From 19dc8c28f63c2dc8842b88c1fd45c999c7171398 Mon Sep 17 00:00:00 2001 From: Paul Elder Date: Thu, 6 Oct 2022 20:23:09 +0900 Subject: utils: tuning: libtuning: Implement the core of libtuning Implement the core of libtuning, our new tuning tool infrastructure. It leverages components from raspberrypi's ctt that could be reused for tuning tools for other platforms. The core components include: - The Image class - libtuning (entry point and other core functions) - macbeth-related tools, including the macbeth reference image - utils Signed-off-by: Paul Elder Reviewed-by: Laurent Pinchart --- utils/tuning/libtuning/__init__.py | 13 + utils/tuning/libtuning/image.py | 136 +++++++++ utils/tuning/libtuning/libtuning.py | 208 +++++++++++++ utils/tuning/libtuning/macbeth.py | 516 +++++++++++++++++++++++++++++++++ utils/tuning/libtuning/macbeth_ref.pgm | 6 + utils/tuning/libtuning/utils.py | 125 ++++++++ 6 files changed, 1004 insertions(+) create mode 100644 utils/tuning/libtuning/__init__.py create mode 100644 utils/tuning/libtuning/image.py create mode 100644 utils/tuning/libtuning/libtuning.py create mode 100644 utils/tuning/libtuning/macbeth.py create mode 100644 utils/tuning/libtuning/macbeth_ref.pgm create mode 100644 utils/tuning/libtuning/utils.py (limited to 'utils/tuning/libtuning') diff --git a/utils/tuning/libtuning/__init__.py b/utils/tuning/libtuning/__init__.py new file mode 100644 index 00000000..93049976 --- /dev/null +++ b/utils/tuning/libtuning/__init__.py @@ -0,0 +1,13 @@ +# SPDX-License-Identifier: GPL-2.0-or-later +# +# Copyright (C) 2022, Paul Elder + +from libtuning.utils import * +from libtuning.libtuning import * + +from libtuning.image import * +from libtuning.macbeth import * + +from libtuning.average import * +from libtuning.gradient import * +from libtuning.smoothing import * diff --git a/utils/tuning/libtuning/image.py b/utils/tuning/libtuning/image.py new file mode 100644 index 00000000..aa9d20b5 --- /dev/null +++ b/utils/tuning/libtuning/image.py @@ -0,0 +1,136 @@ +# SPDX-License-Identifier: BSD-2-Clause +# +# Copyright (C) 2019, Raspberry Pi Ltd +# +# image.py - Container for an image and associated metadata + +import binascii +import numpy as np +from pathlib import Path +import pyexiv2 as pyexif +import rawpy as raw +import re + +import libtuning as lt +import libtuning.utils as utils + + +class Image: + def __init__(self, path: Path): + self.path = path + self.lsc_only = False + self.color = -1 + self.lux = -1 + + try: + self._load_metadata_exif() + except Exception as e: + utils.eprint(f'Failed to load metadata from {self.path}: {e}') + raise e + + try: + self._read_image_dng() + except Exception as e: + utils.eprint(f'Failed to load image data from {self.path}: {e}') + raise e + + @property + def name(self): + return self.path.name + + # May raise KeyError as there are too many to check + def _load_metadata_exif(self): + # RawPy doesn't load all the image tags that we need, so we use py3exiv2 + metadata = pyexif.ImageMetadata(str(self.path)) + metadata.read() + + # The DNG and TIFF/EP specifications use different IFDs to store the + # raw image data and the Exif tags. DNG stores them in a SubIFD and in + # an Exif IFD respectively (named "SubImage1" and "Photo" by pyexiv2), + # while TIFF/EP stores them both in IFD0 (name "Image"). Both are used + # in "DNG" files, with libcamera-apps following the DNG recommendation + # and applications based on picamera2 following TIFF/EP. + # + # This code detects which tags are being used, and therefore extracts the + # correct values. + try: + self.w = metadata['Exif.SubImage1.ImageWidth'].value + subimage = 'SubImage1' + photo = 'Photo' + except KeyError: + self.w = metadata['Exif.Image.ImageWidth'].value + subimage = 'Image' + photo = 'Image' + self.pad = 0 + self.h = metadata[f'Exif.{subimage}.ImageLength'].value + white = metadata[f'Exif.{subimage}.WhiteLevel'].value + self.sigbits = int(white).bit_length() + self.fmt = (self.sigbits - 4) // 2 + self.exposure = int(metadata[f'Exif.{photo}.ExposureTime'].value * 1000000) + self.againQ8 = metadata[f'Exif.