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227 lines
10 KiB
227 lines
10 KiB
2 years ago
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# -*- coding: utf-8 -*-
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import PIL.Image
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import dlib
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import numpy as np
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from PIL import ImageFile
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try:
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import face_recognition_models
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except Exception:
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print("Please install `face_recognition_models` with this command before using `face_recognition`:\n")
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print("pip install git+https://github.com/ageitgey/face_recognition_models")
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quit()
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ImageFile.LOAD_TRUNCATED_IMAGES = True
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face_detector = dlib.get_frontal_face_detector()
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predictor_68_point_model = face_recognition_models.pose_predictor_model_location()
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pose_predictor_68_point = dlib.shape_predictor(predictor_68_point_model)
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predictor_5_point_model = face_recognition_models.pose_predictor_five_point_model_location()
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pose_predictor_5_point = dlib.shape_predictor(predictor_5_point_model)
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cnn_face_detection_model = face_recognition_models.cnn_face_detector_model_location()
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cnn_face_detector = dlib.cnn_face_detection_model_v1(cnn_face_detection_model)
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face_recognition_model = face_recognition_models.face_recognition_model_location()
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face_encoder = dlib.face_recognition_model_v1(face_recognition_model)
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def _rect_to_css(rect):
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"""
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Convert a dlib 'rect' object to a plain tuple in (top, right, bottom, left) order
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:param rect: a dlib 'rect' object
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:return: a plain tuple representation of the rect in (top, right, bottom, left) order
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"""
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return rect.top(), rect.right(), rect.bottom(), rect.left()
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def _css_to_rect(css):
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"""
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Convert a tuple in (top, right, bottom, left) order to a dlib `rect` object
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:param css: plain tuple representation of the rect in (top, right, bottom, left) order
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:return: a dlib `rect` object
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"""
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return dlib.rectangle(css[3], css[0], css[1], css[2])
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def _trim_css_to_bounds(css, image_shape):
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"""
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Make sure a tuple in (top, right, bottom, left) order is within the bounds of the image.
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:param css: plain tuple representation of the rect in (top, right, bottom, left) order
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:param image_shape: numpy shape of the image array
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:return: a trimmed plain tuple representation of the rect in (top, right, bottom, left) order
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"""
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return max(css[0], 0), min(css[1], image_shape[1]), min(css[2], image_shape[0]), max(css[3], 0)
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def face_distance(face_encodings, face_to_compare):
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"""
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Given a list of face encodings, compare them to a known face encoding and get a euclidean distance
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for each comparison face. The distance tells you how similar the faces are.
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:param face_encodings: List of face encodings to compare
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:param face_to_compare: A face encoding to compare against
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:return: A numpy ndarray with the distance for each face in the same order as the 'faces' array
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"""
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if len(face_encodings) == 0:
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return np.empty((0))
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return np.linalg.norm(face_encodings - face_to_compare, axis=1)
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def load_image_file(file, mode='RGB'):
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"""
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Loads an image file (.jpg, .png, etc) into a numpy array
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:param file: image file name or file object to load
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:param mode: format to convert the image to. Only 'RGB' (8-bit RGB, 3 channels) and 'L' (black and white) are supported.
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:return: image contents as numpy array
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"""
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im = PIL.Image.open(file)
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if mode:
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im = im.convert(mode)
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return np.array(im)
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def _raw_face_locations(img, number_of_times_to_upsample=1, model="hog"):
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"""
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Returns an array of bounding boxes of human faces in a image
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:param img: An image (as a numpy array)
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:param number_of_times_to_upsample: How many times to upsample the image looking for faces. Higher numbers find smaller faces.
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:param model: Which face detection model to use. "hog" is less accurate but faster on CPUs. "cnn" is a more accurate
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deep-learning model which is GPU/CUDA accelerated (if available). The default is "hog".
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:return: A list of dlib 'rect' objects of found face locations
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"""
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if model == "cnn":
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return cnn_face_detector(img, number_of_times_to_upsample)
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else:
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return face_detector(img, number_of_times_to_upsample)
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def face_locations(img, number_of_times_to_upsample=1, model="hog"):
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"""
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Returns an array of bounding boxes of human faces in a image
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:param img: An image (as a numpy array)
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:param number_of_times_to_upsample: How many times to upsample the image looking for faces. Higher numbers find smaller faces.
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:param model: Which face detection model to use. "hog" is less accurate but faster on CPUs. "cnn" is a more accurate
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deep-learning model which is GPU/CUDA accelerated (if available). The default is "hog".
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:return: A list of tuples of found face locations in css (top, right, bottom, left) order
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"""
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if model == "cnn":
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return [_trim_css_to_bounds(_rect_to_css(face.rect), img.shape) for face in _raw_face_locations(img, number_of_times_to_upsample, "cnn")]
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else:
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return [_trim_css_to_bounds(_rect_to_css(face), img.shape) for face in _raw_face_locations(img, number_of_times_to_upsample, model)]
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def _raw_face_locations_batched(images, number_of_times_to_upsample=1, batch_size=128):
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"""
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Returns an 2d array of dlib rects of human faces in a image using the cnn face detector
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:param images: A list of images (each as a numpy array)
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:param number_of_times_to_upsample: How many times to upsample the image looking for faces. Higher numbers find smaller faces.
