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"""
brief: face alignment with FFHQ method (https://github.com/NVlabs/ffhq-dataset)
author: lzhbrian (https://lzhbrian.me)
date: 2020.1.5
note: code is heavily borrowed from 
	https://github.com/NVlabs/ffhq-dataset
	http://dlib.net/face_landmark_detection.py.html

requirements:
	apt install cmake
	conda install Pillow numpy scipy
	pip install dlib
	# download face landmark model from:
	# http://dlib.net/files/shape_predictor_68_face_landmarks.dat.bz2
"""
from argparse import ArgumentParser
import time
import numpy as np
import PIL
import PIL.Image
import os
import scipy
import scipy.ndimage
import dlib
import multiprocessing as mp
import math

from configs.paths_config import model_paths
SHAPE_PREDICTOR_PATH = model_paths["shape_predictor"]


def get_landmark(filepath, predictor):
	"""get landmark with dlib
	:return: np.array shape=(68, 2)
	"""
	detector = dlib.get_frontal_face_detector()

	img = dlib.load_rgb_image(filepath)
	dets = detector(img, 1)

	shape = None

	for k, d in enumerate(dets):
		shape = predictor(img, d)

	if not shape:
		raise Exception("Could not find face in image. Try another!")

	t = list(shape.parts())
	a = []
	for tt in t:
		a.append([tt.x, tt.y])
	lm = np.array(a)
	return lm


def align_face(filepath, predictor):
	"""
	:param filepath: str
	:return: PIL Image
	"""

	lm = get_landmark(filepath, predictor)

	lm_chin = lm[0: 17]  # left-right
	lm_eyebrow_left = lm[17: 22]  # left-right
	lm_eyebrow_right = lm[22: 27]  # left-right
	lm_nose = lm[27: 31]  # top-down
	lm_nostrils = lm[31: 36]  # top-down
	lm_eye_left = lm[36: 42]  # left-clockwise
	lm_eye_right = lm[42: 48]  # left-clockwise
	lm_mouth_outer = lm[48: 60]  # left-clockwise
	lm_mouth_inner = lm[60: 68]  # left-clockwise

	# Calculate auxiliary vectors.
	eye_left = np.mean(lm_eye_left, axis=0)
	eye_right = np.mean(lm_eye_right, axis=0)
	eye_avg = (eye_left + eye_right) * 0.5
	eye_to_eye = eye_right - eye_left
	mouth_left = lm_mouth_outer[0]
	mouth_right = lm_mouth_outer[6]
	mouth_avg = (mouth_left + mouth_right) * 0.5
	eye_to_mouth = mouth_avg - eye_avg

	# Choose oriented crop rectangle.
	x = eye_to_eye - np.flipud(eye_to_mouth) * [-1, 1]
	x /= np.hypot(*x)
	x *= max(np.hypot(*eye_to_eye) * 2.0, np.hypot(*eye_to_mouth) * 1.8)
	y = np.flipud(x) * [-1, 1]
	c = eye_avg + eye_to_mouth * 0.1
	quad = np.stack([c - x - y, c - x + y, c + x + y, c + x - y])
	qsize = np.hypot(*x) * 2

	# read image
	img = PIL.Image.open(filepath).convert("RGB")

	output_size = 256
	transform_size = 256
	enable_padding = True

	# Shrink.
	shrink = int(np.floor(qsize / output_size * 0.5))
	if shrink > 1:
		rsize = (int(np.rint(float(img.size[0]) / shrink)), int(np.rint(float(img.size[1]) / shrink)))
		img = img.resize(rsize, PIL.Image.ANTIALIAS)
		quad /= shrink
		qsize /= shrink

	# Crop.
	border = max(int(np.rint(qsize * 0.1)), 3)
	crop = (int(np.floor(min(quad[:, 0]))), int(np.floor(min(quad[:, 1]))), int(np.ceil(max(quad[:, 0]))),
			int(np.ceil(max(quad[:, 1]))))
	crop = (max(crop[0] - border, 0), max(crop[1] - border, 0), min(crop[2] + border, img.size[0]),
			min(crop[3] + border, img.size[1]))
	if crop[2] - crop[0] < img.size[0] or crop[3] - crop[1] < img.size[1]:
		img = img.crop(crop)
		quad -= crop[0:2]

