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sface.py
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sface.py
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# This file is part of OpenCV Zoo project.
# It is subject to the license terms in the LICENSE file found in the same directory.
#
# Copyright (C) 2021, Shenzhen Institute of Artificial Intelligence and Robotics for Society, all rights reserved.
# Third party copyrights are property of their respective owners.
import numpy as np
import cv2 as cv
class SFace:
def __init__(self, modelPath, disType=0, backendId=0, targetId=0):
self._modelPath = modelPath
self._backendId = backendId
self._targetId = targetId
self._model = cv.FaceRecognizerSF.create(
model=self._modelPath,
config="",
backend_id=self._backendId,
target_id=self._targetId)
self._disType = disType # 0: cosine similarity, 1: Norm-L2 distance
assert self._disType in [0, 1], "0: Cosine similarity, 1: norm-L2 distance, others: invalid"
self._threshold_cosine = 0.363
self._threshold_norml2 = 1.128
@property
def name(self):
return self.__class__.__name__
def setBackendAndTarget(self, backendId, targetId):
self._backendId = backendId
self._targetId = targetId
self._model = cv.FaceRecognizerSF.create(
model=self._modelPath,
config="",
backend_id=self._backendId,
target_id=self._targetId)
def _preprocess(self, image, bbox):
if bbox is None:
return image
else:
return self._model.alignCrop(image, bbox)
def infer(self, image, bbox=None):
# Preprocess
inputBlob = self._preprocess(image, bbox)
# Forward
features = self._model.feature(inputBlob)
return features
def match(self, image1, face1, image2, face2):
feature1 = self.infer(image1, face1)
feature2 = self.infer(image2, face2)
if self._disType == 0: # COSINE
cosine_score = self._model.match(feature1, feature2, self._disType)
return cosine_score, 1 if cosine_score >= self._threshold_cosine else 0
else: # NORM_L2
norml2_distance = self._model.match(feature1, feature2, self._disType)
return norml2_distance, 1 if norml2_distance <= self._threshold_norml2 else 0