| import cv2
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| import requests
|
| import os
|
| from collections import defaultdict
|
| from math import log, sqrt
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| import numpy as np
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| from PIL import Image, ImageDraw
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|
|
| GREEN = "#0F0"
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| BLUE = "#00F"
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| RED = "#F00"
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|
|
|
|
| def crop_image(im, settings):
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| """ Intelligently crop an image to the subject matter """
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|
|
| scale_by = 1
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| if is_landscape(im.width, im.height):
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| scale_by = settings.crop_height / im.height
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| elif is_portrait(im.width, im.height):
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| scale_by = settings.crop_width / im.width
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| elif is_square(im.width, im.height):
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| if is_square(settings.crop_width, settings.crop_height):
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| scale_by = settings.crop_width / im.width
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| elif is_landscape(settings.crop_width, settings.crop_height):
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| scale_by = settings.crop_width / im.width
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| elif is_portrait(settings.crop_width, settings.crop_height):
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| scale_by = settings.crop_height / im.height
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|
|
| im = im.resize((int(im.width * scale_by), int(im.height * scale_by)))
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| im_debug = im.copy()
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|
|
| focus = focal_point(im_debug, settings)
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|
|
|
|
|
|
| y_half = int(settings.crop_height / 2)
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| x_half = int(settings.crop_width / 2)
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|
|
| x1 = focus.x - x_half
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| if x1 < 0:
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| x1 = 0
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| elif x1 + settings.crop_width > im.width:
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| x1 = im.width - settings.crop_width
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|
|
| y1 = focus.y - y_half
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| if y1 < 0:
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| y1 = 0
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| elif y1 + settings.crop_height > im.height:
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| y1 = im.height - settings.crop_height
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|
|
| x2 = x1 + settings.crop_width
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| y2 = y1 + settings.crop_height
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|
|
| crop = [x1, y1, x2, y2]
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|
|
| results = []
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|
|
| results.append(im.crop(tuple(crop)))
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|
|
| if settings.annotate_image:
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| d = ImageDraw.Draw(im_debug)
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| rect = list(crop)
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| rect[2] -= 1
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| rect[3] -= 1
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| d.rectangle(rect, outline=GREEN)
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| results.append(im_debug)
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| if settings.destop_view_image:
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| im_debug.show()
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|
|
| return results
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|
|
| def focal_point(im, settings):
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| corner_points = image_corner_points(im, settings) if settings.corner_points_weight > 0 else []
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| entropy_points = image_entropy_points(im, settings) if settings.entropy_points_weight > 0 else []
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| face_points = image_face_points(im, settings) if settings.face_points_weight > 0 else []
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|
|
| pois = []
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|
|
| weight_pref_total = 0
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| if len(corner_points) > 0:
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| weight_pref_total += settings.corner_points_weight
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| if len(entropy_points) > 0:
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| weight_pref_total += settings.entropy_points_weight
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| if len(face_points) > 0:
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| weight_pref_total += settings.face_points_weight
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|
|
| corner_centroid = None
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| if len(corner_points) > 0:
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| corner_centroid = centroid(corner_points)
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| corner_centroid.weight = settings.corner_points_weight / weight_pref_total
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| pois.append(corner_centroid)
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|
|
| entropy_centroid = None
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| if len(entropy_points) > 0:
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| entropy_centroid = centroid(entropy_points)
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| entropy_centroid.weight = settings.entropy_points_weight / weight_pref_total