	# Pad.
	pad = (int(np.floor(min(quad[:, 0]))), int(np.floor(min(quad[:, 1]))), int(np.ceil(max(quad[:, 0]))),
		   int(np.ceil(max(quad[:, 1]))))
	pad = (max(-pad[0] + border, 0), max(-pad[1] + border, 0), max(pad[2] - img.size[0] + border, 0),
		   max(pad[3] - img.size[1] + border, 0))
	if enable_padding and max(pad) > border - 4:
		pad = np.maximum(pad, int(np.rint(qsize * 0.3)))
		img = np.pad(np.float32(img), ((pad[1], pad[3]), (pad[0], pad[2]), (0, 0)), 'reflect')
		h, w, _ = img.shape
		y, x, _ = np.ogrid[:h, :w, :1]
		mask = np.maximum(1.0 - np.minimum(np.float32(x) / pad[0], np.float32(w - 1 - x) / pad[2]),
						  1.0 - np.minimum(np.float32(y) / pad[1], np.float32(h - 1 - y) / pad[3]))
		blur = qsize * 0.02
		img += (scipy.ndimage.gaussian_filter(img, [blur, blur, 0]) - img) * np.clip(mask * 3.0 + 1.0, 0.0, 1.0)
		img += (np.median(img, axis=(0, 1)) - img) * np.clip(mask, 0.0, 1.0)
		img = PIL.Image.fromarray(np.uint8(np.clip(np.rint(img), 0, 255)), 'RGB')
		quad += pad[:2]

	# Transform.
	img = img.transform((transform_size, transform_size), PIL.Image.QUAD, (quad + 0.5).flatten(), PIL.Image.BILINEAR)
	if output_size < transform_size:
		img = img.resize((output_size, output_size), PIL.Image.ANTIALIAS)

	# Save aligned image.
	return img


def chunks(lst, n):
	"""Yield successive n-sized chunks from lst."""
	for i in range(0, len(lst), n):
		yield lst[i:i + n]


def extract_on_paths(file_paths):
	predictor = dlib.shape_predictor(SHAPE_PREDICTOR_PATH)
	pid = mp.current_process().name
	print(f'\t{pid} is starting to extract on #{len(file_paths)} images')
	tot_count = len(file_paths)
	count = 0
	for file_path, res_path in file_paths:
		count += 1
		if count % 100 == 0:
			print(f'{pid} done with {count}/{tot_count}')
		try:
			res = align_face(file_path, predictor)
			res = res.convert('RGB')
			os.makedirs(os.path.dirname(res_path), exist_ok=True)
			res.save(res_path)
		except Exception:
			continue
	print('\tDone!')


def parse_args():
	parser = ArgumentParser(add_help=False)
	parser.add_argument('--num_threads', type=int, default=1)
	parser.add_argument('--root_path', type=str, default='')
	args = parser.parse_args()
	return args


def run(args):
	root_path = args.root_path
	out_crops_path = root_path + '_crops'
	if not os.path.exists(out_crops_path):
		os.makedirs(out_crops_path, exist_ok=True)

	file_paths = []
	for root, dirs, files in os.walk(root_path):
		for file in files:
			file_path = os.path.join(root, file)
			fname = os.path.join(out_crops_path, os.path.relpath(file_path, root_path))
			res_path = f'{os.path.splitext(fname)[0]}.jpg'
			if os.path.splitext(file_path)[1] == '.txt' or os.path.exists(res_path):
				continue
			file_paths.append((file_path, res_path))

	file_chunks = list(chunks(file_paths, int(math.ceil(len(file_paths) / args.num_threads))))
	print(len(file_chunks))
	pool = mp.Pool(args.num_threads)
	print(f'Running on {len(file_paths)} paths\nHere we goooo')
	tic = time.time()
	pool.map(extract_on_paths, file_chunks)
	toc = time.time()
	print(f'Mischief managed in {str(toc - tic)}s')


if __name__ == '__main__':
	args = parse_args()
	run(args)