{photo}.ISOSpeedRatings'].value * 256 / 100 + self.againQ8_norm = self.againQ8 / 256 + self.camName = metadata['Exif.Image.Model'].value + self.blacklevel = int(metadata[f'Exif.{subimage}.BlackLevel'].value[0]) + self.blacklevel_16 = self.blacklevel << (16 - self.sigbits) + + # Channel order depending on bayer pattern + # The key is the order given by exif, where 0 is R, 1 is G, and 2 is B + # The value is the index where the color can be found, where the first + # is R, then G, then G, then B. + bayer_case = { + '0 1 1 2': (lt.Color.R, lt.Color.GR, lt.Color.GB, lt.Color.B), + '1 2 0 1': (lt.Color.GB, lt.Color.R, lt.Color.B, lt.Color.GR), + '2 1 1 0': (lt.Color.B, lt.Color.GB, lt.Color.GR, lt.Color.R), + '1 0 2 1': (lt.Color.GR, lt.Color.R, lt.Color.B, lt.Color.GB) + } + # Note: This needs to be in IFD0 + cfa_pattern = metadata[f'Exif.{subimage}.CFAPattern'].value + self.order = bayer_case[cfa_pattern] + + def _read_image_dng(self): + raw_im = raw.imread(str(self.path)) + raw_data = raw_im.raw_image + shift = 16 - self.sigbits + c0 = np.left_shift(raw_data[0::2, 0::2].astype(np.int64), shift) + c1 = np.left_shift(raw_data[0::2, 1::2].astype(np.int64), shift) + c2 = np.left_shift(raw_data[1::2, 0::2].astype(np.int64), shift) + c3 = np.left_shift(raw_data[1::2, 1::2].astype(np.int64), shift) + self.channels = [c0, c1, c2, c3] + # Reorder the channels into R, GR, GB, B + self.channels = [self.channels[i] for i in self.order] + + # \todo Move this to macbeth.py + def get_patches(self, cen_coords, size=16): + saturated = False + + # Obtain channel widths and heights + ch_w, ch_h = self.w, self.h + cen_coords = list(np.array((cen_coords[0])).astype(np.int32)) + self.cen_coords = cen_coords + + # Squares are ordered by stacking macbeth chart columns from left to + # right. Some useful patch indices: + # white = 3 + # black = 23 + # 'reds' = 9, 10 + # 'blues' = 2, 5, 8, 20, 22 + # 'greens' = 6, 12, 17 + # greyscale = 3, 7, 11, 15, 19, 23 + all_patches = [] + for ch in self.channels: + ch_patches = [] + for cen in cen_coords: + # Macbeth centre is placed at top left of central 2x2 patch to + # account for rounding. Patch pixels are sorted by pixel + # brightness so spatial information is lost. + patch = ch[cen[1] - 7:cen[1] + 9, cen[0] - 7:cen[0] + 9].flatten() + patch.sort() + if patch[-5] == (2**self.sigbits - 1) * 2**(16 - self.sigbits): + saturated = True + ch_patches.append(patch) + + all_patches.append(ch_patches) + + self.patches = all_patches + + return not saturated diff --git a/utils/tuning/libtuning/libtuning.py b/utils/tuning/libtuning/libtuning.py new file mode 100644 index 00000000..d84c148f --- /dev/null +++ b/utils/tuning/libtuning/libtuning.py @@ -0,0 +1,208 @@ +# SPDX-License-Identifier: GPL-2.0-or-later +# +# Copyright (C) 2022, Paul Elder +# +# libtuning.py - An infrastructure for camera tuning tools + +import argparse + +import libtuning as lt +import libtuning.utils as utils +from libtuning.utils import eprint + +from enum import Enum, IntEnum + + +class Color(IntEnum): + R = 0 + GR = 1 + GB = 2 + B = 3 + + +class Debug(Enum): + Plot = 1 + + +# @brief What to do with the leftover pixels after dividing them into ALSC +# sectors, when the division gradient is uniform +# @var Float Force floating point division so all sectors divide equally +# @var DistributeFront Divide the remainder equally (until running out, +# obviously) into the existing sectors, starting from the front +# @var DistributeBack Same as DistributeFront but starting from the back +class Remainder(Enum): + Float = 0 + DistributeFront = 1 + DistributeBack = 2 + + +# @brief A helper class to contain a default value for a module configuration +# parameter +class Param(object): + # @var Required The value contained in this instance is irrelevant, and the + # value must be provided by the tuning configuration file. + # @var Optional If the value is not provided by the tuning configuration + # file, then the value contained in this instance will be used instead. + # @var Hardcode The value contained in this instance will be used + class Mode(Enum): + Required = 0 + Optional = 1 + Hardcode = 2 + + # @param name Name of the parameter. Shall match the name used in the + # configuration file for the parameter + # @param required Whether or not a value is required in the config + # parameter of get_value() + # @param val Default value (only relevant if mode is Optional) + def __init__(self, name: str, required: Mode, val=None): + self.name = name + self.