Ejemplo n.º 1
0
 def generate_training_set(self, model='+'):
     if model == '+':
         model_path = 'models/training_data_positive.clf'
     else:
         model_path = 'models/training_data_negative.clf'
     if self.paths is None or len(self.paths) < 10:
         error = QErrorMessage()
         error.setWindowTitle('Error')
         error.showMessage('Select atleast 10 images')
         error.exec_()
     else:
         utils = IU()
         self.status.setText('Generating training data...')
         encodings = list()
         for image_path in self.paths:
             image = cv2.imread(image_path)
             locs = utils.get_face_locations(image=image)
             for (sX, sY, eX, eY) in locs:
                 face = cv2.resize(image[sY:eY, sX:eX], (200, 200))
                 encoding = utils.face_encodings(face, model='128D',
                                                 jitters=10)
                 if len(encoding) == 0:
                     print('Bad image')
                     continue
                 else:
                     encodings.append(encoding[0])
         with open(model_path, 'wb') as file:
             pickle.dump(encodings, file)
         self.status.setText('Done!')
    def predict(self, image_path, threshold=0.85):
        utils = IU()
        model = load_model('models/predictor_NN_model.h5')
        image = cv2.imread(image_path)
        locs = utils.get_face_locations(image=image,
                                        model=self.face_model,
                                        scaleup=self.upsample)
        encodings = list()
        for (sX, sY, eX, eY) in locs:
            face = cv2.resize(image[sY:eY, sX:eX], (160, 160))
            encoding = utils.face_encodings(face,
                                            model=self.encoding_model,
                                            jitters=self.jitters)
            if len(encoding) == 0:
                continue
            else:
                encodings.append(encoding[0])
        if len(encodings) == 0:
            return False
        data = np.vstack(encodings)
        predictions = model.predict(data)
        for prediction in predictions:
            if prediction[0] > threshold:
                return True

        return False
 def generate_training_set(self):
     if self.paths is None or len(self.paths) < 10:
         error = QErrorMessage()
         error.showMessage('Select atleast 10 images')
         error.exec_()
     else:
         utils = IU()
         self.status.setText('Generating training data...')
         encodings = list()
         for image_path in self.paths:
             image = cv2.imread(image_path)
             (sX, sY, eX, eY) = utils.get_face_locations(image=image)[0]
             face = cv2.resize(image[sY:eY, sX:eX], (200, 200))
             face = face[:, :, ::-1]
             encoding = FR.face_encodings(face,
                                          num_jitters=10,
                                          known_face_locations=[(sX, sY, eX, eY)])
             if len(encoding) == 0:
                 pass
             else:
                 encodings.append(encoding[0])
         with open('models/training_data.clf', 'wb') as file:
             pickle.dump(encodings, file)
         self.status.setText('Done!')
Ejemplo n.º 4
0
class SVMSorter(object):

    def __init__(self):
        self.folder = None
        self.utils = IU()
        self.face_model = 'hog'
        self.encoding_model = '128D'
        self.jitters = 3
        self.upsample = 1

    def set_folder(self, folder):
        self.folder = folder

    def set_params(self, model, encoding, jitters, upsample):
        self.face_model = model
        self.encoding_model = encoding
        self.jitters = jitters
        self.upsample = upsample

    def train(self):
        X = []
        y = []
        model_save_path = "models/predictor_svm_model.clf"
        with open('models/training_data.clf', 'rb') as file:
            X = pickle.load(file)
        for i in range(len(X)):
            y.append('search_face')
        svm_clf = svm.OneClassSVM()
        svm_clf.fit(X, y)
        if model_save_path is not None:
            with open(model_save_path, 'wb') as file:
                pickle.dump(svm_clf, file)
        return svm_clf

    def predict(self, image_path, svm_clf=None, threshold=0.006):
        model_path = "models/predictor_svm_model.clf"
        if threshold > 0:
            threshold *= -1
        if not os.path.isfile(image_path):
            raise Exception("Invalid image path: {}".format(X_img_path))
        if svm_clf is None and model_path is None:
            raise Exception("Must supply svm classifier either through svm_clf or model_path")
        if svm_clf is None:
            with open(model_path, 'rb') as f:
                svm_clf = pickle.load(f)
        X_img = cv2.imread(image_path)
        X_face_locations = self.utils.get_face_locations(image=X_img,
                                                         model=self.face_model,
                                                         scaleup=self.upsample)
        if len(X_face_locations) == 0:
            return False
        faces_encodings = list()
        for (x, y, a, b) in X_face_locations:
            face = X_img[y:b, x:a]
            encode = self.utils.face_encodings(face,
                                               model=self.encoding_model,
                                               jitters=self.jitters)
            faces_encodings.append(encode[0])
        distances = svm_clf.decision_function(faces_encodings)
        for distance in distances:
            if distance < threshold or distance > 0:
                return True
        return False

    def get_image_list(self):
        images_list = list()
        try:
            for path in os.listdir(self.folder):
                if re.match('.*\.(jpg|png)', path.lower()):
                    images_list.append(os.path.join(self.folder, path))
        except:
            print("Error - folder or file path is invalid")
            sys.exit(0)
        images_list.sort()
        return images_list
Ejemplo n.º 5
0
class EuclideanSorter(object):

