on')
                __ = imwrite(join_path(resize_path, f), resize)
            else:
                limage = imread(fileout)
                if limage.shape != little_shape:
                    limage = imread(join_path(set_path, f))
                    #limage = imread(f)
                    resize = resize_image(limage, little_shape[:2])
                    #imshow(resize, axis='on')
                    __ = imwrite(join_path(resize_path, f), resize)
            print('creating small images... progress: ' +
                format_percent(100*(i+1)/n_little)+ '%       ', end='\r')
    else:
        for i,f in enumerate(set_files):
            fileout = join_path(resize_path, f)
            if not is_file_exist(fileout):
                #print('File not found, creating image...')
                limage = imread(join_path(set_path, f))
                #limage = imread(f)
                resize = resize_image(limage, little_shape[:2])
                #imshow(resize, axis='on')
                _ = imwrite(join_path(resize_path, f), resize)
            print('creating small images... progress: ' +
                format_percent(100*(i+1)/n_little)+ '%       ', end='\r')
    print('')
示例#6
0
def correlation_matrix_resize(path_image, path_output_main_image, set_path,
    mini_little_shape, format=(9,16), listpos=None,
    generate_main_image=True, scale=1):
    # se lee la imagen principal
    little_shape = tuple([int(item*scale) for item in mini_little_shape])
    print('reading main image')
    image = imread(path_image)
    print('creating new main image')
    if is_file_exist(path_output_main_image):
        output = imread(path_output_main_image)
        #imwrite(path_output_main_image, output)
    elif(generate_main_image):
        main_size = (little_shape[0] * format[0], little_shape[1] * format[1])
        output = resize_format(image, main_size)
        imwrite(path_output_main_image, output)
    #imshow(main_image)
    print('reshape main image')
    output = reshape_main_image(output, format, little_shape)
    n = len(set_path)
    print('create empty correlation matrix')
    mat_corr = np.zeros((n, format[0]*format[1]), dtype=np.float32)
    print('create empty position matrix')
    pos_mat = np.zeros((n,format[0]*format[1]), dtype=np.uint8)
    print('comparitions')
    #n_elem = int(np.prod(little_shape))
    #print(pos_mat.shape)
    for i,filename in enumerate(set_path):
        mini_image = imread(filename)
        mini_image_resize = square_image(mini_image, little_shape)
        #mat_corr[i,:] = get_correlation(output, mini_image)
        #mat_corr[i,:] = np.log(1 + distance)
        mat_corr[i,:],pos_mat[i,:] = get_correlation(output, mini_image_resize,
            format, listpos=listpos)
        #print(pos_mat[i,:])
        #jk = input()
        print('creating correlation matrix... progress: ' +
            format_percent(100*i/n)+ '%        ', end='\r')
    print('creating correlation matrix... progress: 100%         ')
    return mat_corr, pos_mat