__required = required + self.val = val + + def get_value(self, config: dict): + if self.__required is self.Mode.Hardcode: + return self.val + + if self.__required is self.Mode.Required and self.name not in config: + raise ValueError(f'Parameter {self.name} is required but not provided in the configuration') + + return config[self.name] if self.required else self.val + + @property + def required(self): + return self.__required is self.Mode.Required + + # @brief Used by libtuning to auto-generate help information for the tuning + # script on the available parameters for the configuration file + # \todo Implement this + @property + def info(self): + raise NotImplementedError + + +class Tuner(object): + + # External functions + + def __init__(self, platform_name): + self.name = platform_name + self.modules = [] + self.parser = None + self.generator = None + self.output_order = [] + self.config = {} + self.output = {} + + def add(self, module): + self.modules.append(module) + + def set_input_parser(self, parser): + self.parser = parser + + def set_output_formatter(self, output): + self.generator = output + + def set_output_order(self, modules): + self.output_order = modules + + # @brief Convert classes in self.output_order to the instances in self.modules + def _prepare_output_order(self): + output_order = self.output_order + self.output_order = [] + for module_type in output_order: + modules = [module for module in self.modules if module.type == module_type.type] + if len(modules) > 1: + eprint(f'Multiple modules found for module type "{module_type.type}"') + return False + if len(modules) < 1: + eprint(f'No module found for module type "{module_type.type}"') + return False + self.output_order.append(modules[0]) + + return True + + # \todo Validate parser and generator at Tuner construction time? + def _validate_settings(self): + if self.parser is None: + eprint('Missing parser') + return False + + if self.generator is None: + eprint('Missing generator') + return False + + if len(self.modules) == 0: + eprint('No modules added') + return False + + if len(self.output_order) != len(self.modules): + eprint('Number of outputs does not match number of modules') + return False + + return True + + def _process_args(self, argv, platform_name): + parser = argparse.ArgumentParser(description=f'Camera Tuning for {platform_name}') + parser.add_argument('-i', '--input', type=str, required=True, + help='''Directory containing calibration images (required). + Images for ALSC must be named "alsc_{Color Temperature}k_1[u].dng", + and all other images must be named "{Color Temperature}k_{Lux Level}l.dng"''') + parser.add_argument('-o', '--output', type=str, required=True, + help='Output file (required)') + # It is not our duty to scan all modules to figure out their default + # options, so simply return an empty configuration if none is provided. + parser.add_argument('-c', '--config', type=str, default='', + help='Config file (optional)') + # \todo Check if we really need this or if stderr is good enough, or if + # we want a better logging infrastructure with log levels + parser.add_argument('-l', '--log', type=str, default=None, + help='Output log file (optional)') + return parser.parse_args(argv[1:]) + + def run(self, argv): + args = self._process_args(argv, self.name) + if args is None: + return -1 + + if not self._validate_settings(): + return -1 + + if not self._prepare_output_order(): + return -1 + + if len(args.config) > 0: + self.config, disable = self.parser.parse(args.config, self.modules) + else: + self.config = {'general': {}} + disable = [] + + # Remove disabled modules + for module in disable: + if module in self.modules: + self.modules.remove(module) + + for