    def __init__(self):
        self.utils = IU()
        self.folder = None
        self.face_model = 'hog'
        self.encoding_model = '128D'
        self.jitters = 3
        self.upsample = 1

    def set_folder(self, folder):
        self.folder = folder

    def set_params(self, model, encoding, jitters, upsample):
        self.face_model = model
        self.encoding_model = encoding
        self.jitters = jitters
        self.upsample = upsample

    def train(self):
        model_save_path = "models/predictor_euclidean_model.clf"
        with open('models/training_data.clf', 'rb') as file:
            encodings = pickle.load(file)
        encodings = np.array(encodings)
        mean_encoding = encodings.mean(axis=0)
        if model_save_path is not None:
            with open(model_save_path, 'wb') as file:
                pickle.dump(mean_encoding, file)
        return mean_encoding

    def predict(self, image_path, threshold=1.2):
        model_path = "models/predictor_euclidean_model.clf"
        model_encoding = None
        if not os.path.isfile(image_path):
            raise Exception("Invalid image path: {}".format(image_path))
        if model_encoding is None and model_path is None:
            raise Exception("Must supply svm classifier either through svm_clf or model_path")
        if model_encoding is None:
            with open(model_path, 'rb') as f:
                model_encoding = pickle.load(f)
        image = cv2.imread(image_path)
        locs = self.utils.get_face_locations(image=image,
                                             model=self.face_model,
                                             scaleup=self.upsample)
        if len(locs) == 0:
            return False
        faces_encodings = list()
        for (x, y, a, b) in locs:
            face = image[y:b, x:a]
            encode = self.utils.face_encodings(face,
                                               model=self.encoding_model,
                                               jitters=self.jitters)
            faces_encodings.append(encode[0])
        results = self.utils.compare_faces(faces_encodings,
                                           model_encoding,
                                           tolerance=threshold)
        if True in results:
            return True
        else:
            return False

    def get_image_list(self):
        images_list = list()
        try:
            for path in os.listdir(self.folder):
                if re.match('.*\.(jpg|png)', path.lower()):
                    images_list.append(os.path.join(self.folder, path))
        except:
            print("Error - folder or file path is invalid")
            sys.exit(0)
        images_list.sort()
        return images_list
Ejemplo n.º 6
0
class KNNSorter(object):

    def __init__(self):
        self.folder = None
        self.utils = IU()
        self.face_model = 'hog'
        self.encoding_model = '128D'
        self.jitters = 3
        self.upsample = 1

    def set_folder(self, folder):
        self.folder = folder

    def set_params(self, model, encoding, jitters, upsample):
        self.face_model = model
        self.encoding_model = encoding
        self.jitters = jitters
        self.upsample = upsample

    def train(self, n_neighbors=None, knn_algo='ball_tree'):
        X = []
        y = []
        model_save_path = "models/predictor_knn_model.clf"
        with open('models/training_data.clf', 'rb') as file:
            X = pickle.load(file)
        for i in range(len(X)):
            y.append('search_face')
        if n_neighbors is None:
            n_neighbors = int(round(math.sqrt(len(X))))
        knn_clf = neighbors.KNeighborsClassifier(n_neighbors=n_neighbors,
                                                 algorithm=knn_algo,
                                                 weights='distance')
        knn_clf.fit(X, y)
        if model_save_path is not None:
            with open(model_save_path, 'wb') as f:
                pickle.dump(knn_clf, f)
        return knn_clf

    def predict(self, image_path, knn_clf=None, threshold=0.6):
        model_path = "models/predictor_knn_model.clf"
        if not os.path.isfile(image_path):
            raise Exception("Invalid image path: {}".format(X_img_path))
        if knn_clf is None and model_path is None:
            raise Exception("Must supply knn classifier either through knn_clf or model_path")
        if knn_clf is None:
            with open(model_path, 'rb') as f:
                knn_clf = pickle.load(f)
        X_img = cv2.imread(image_path)
        X_face_locations = self.utils.get_face_locations(image=X_img,
                                                         model=self.face_model,
                                                         scaleup=self.upsample)
        if len(X_face_locations) == 0:
            return []
        faces_encodings = list()
        for (x, y, a, b) in X_face_locations:
            face = X_img[y:b, x:a]
            encode = self.utils.face_encodings(face,
                                               model=self.encoding_model,
                                               jitters=self.jitters)
            faces_encodings.append(encode[0])
        closest_distances = knn_clf.kneighbors(faces_encodings, n_neighbors=1)
        are_matches = [closest_distances[0][i][0] <= threshold for i in range(len(X_face_locations))]
        return [(pred, loc) if rec else ("unknown", loc) for pred, loc, rec in zip(knn_clf.predict(faces_encodings), X_face_locations, are_matches)]

    def get_image_list(self):
        images_list = list()
        try:
            for path in os.listdir(self.folder):
                if re.match('.*\.(jpg|png)', path.lower()):
                    images_list.append(os.path.join(self.folder, path))
        except:
            print("Error - folder or file path is invalid")
            sys.exit(0)
        images_list.sort()
        return images_list