# built-in dependencies import os # 3rd party dependencies import gdown import numpy as np # project dependencies from deepface.basemodels import VGGFace from deepface.commons import package_utils, folder_utils from deepface.models.Demography import Demography from deepface.commons import logger as log logger = log.get_singletonish_logger() # -------------------------- # pylint: disable=line-too-long # -------------------------- # dependency configurations tf_version = package_utils.get_tf_major_version() if tf_version == 1: from keras.models import Model, Sequential from keras.layers import Convolution2D, Flatten, Activation else: from tensorflow.keras.models import Model, Sequential from tensorflow.keras.layers import Convolution2D, Flatten, Activation # -------------------------- # Labels for the ethnic phenotypes that can be detected by the model. labels = ["asian", "indian", "black", "white", "middle eastern", "latino hispanic"] # pylint: disable=too-few-public-methods class RaceClient(Demography): """ Race model class """ def __init__(self): self.model = load_model() self.model_name = "Race" def predict(self, img: np.ndarray) -> np.ndarray: return self.model.predict(img, verbose=0)[0, :] def load_model( url="https://github.com/serengil/deepface_models/releases/download/v1.0/race_model_single_batch.h5", ) -> Model: """ Construct race model, download its weights and load """ model = VGGFace.base_model() # -------------------------- classes = 6 base_model_output = Sequential() base_model_output = Convolution2D(classes, (1, 1), name="predictions")(model.layers[-4].output) base_model_output = Flatten()(base_model_output) base_model_output = Activation("softmax")(base_model_output) # -------------------------- race_model = Model(inputs=model.input, outputs=base_model_output) # -------------------------- # load weights home = folder_utils.get_deepface_home() if os.path.isfile(home + "/.deepface/weights/race_model_single_batch.h5") != True: logger.info("race_model_single_batch.h5 will be downloaded...") output = home + "/.deepface/weights/race_model_single_batch.h5" gdown.download(url, output, quiet=False) race_model.load_weights(home + "/.deepface/weights/race_model_single_batch.h5") return race_model