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| pois.append(entropy_centroid)
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|
|
| face_centroid = None
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| if len(face_points) > 0:
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| face_centroid = centroid(face_points)
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| face_centroid.weight = settings.face_points_weight / weight_pref_total
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| pois.append(face_centroid)
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|
|
| average_point = poi_average(pois, settings)
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|
|
| if settings.annotate_image:
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| d = ImageDraw.Draw(im)
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| max_size = min(im.width, im.height) * 0.07
|
| if corner_centroid is not None:
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| color = BLUE
|
| box = corner_centroid.bounding(max_size * corner_centroid.weight)
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| d.text((box[0], box[1]-15), f"Edge: {corner_centroid.weight:.02f}", fill=color)
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| d.ellipse(box, outline=color)
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| if len(corner_points) > 1:
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| for f in corner_points:
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| d.rectangle(f.bounding(4), outline=color)
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| if entropy_centroid is not None:
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| color = "#ff0"
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| box = entropy_centroid.bounding(max_size * entropy_centroid.weight)
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| d.text((box[0], box[1]-15), f"Entropy: {entropy_centroid.weight:.02f}", fill=color)
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| d.ellipse(box, outline=color)
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| if len(entropy_points) > 1:
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| for f in entropy_points:
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| d.rectangle(f.bounding(4), outline=color)
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| if face_centroid is not None:
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| color = RED
|
| box = face_centroid.bounding(max_size * face_centroid.weight)
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| d.text((box[0], box[1]-15), f"Face: {face_centroid.weight:.02f}", fill=color)
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| d.ellipse(box, outline=color)
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| if len(face_points) > 1:
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| for f in face_points:
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| d.rectangle(f.bounding(4), outline=color)
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|
|
| d.ellipse(average_point.bounding(max_size), outline=GREEN)
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|
|
| return average_point
|
|
|
|
|
| def image_face_points(im, settings):
|
| if settings.dnn_model_path is not None:
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| detector = cv2.FaceDetectorYN.create(
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| settings.dnn_model_path,
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| "",
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| (im.width, im.height),
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| 0.9,
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| 0.3,
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| 5000
|
| )
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| faces = detector.detect(np.array(im))
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| results = []
|
| if faces[1] is not None:
|
| for face in faces[1]:
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| x = face[0]
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| y = face[1]
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| w = face[2]
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| h = face[3]
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| results.append(
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| PointOfInterest(
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| int(x + (w * 0.5)),
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| int(y + (h * 0.33)),
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| size = w,
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| weight = 1/len(faces[1])
|
| )
|
| )
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| return results
|
| else:
|
| np_im = np.array(im)
|
| gray = cv2.cvtColor(np_im, cv2.COLOR_BGR2GRAY)
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|
|
| tries = [
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| [ f'{cv2.data.haarcascades}haarcascade_eye.xml', 0.01 ],
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| [ f'{cv2.data.haarcascades}haarcascade_frontalface_default.xml', 0.05 ],
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| [ f'{cv2.data.haarcascades}haarcascade_profileface.xml', 0.05 ],
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| [ f'{cv2.data.haarcascades}haarcascade_frontalface_alt.xml', 0.05 ],
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| [ f'{cv2.data.haarcascades}haarcascade_frontalface_alt2.xml', 0.05 ],
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| [ f'{cv2.data.haarcascades}haarcascade_frontalface_alt_tree.xml', 0.05 ],
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| [ f'{cv2.data.haarcascades}haarcascade_eye_tree_eyeglasses.xml', 0.05 ],
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| [ f'{cv2.data.haarcascades}haarcascade_upperbody.xml', 0.05 ]
|
| ]
|
| for t in tries:
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| classifier = cv2.CascadeClassifier(t[0])
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| minsize = int(min(im.width, im.height) * t[1])
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| try:
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| faces = classifier.detectMultiScale(gray, scaleFactor=1.1,
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| minNeighbors=7, minSize=(minsize, minsize), flags=cv2.CASCADE_SCALE_IMAGE)
