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?


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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