I am trying to reproduce the image classification problem cat or dog using tensorflow and transfer learning (Xception model pretrained with imagenet). The code is:
base_model = keras.applications.Xception( weights='imagenet', # image shape = 128x128x3 input_shape=(128, 128, 3), include_top=False) # freeze layers base_model.trainable = False inputs = keras.Input(shape=(128, 128, 3)) x = data_augmentation(inputs) x = tf.keras.applications.xception.preprocess_input(x) x = base_model(x, training=False) x = keras.layers.Flatten()(x) x = keras.layers.Dense(128, activation='relu')(x) outputs = keras.layers.Dense(1, activation='sigmoid')(x) model = keras.Model(inputs, outputs)
I am now trying to make use of models.Sequential. So far my code looks like this:
theModel=models.Sequential([ tf.keras.Input(shape=(128, 128, 3)), tf.keras.applications.xception.preprocess_input(), <-------- how to pass tensor as argument? base_model, Flatten(), Dense(128, activation='relu'), Dense(1,activation='sigmoid') ])
My question, is there a way to make use of models.Sequentials, defining everything as I've done but passing the tensor as argument like in the first code snipped?
Thanks in advance,