module in self.modules: + if not module.validate_config(self.config): + eprint(f'Config is invalid for module {module.type}') + return -1 + + has_lsc = any(isinstance(m, lt.modules.lsc.LSC) for m in self.modules) + # Only one LSC module allowed + has_only_lsc = has_lsc and len(self.modules) == 1 + + images = utils.load_images(args.input, self.config, not has_only_lsc, has_lsc) + if images is None or len(images) == 0: + eprint(f'No images were found, or able to load') + return -1 + + # Do the tuning + for module in self.modules: + out = module.process(self.config, images, self.output) + if out is None: + eprint(f'Module {module.name} failed to process, aborting') + break + self.output[module] = out + + self.generator.write(args.output, self.output, self.output_order) + + return 0 diff --git a/utils/tuning/libtuning/macbeth.py b/utils/tuning/libtuning/macbeth.py new file mode 100644 index 00000000..5faddf66 --- /dev/null +++ b/utils/tuning/libtuning/macbeth.py @@ -0,0 +1,516 @@ +# SPDX-License-Identifier: BSD-2-Clause +# +# Copyright (C) 2019, Raspberry Pi Ltd +# +# macbeth.py - Locate and extract Macbeth charts from images +# (Copied from: ctt_macbeth_locator.py) + +# \todo Add debugging + +import cv2 +import os +from pathlib import Path +import numpy as np + +from libtuning.image import Image + + +# Reshape image to fixed width without distorting returns image and scale +# factor +def reshape(img, width): + factor = width / img.shape[0] + return cv2.resize(img, None, fx=factor, fy=factor), factor + + +# Correlation function to quantify match +def correlate(im1, im2): + f1 = im1.flatten() + f2 = im2.flatten() + cor = np.corrcoef(f1, f2) + return cor[0][1] + + +# @brief Compute coordinates of macbeth chart vertices and square centres +# @return (max_cor, best_map_col_norm, fit_coords, success) +# +# Also returns an error/success message for debugging purposes. Additionally, +# it scores the match with a confidence value. +# +# Brief explanation of the macbeth chart locating algorithm: +# - Find rectangles within image +# - Take rectangles within percentage offset of median perimeter. The +# assumption is that these will be the macbeth squares +# - For each potential square, find the 24 possible macbeth centre locations +# that would produce a square in that location +# - Find clusters of potential macbeth chart centres to find the potential +# macbeth centres with the most votes, i.e. the most likely ones +# - For each potential macbeth centre, use the centres of the squares that +# voted for it to find macbeth chart corners +# - For each set of corners, transform the possible match into normalised +# space and correlate with a reference chart to evaluate the match +# - Select the highest correlation as the macbeth chart match, returning the +# correlation as the confidence score +# +# \todo Clean this up +def get_macbeth_chart(img, ref_data): + ref, ref_w, ref_h, ref_corns = ref_data + + # The code will raise and catch a MacbethError in case of a problem, trying + # to give some likely reasons why the problem occured, hence the try/except + try: + # Obtain image, convert to grayscale and normalise + src = img + src, factor = reshape(src, 200) + original = src.copy() + a = 125 / np.average(src) + src_norm = cv2.convertScaleAbs(src, alpha=a, beta=0) + + # This code checks if there are seperate colour channels. In the past the + # macbeth locator ran on jpgs and this makes it robust to different + # filetypes. Note that running it on a jpg has 4x the pixels of the + # average bayer channel so coordinates must be doubled. + + # This is best done in img_load.py in the get_patches method. The + # coordinates and image width, height must be divided by two if the + # macbeth locator has been run on a demosaicked image. + if len(src_norm.shape) == 3: + src_bw = cv2.cvtColor(src_norm, cv2.COLOR_BGR2GRAY) + else: + src_bw = src_norm + original_bw = src_bw.copy() + + # Obtain image edges + sigma = 2 + src_bw = cv2.GaussianBlur(src_bw, (0, 0), sigma) + t1, t2 = 50, 100 + edges = cv2.Canny(src_bw, t1, t2) + + # Dilate edges to prevent