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:return: A list of dlib 'rect' objects of found face locations
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"""
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return cnn_face_detector(images, number_of_times_to_upsample, batch_size=batch_size)
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def batch_face_locations(images, number_of_times_to_upsample=1, batch_size=128):
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"""
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Returns an 2d array of bounding boxes of human faces in a image using the cnn face detector
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If you are using a GPU, this can give you much faster results since the GPU
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can process batches of images at once. If you aren't using a GPU, you don't need this function.
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:param images: A list of images (each as a numpy array)
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:param number_of_times_to_upsample: How many times to upsample the image looking for faces. Higher numbers find smaller faces.
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:param batch_size: How many images to include in each GPU processing batch.
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:return: A list of tuples of found face locations in css (top, right, bottom, left) order
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"""
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def convert_cnn_detections_to_css(detections):
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return [_trim_css_to_bounds(_rect_to_css(face.rect), images[0].shape) for face in detections]
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raw_detections_batched = _raw_face_locations_batched(images, number_of_times_to_upsample, batch_size)
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return list(map(convert_cnn_detections_to_css, raw_detections_batched))
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def _raw_face_landmarks(face_image, face_locations=None, model="large"):
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if face_locations is None:
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face_locations = _raw_face_locations(face_image)
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else:
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face_locations = [_css_to_rect(face_location) for face_location in face_locations]
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pose_predictor = pose_predictor_68_point
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if model == "small":
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pose_predictor = pose_predictor_5_point
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return [pose_predictor(face_image, face_location) for face_location in face_locations]
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def face_landmarks(face_image, face_locations=None, model="large"):
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"""
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Given an image, returns a dict of face feature locations (eyes, nose, etc) for each face in the image
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:param face_image: image to search
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:param face_locations: Optionally provide a list of face locations to check.
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:param model: Optional - which model to use. "large" (default) or "small" which only returns 5 points but is faster.
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:return: A list of dicts of face feature locations (eyes, nose, etc)
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"""
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landmarks = _raw_face_landmarks(face_image, face_locations, model)
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landmarks_as_tuples = [[(p.x, p.y) for p in landmark.parts()] for landmark in landmarks]
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# For a definition of each point index, see https://cdn-images-1.medium.com/max/1600/1*AbEg31EgkbXSQehuNJBlWg.png
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if model == 'large':
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return [{
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"chin": points[0:17],
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"left_eyebrow": points[17:22],
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"right_eyebrow": points[22:27],
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"nose_bridge": points[27:31],
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"nose_tip": points[31:36],
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"left_eye": points[36:42],
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"right_eye": points[42:48],
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"top_lip": points[48:55] + [points[64]] + [points[63]] + [points[62]] + [points[61]] + [points[60]],
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"bottom_lip": points[54:60] + [points[48]] + [points[60]] + [points[67]] + [points[66]] + [points[65]] + [points[64]]
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} for points in landmarks_as_tuples]
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elif model == 'small':
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return [{
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"nose_tip": [points[4]],
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"left_eye": points[2:4],
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"right_eye": points[0:2],
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} for points in landmarks_as_tuples]
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else:
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raise ValueError("Invalid landmarks model type. Supported models are ['small', 'large'].")
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def face_encodings(face_image, known_face_locations=None, num_jitters=1, model="small"):
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"""
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Given an image, return the 128-dimension face encoding for each face in the image.
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:param face_image: The image that contains one or more faces
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:param known_face_locations: Optional - the bounding boxes of each face if you already know them.
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:param num_jitters: How many times to re-sample the face when calculating encoding. Higher is more accurate, but slower (i.e. 100 is 100x slower)
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:param model: Optional - which model to use. "large" or "small" (default) which only returns 5 points but is faster.
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:return: A list of 128-dimensional face encodings (one for each face in the image)
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"""
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raw_landmarks = _raw_face_landmarks(face_image, known_face_locations, model)
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return [np.array(face_encoder.compute_face_descriptor(face_image, raw_landmark_set, num_jitters)) for raw_landmark_set in raw_landmarks]
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def compare_faces(known_face_encodings, face_encoding_to_check, tolerance=0.6):
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"""
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Compare a list of face encodings against a candidate encoding to see if they match.
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:param known_face_encodings: A list of known face encodings
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:param face_encoding_to_check: A single face encoding to compare against the list
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:param tolerance: How much distance between faces to consider it a match. Lower is more strict. 0.6 is typical best performance.
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:return: A list of True/False values indicating which known_face_encodings match the face encoding to check
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"""
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return list(face_distance(known_face_encodings, face_encoding_to_check) <= tolerance)
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