I'm a newbie at deep learning. I started with face recognition example and I found that there are 2 types of model base on data for pre-trained. 1. One-shot learning with siamese network: Which we can use few data for train the model. 2. Convolutional neural network: Need numerous data for train the model.

Could we combine these methods is using one-shot learning with CNN in tensorflow?

2 Answers 2


As my knowledge, CNN needs lots of data for training the model.So we cant implement one shot learning features on CNN


Yes, you can do one-shot learning by using a pre-trained CNN, for instance FaceNet or Vgg2. Using Keras you can easily load these models:

from keras_vggface.vggface import VGGFace
model = VGGFace(model='resnet50', include_top=False,
                    input_shape=(224, 224, 3), pooling='avg')

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