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Using Tensorflow to implement a ResNet50 for Cross-Age Face Recognition

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Cross-Age Face Recognition Using ResNet50 (unfinished)

Trainable ResNet50 using Python3.5 + Tensorflow
DataSet: Cross-Age Celebrity Dataset(CACD)

Training Part

  1. Run TrainResNet.py
  2. Label and Image Name are loaded from "./label/label_1200.npy" and "./label/name_1200.npy"
  3. Label is range from [1, LABELSNUM]
  4. Set data_path to be None, if it is the frist time you Train. and set create_npy of load_all_image(nameList, h, w, c, parentPath, create_npy = False) to be True.
  5. Set model_path to be None, if you train a network from scratch.
  6. All trained model will be saved in ./model/XXX

Extract Feature Part

  1. Run TestResNet.py
  2. Set data_path to be the model you use.
  3. The feature will be saved as .mat
  4. The "./label/label.npy" and "./label/name.npy" contain all 160,000+ images from 2000 identities.
  5. LABELSNUM should be the same as training part, otherwise the Network cannot be correctly initialized.

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Using Tensorflow to implement a ResNet50 for Cross-Age Face Recognition

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