|
| except:
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| continue
|
|
|
| if len(faces) > 0:
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| rects = [[f[0], f[1], f[0] + f[2], f[1] + f[3]] for f in faces]
|
| return [PointOfInterest((r[0] +r[2]) // 2, (r[1] + r[3]) // 2, size=abs(r[0]-r[2]), weight=1/len(rects)) for r in rects]
|
| return []
|
|
|
|
|
| def image_corner_points(im, settings):
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| grayscale = im.convert("L")
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|
|
|
|
| gd = ImageDraw.Draw(grayscale)
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| gd.rectangle([0, im.height*.9, im.width, im.height], fill="#999")
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|
|
| np_im = np.array(grayscale)
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|
|
| points = cv2.goodFeaturesToTrack(
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| np_im,
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| maxCorners=100,
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| qualityLevel=0.04,
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| minDistance=min(grayscale.width, grayscale.height)*0.06,
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| useHarrisDetector=False,
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| )
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|
|
| if points is None:
|
| return []
|
|
|
| focal_points = []
|
| for point in points:
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| x, y = point.ravel()
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| focal_points.append(PointOfInterest(x, y, size=4, weight=1/len(points)))
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|
|
| return focal_points
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|
|
|
|
| def image_entropy_points(im, settings):
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| landscape = im.height < im.width
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| portrait = im.height > im.width
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| if landscape:
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| move_idx = [0, 2]
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| move_max = im.size[0]
|
| elif portrait:
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| move_idx = [1, 3]
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| move_max = im.size[1]
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| else:
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| return []
|
|
|
| e_max = 0
|
| crop_current = [0, 0, settings.crop_width, settings.crop_height]
|
| crop_best = crop_current
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| while crop_current[move_idx[1]] < move_max:
|
| crop = im.crop(tuple(crop_current))
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| e = image_entropy(crop)
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|
|
| if (e > e_max):
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| e_max = e
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| crop_best = list(crop_current)
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|
|
| crop_current[move_idx[0]] += 4
|
| crop_current[move_idx[1]] += 4
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|
|
| x_mid = int(crop_best[0] + settings.crop_width/2)
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| y_mid = int(crop_best[1] + settings.crop_height/2)
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|
|
| return [PointOfInterest(x_mid, y_mid, size=25, weight=1.0)]
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|
|
|
|
| def image_entropy(im):
|
|
|
|
|
| band = np.asarray(im.convert("1"), dtype=np.uint8)
|
| hist, _ = np.histogram(band, bins=range(0, 256))
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| hist = hist[hist > 0]
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| return -np.log2(hist / hist.sum()).sum()
|
|
|
| def centroid(pois):
|
| x = [poi.x for poi in pois]
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| y = [poi.y for poi in pois]
|
| return PointOfInterest(sum(x)/len(pois), sum(y)/len(pois))
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|
|
|
|
| def poi_average(pois, settings):
|
| weight = 0.0
|
| x = 0.0
|
| y = 0.0
|
| for poi in pois:
|
| weight += poi.weight
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| x += poi.x * poi.weight
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| y += poi.y * poi.weight
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| avg_x = round(weight and x / weight)
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| avg_y = round(weight and y / weight)
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|
|
| return PointOfInterest(avg_x, avg_y)
|
|
|
|
|
| def is_landscape(w, h):
|
| return w > h
|
|
|
|
|
| def is_portrait(w, h):
|
| return h > w
|
|
|
|
|
| def is_square(w, h):
|
| return w == h
|
|
|
|
|
| def download_and_cache_models(dirname):
|
| download_url = 'https://github.com/opencv/opencv_zoo/blob/91fb0290f50896f38a0ab1e558b74b16bc009428/models/face_detection_yunet/face_detection_yunet_2022mar.onnx?raw=true'
|
| model_file_name = 'face_detection_yunet.onnx'
|
|
|
| if not os.path.exists(dirname):
|
| os.makedirs(dirname)
|
|
|
| cache_file = os.path.join(dirname, model_file_name)
|
| if not os.path.exists(cache_file):
|
| print(f"downloading face detection model from '{download_url}' to '{cache_file}'")
|
| response = requests.get(download_url)
|
| with open(cache_file, "wb") as f:
|
| f.write(response.content)
|
|
|
| if os.path.exists(cache_file):
|
| return cache_file
|
| return None
|
|
|
|
|
| class PointOfInterest:
|
| def __init__(self, x, y, weight=1.0, size=10):
|
| self.x = x
|
| self.y = y
|
| self.weight = weight
|
| self.size = size
|
|
|
| def bounding(self, size):
|
| return [
|
| self.x - size//2,
|
| self.y - size//2,
|
| self.x + size//2,
|
| self.y + size//2
|
| ]
|
|
|
|
|
| class Settings:
|
| def __init__(self, crop_width=512, crop_height=512, corner_points_weight=0.5, entropy_points_weight=0.5, face_points_weight=0.5, annotate_image=False, dnn_model_path=None):
|
| self.crop_width = crop_width
|
| self.crop_height = crop_height
|
| self.corner_points_weight = corner_points_weight
|
| self.entropy_points_weight = entropy_points_weight
|
| self.face_points_weight = face_points_weight
|
| self.annotate_image = annotate_image
|
| self.destop_view_image = False
|
| self.dnn_model_path = dnn_model_path
|
|
|