self-intersections in contours + k_size = 2 + kernel = np.ones((k_size, k_size)) + its = 1 + edges = cv2.dilate(edges, kernel, iterations=its) + + # Find contours in image + conts, _ = cv2.findContours(edges, cv2.RETR_TREE, + cv2.CHAIN_APPROX_NONE) + if len(conts) == 0: + raise MacbethError( + '\nWARNING: No macbeth chart found!' + '\nNo contours found in image\n' + 'Possible problems:\n' + '- Macbeth chart is too dark or bright\n' + '- Macbeth chart is occluded\n' + ) + + # Find quadrilateral contours + epsilon = 0.07 + conts_per = [] + for i in range(len(conts)): + per = cv2.arcLength(conts[i], True) + poly = cv2.approxPolyDP(conts[i], epsilon * per, True) + if len(poly) == 4 and cv2.isContourConvex(poly): + conts_per.append((poly, per)) + + if len(conts_per) == 0: + raise MacbethError( + '\nWARNING: No macbeth chart found!' + '\nNo quadrilateral contours found' + '\nPossible problems:\n' + '- Macbeth chart is too dark or bright\n' + '- Macbeth chart is occluded\n' + '- Macbeth chart is out of camera plane\n' + ) + + # Sort contours by perimeter and get perimeters within percent of median + conts_per = sorted(conts_per, key=lambda x: x[1]) + med_per = conts_per[int(len(conts_per) / 2)][1] + side = med_per / 4 + perc = 0.1 + med_low, med_high = med_per * (1 - perc), med_per * (1 + perc) + squares = [] + for i in conts_per: + if med_low <= i[1] and med_high >= i[1]: + squares.append(i[0]) + + # Obtain coordinates of nomralised macbeth and squares + square_verts, mac_norm = get_square_verts(0.06) + # For each square guess, find 24 possible macbeth chart centres + mac_mids = [] + squares_raw = [] + for i in range(len(squares)): + square = squares[i] + squares_raw.append(square) + + # Convert quads to rotated rectangles. This is required as the + # 'squares' are usually quite irregular quadrilaterls, so + # performing a transform would result in exaggerated warping and + # inaccurate macbeth chart centre placement + rect = cv2.minAreaRect(square) + square = cv2.boxPoints(rect).astype(np.float32) + + # Reorder vertices to prevent 'hourglass shape' + square = sorted(square, key=lambda x: x[0]) + square_1 = sorted(square[:2], key=lambda x: x[1]) + square_2 = sorted(square[2:], key=lambda x: -x[1]) + square = np.array(np.concatenate((square_1, square_2)), np.float32) + square = np.reshape(square, (4, 2)).astype(np.float32) + squares[i] = square + + # Find 24 possible macbeth chart centres by trasnforming normalised + # macbeth square vertices onto candidate square vertices found in image + for j in range(len(square_verts)): + verts = square_verts[j] + p_mat = cv2.getPerspectiveTransform(verts, square) + mac_guess = cv2.perspectiveTransform(mac_norm, p_mat) + mac_guess = np.round(mac_guess).astype(np.int32) + + mac_mid = np.mean(mac_guess, axis=1) + mac_mids.append([mac_mid, (i, j)]) + + if len(mac_mids) == 0: + raise MacbethError( + '\nWARNING: No macbeth chart found!' + '\nNo possible macbeth charts found within image' + '\nPossible problems:\n' + '- Part of the macbeth chart is outside the image\n' + '- Quadrilaterals in image background\n' + ) + + # Reshape data + for i in range(len(mac_mids)): + mac_mids[i][0] = mac_mids[i][0][0] + + # Find where midpoints cluster to identify most likely macbeth centres + clustering = cluster.AgglomerativeClustering( + n_clusters=None, + compute_full_tree=True, + distance_threshold=side * 2 + ) + mac_mids_list = [x[0] for x in mac_mids] + + if len(mac_mids_list) == 1: + # Special case of only one valid centre found (probably not needed) + clus_list = [] + clus_list.append([mac_mids, len(mac_mids)]) + + else: + clustering.fit(mac_mids_list) + + # Create list of all clusters + clus_list = [] + if clustering.n_clusters_ > 1: + for i in range(clustering.labels_.max() + 1): + indices = [j for j, x in enumerate(clustering.labels_) if x == i] + clus = [] + for index in indices: + clus.append(mac_mids[index]) + clus_list.append([clus, len(clus)]) + clus_list.sort(key=lambda x: -x[1]) + + elif clustering.n_clusters_ == 1: + # Special case of only one cluster found + clus_list.append([mac_mids, len(mac_mids)]) + else: + raise MacbethError( + '\nWARNING: No macebth chart found!' + '\nNo clusters found' + '\nPossible problems:\n' + '- NA\n' + ) + + # Keep only clusters with enough votes + clus_len_max = clus_list[0][1] + clus_tol = 0.7 + for i in range(len(clus_list)): + if clus_list[i][1] < clus_len_max * clus_tol: + clus_list = clus_list[:i] + break + cent = np.mean(clus_list[i][0], axis=0)[0] + clus_list[i].append(cent) + + # Get centres of each normalised square + reference = get_square_centres(0.06) + + # For each possible macbeth chart, transform image into + # normalised space and find correlation with reference + max_cor = 0 + best_map = None + best_fit = None + best_cen_fit = None + best_ref_mat = None + + for clus in clus_list: + clus = clus[0] + sq_cents = [] + ref_cents = [] + i_list = [p[1][0] for p in clus] + for point in clus: + i, j = point[1] + + # Remove any square that voted for two different points within + # the same cluster. This causes the same point in the image to be + # mapped to two different reference square centres, resulting in + # a very distorted perspective transform since cv2.findHomography + # simply minimises error. + # This phenomenon is not particularly likely to occur due to the + # enforced distance threshold in the clustering fit but it is + # best to keep this in just in case. + if i_list.count(i) == 1: + square = squares_raw[i] + sq_cent = np.mean(square, axis=0) + ref_cent = reference[j] + sq_cents.append(sq_cent) + ref_cents.append(ref_cent) + + # At least four squares need to have voted for a centre in + # order for a transform to be found + if len(sq_cents) < 4: + raise MacbethError( + '\nWARNING: No macbeth chart found!' + '\nNot enough squares found' + '\nPossible problems:\n' + '- Macbeth chart is occluded\n' + '- Macbeth chart is too dark of bright\n' + ) + + ref_cents = np.array(ref_cents) + sq_cents = np.array(sq_cents) + + # Find best fit transform from normalised centres to image + h_mat, mask = cv2.findHomography(ref_cents, sq_cents) + if 'None' in str(type(h_mat)): + raise MacbethError( + '\nERROR\n' + ) + + # Transform normalised corners and centres into image space + mac_fit = cv2.perspectiveTransform(mac_norm, h_mat) + mac_cen_fit = cv2.perspectiveTransform(np.array([reference]), h_mat) + + # Transform located corners into reference space + ref_mat = cv2.getPerspectiveTransform( + mac_fit, + np.array([ref_corns]) + ) + map_to_ref = cv2.warpPerspective( + original_bw, ref_mat, + (ref_w, ref_h) + ) + + # Normalise brigthness + a = 125 / np.average(map_to_ref) + map_to_ref = cv2.convertScaleAbs(map_to_ref, alpha=a, beta=0) + + # Find correlation with bw reference macbeth + cor = correlate(map_to_ref, ref) + + # Keep only if best correlation + if cor > max_cor: + max_cor = cor + best_map = map_to_ref + best_fit = mac_fit + best_cen_fit = mac_cen_fit + best_ref_mat = ref_mat + + # Rotate macbeth by pi and recorrelate in case macbeth chart is + # upside-down + mac_fit_inv = np.array( + ([[mac_fit[0][2], mac_fit[0][3], + mac_fit[0][0], mac_fit[0][1]]]) + ) + mac_cen_fit_inv = np.flip(mac_cen_fit, axis=1) + ref_mat = cv2.getPerspectiveTransform( + mac_fit_inv, + np.array([ref_corns]) + ) + map_to_ref = cv2.warpPerspective( + original_bw, ref_mat, + (ref_w, ref_h) + ) + a = 125 / np.average(map_to_ref) + map_to_ref = cv2.convertScaleAbs(map_to_ref, alpha=a, beta=0) + cor = correlate(map_to_ref, ref) + if cor > max_cor: + max_cor = cor + best_map = map_to_ref + best_fit = mac_fit_inv + best_cen_fit = mac_cen_fit_inv + best_ref_mat = ref_mat + + # Check best match is above threshold + cor_thresh = 0.6 + if max_cor < cor_thresh: + raise MacbethError( + '\nWARNING: Correlation too low' + '\nPossible problems:\n' + '- Bad lighting conditions\n' + '- Macbeth chart is occluded\n' + '- Background is too noisy\n' + '- Macbeth chart is out of camera plane\n' + ) + + # Represent coloured macbeth in reference space + best_map_col = cv2.warpPerspective( + original, best_ref_mat, (ref_w, ref_h) + ) + best_map_col = cv2.resize( + best_map_col, None, fx=4, fy=4 + ) + a = 125 / np.average(best_map_col) + best_map_col_norm = cv2.convertScaleAbs( + best_map_col, alpha=a, beta=0 + ) + + # Rescale coordinates to original image size + fit_coords = (best_fit / factor, best_cen_fit / factor) + + return (max_cor, best_map_col_norm, fit_coords, True) + + # Catch macbeth errors and continue with code + except MacbethError as error: + eprint(error) + return (0, None, None, False) + + +def find_macbeth(img, mac_config): + small_chart = mac_config['small'] + show = mac_config['show'] + + # Catch the warnings + warnings.simplefilter("ignore") + warnings.warn("runtime", RuntimeWarning) + + # Reference macbeth chart is created that will be correlated with the + # located macbeth chart guess to produce a confidence value for the match. + script_dir = Path(os.path.realpath(os.path.dirname(__file__))) + macbeth_ref_path = script_dir.joinpath('macbeth_ref.pgm') + ref = cv2.imread(str(macbeth_ref_path), flags=cv2.IMREAD_GRAYSCALE) + ref_w = 120 + ref_h = 80 + rc1 = (0, 0) + rc2 = (0, ref_h) + rc3 = (ref_w, ref_h) + rc4 = (ref_w, 0) + ref_corns = np.array((rc1, rc2, rc3, rc4), np.float32) + ref_data = (ref, ref_w, ref_h, ref_corns) + + # Locate macbeth chart + cor, mac, coords, ret = get_macbeth_chart(img, ref_data) + + # Following bits of code try to fix common problems with simple techniques. + # If now or at any point the best correlation is of above 0.75, then + # nothing more is tried as this is a high enough confidence to ensure + # reliable macbeth square centre placement. + + for brightness in [2, 4]: + if cor >= 0.75: + break + img_br = cv2.convertScaleAbs(img, alpha=brightness, beta=0) + cor_b, mac_b, coords_b, ret_b = get_macbeth_chart(img_br, ref_data) + if cor_b > cor: + cor, mac, coords, ret = cor_b, mac_b, coords_b, ret_b + + # In case macbeth chart is too small, take a selection of the image and + # attempt to locate macbeth chart within that. The scale increment is + # root 2 + + # These variables will be used to transform the found coordinates at + # smaller scales back into the original. If ii is still -1 after this + # section that means it was not successful + ii = -1 + w_best = 0 + h_best = 0 + d_best = 100 + + # d_best records the scale of the best match. Macbeth charts are only looked + # for at one scale increment smaller than the current best match in order to avoid + # unecessarily searching for macbeth charts at small scales. + # If a macbeth chart ha already been found then set d_best to 0 + if cor != 0: + d_best = 0 + + for index, pair in enumerate([{'sel': 2 / 3, 'inc': 1 / 6}, + {'sel': 1 / 2, 'inc': 1 / 8}, + {'sel': 1 / 3, 'inc': 1 / 12}, + {'sel': 1 / 4, 'inc': 1 / 16}]): + if cor >= 0.75: + break + + # Check if we need to check macbeth charts at even smaller scales. This + # slows the code down significantly and has therefore been omitted by + # default, however it is not unusably slow so might be useful if the + # macbeth chart is too small to be picked up to by the current + # subselections. Use this for macbeth charts with side lengths around + # 1/5 image dimensions (and smaller...?) it is, however, recommended + # that macbeth charts take up as large as possible a proportion of the + # image. + if index >= 2 and (not small_chart or d_best <= index - 1): + break + + w, h = list(img.shape[:2]) + # Set dimensions of the subselection and the step along each axis + # between selections + w_sel = int(w * pair['sel']) + h_sel = int(h * pair['sel']) + w_inc = int(w * pair['inc']) + h_inc = int(h * pair['inc']) + + loop = ((1 - pair['sel']) / pair['inc']) + 1 + # For each subselection, look for a macbeth chart + for i in range(loop): + for j in range(loop): + w_s, h_s = i * w_inc, j * h_inc + img_sel = img[w_s:w_s + w_sel, h_s:h_s + h_sel] + cor_ij, mac_ij, coords_ij, ret_ij = get_macbeth_chart(img_sel, ref_data) + + # If the correlation is better than the best then record the + # scale and current subselection at which macbeth chart was + # found. Also record the coordinates, macbeth chart and message. + if cor_ij > cor: + cor = cor_ij + mac, coords, ret = mac_ij, coords_ij, ret_ij + ii, jj = i, j + w_best, h_best = w_inc, h_inc + d_best = index + 1 + + # Transform coordinates from subselection to original image + if ii != -1: + for a in range(len(coords)): + for b in range(len(coords[a][0])): + coords[a][0][b][1] += ii * w_best + coords[a][0][b][0] += jj * h_best + + if not ret: + return None + + coords_fit = coords + if cor < 0.75: + eprint(f'Warning: Low confidence {cor:.3f} for macbeth chart in {img.path.name}') + + if show: + draw_macbeth_results(img, coords_fit) + + return coords_fit + + +def locate_macbeth(image: Image, config: dict): + # Find macbeth centres + av_chan = (np.mean(np.array(image.channels), axis=0) / (2**16)) + av_val = np.mean(av_chan) + if av_val < image.blacklevel_16 / (2**16) + 1 / 64: + eprint(f'Image {image.path.name} too dark') + return None + + macbeth = find_macbeth(av_chan, config['general']['macbeth']) + + if macbeth is None: + eprint(f'No macbeth chart found in {image.path.name}') + return None + + mac_cen_coords = macbeth[1] + if not image.get_patches(mac_cen_coords): + eprint(f'Macbeth patches have saturated in {image.path.name}') + return None + + return macbeth diff --git a/utils/tuning/libtuning/macbeth_ref.pgm b/utils/tuning/libtuning/macbeth_ref.pgm new file mode 100644 index 00000000..37897140 --- /dev/null +++ b/utils/tuning/libtuning/macbeth_ref.pgm @@ -0,0 +1,6 @@ +# SPDX-License-Identifier: BSD-2-Clause +P5 +# Reference macbeth chart +120 80 +255 +  !#!" #!"&&$#$#'"%&#+2///..../.........-()))))))))))))))))))(((-,*)'(&)#($%(%"###""!%""&"&&!$" #!$ !"! $&**" !#5.,%+,-5"0>;@@>@AAAACBCB=&<<5x|64RYVTSRRRMMNLKJJLH+&0gijgdeffmmnpnkji`#3bY! 3FHHIIIHIJIIJHIII@#?=7}:5Wcbcbdcb`^^`^^_^Y,'6r'7|;8Xfeeegeccb`^aba]Z+)q#3GHIIIIJIIJJIHIJI@&5=8~;8Zgghggedbdcbda^\Z+(;y)9z"3GIIJJJJJKJJJJJJJ@'4>9|=8Zhighgeeeedeca__[/)Bv&:|#3GJJIIJKKKJJJKKJK@&6>9~<8Yghegggffihccab^\/*Cz'9$  6IKJJMMMKMKKMKKMLC&2@9<9Yghhhhijiegdcebc^0)G(7% 6JLMMNMMKMMNMMMMMD&2@:~=9Xfghhjiigdgddedc`1)M}(:¾& "8LNOONNOMONNMMNOND'3@;=:Ziiigheegegegggdc1,Q~)8%# "9NNNPPPQOOOOONNOOD'0?;=;[iigeeegghgdedgea0-P(8Ý' "#$:NNOQPPRPQPOOPQPPD*1A;;:Yfghgghgghghhdggc3.\~);¤(&%%;OQQQRSSRPQQQQSQQF)3B<=:Wfhghhhihggghfhee4/f*:ä&%%%?RSSSSSTTTTSSSTTRE)5B=@:Ygiihhiiiihihiiif72p}(9Ʃ'#%&?TUTTTUUQSTTTTTVSF*3F>A;[ghjiihiiiihihije50r)6ƫ& &#%?SVVVUUUUUTUUVVUUG*5F=A;Yhijiiijjiiiiijje81t~)5ư' '$$=OQRRQQPRSRSSSSSSG+6D@?;Wefgggggfffgeeefc41x{*5( &&&'++++,,*-,-00-0100*-SUX\]]`_ffgiooopo=;X\bedbadbca`]\]ZZ;;<::8:;9983433110/-,...1//12410/..--+)"",---,-./,,.-/-0-( &&%+/0103322011223233)(34534767::;;==:=B9;BFGEEGIKJKIJGIJCD=<:76566554111/0/1.*+00233300/00//..,+*#")(*)++,++))*++**'!!&$*w¼1-_addc`ceccdccedbb?A|B>=>?@@?====;<:;:<:11r+.( !'%*zɠ42gjmllklomooonpopmHGD>AEDEFEECEECCCDDEC46׿0:Ѿ,!!&&,|ʡ61inknnoopoppoqqrqoEEFACGFFFFFFDFDDDDDDC5709+!"%%-~ʡ42inopppppoqqqrrsrnABC?DGGGGFFFFDFFDDEDC481;+!!"#*|ʡ62imoppppqqqqrtrqtrGDH?CGGGGGGGGFFFFFFDB381<Խ, !)}ˢ63mooppqqqqqqrrtvtoDHJACHHGGHGGFFFDDGGFD293>׽, $){ˢ53jpppqprqrrrttuvuo>HJAFHHHHHGGHGGFGGFFE283:ڽ- "*{̣53loqpqsqrrrtrutsvrAHHCGHIHHHHHHGFGHGGGD5;28, +}ʡ52mqoqpqrttttttuurpFIOCEHHIHHHHGHGGFFIGF8<48ۿ, (|ʢ41krqpqqqrrtrtuvtuoEHPBHHIIIHIIHIHGHGHHE7<58* (zʡ63kpqprqqstttutrvvoFOLEHHIIHIHHHIGHGIHGF4=5<* 'zȡ62lppqrqrrrtttuttvpAGMGHIIIIHIIIHHIIJHHG4<4<+ !){Ƞ62jopqqqqqrtttutttrEHOHFIIIIIJIIIIHIHIHI7>5;, !)zƟ53lppqqrqrtttuuuutsFIRHGJIJHJKJJJIIIIIIH9>5;+  !({Ŝ41joppprqrrrutttvvrIHTHCJJJJJIJIJJIJJJIH7=5;+ (u65gjlmmmnoopnpprpqoIHOIBIJJJIJJJJIIIHHHG8929ʾ' "&,-*)-01/,0/12102-+04448789<>>??AFAD@DBCIJNRWTSUXT[WUQUOKFEBBABA?>>=<<;;67942:<<<>9999864565363&(13335422./1/-+..+ !"&$$""$"&$%'()(''*+-0124688:<>>??A>?EBCHKOLJLNOSQOXQQVMLACGHGHIGFHGDCCBB@??7432233210111.,++,++%(++)*(''%%%$$#%&$# ")0/001120024455520+-U]`addcdhefeekecYGFJRXYYVWWZWVXXVZTOBF}K7Ybccddfeg`^]^]\[Z[*)OTTPPQPOKOLLJJLIK  !1;:9:<<===;=???A@9*/FJmxyxwyzzzxyzzz{zxLO]=.-y# !!2><=;==>=<<>@@@@A9-0IKnz||{|{||{}}~}}{zLO]>..~% $2==;<>>?===>@A@AB;+1JJo{|y{||}{||}}}}}yMT_>-.}# %2<=;=<@?>==>?A@AA9+3FMlz{{y|}}}}||}|}}{MTd>-,# %1<<<;==<<=>?A?@AA:,3INo{{y{||||}|}}|~}{RTd=/-}#!$0<<<=<<==>A@@>@AA:-2HInzz{{||{{}~~}}|}zMRd=++~# "$/;<==>;===@@@@>AA:+2KHn||y|||||{}~}|}|xMSd=+,}# ! 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