Classification & generative models on MNIST, implemented by Keras.
Units: accuracy %
Model | Validation | Test | Comment |
---|---|---|---|
Simple MLP | 0.0% | 0.0% | |
Simple convnet | 0.0% | 0.0% | |
VGG-like convnet | 0.0% | 0.0% | |
VGG16 | 99.61% | 99.68% | Batch size: 64, Epoch: 200, Image standardization, Data augmentation: rotating(15), width/height shift(0.1), shearing(0.2), zooming(0.1) |
Mobilenet | 99.63% | 99.68% | Batch size: 64, Epoch: 200, Image standardization, Data augmentation: rotating(15), width/height shift(0.1), shearing(0.2), zooming(0.1) |
Resnet164 | 99.72% | 99.70% | Batch size: 128, Epoch: 200, Image standardization, Data augmentation: rotating(15), width/height shift(0.1), shearing(0.2), zooming(0.1) |
WideResnet28-10 | 99.72% | 99.76% | Batch size: 128, Epoch: 200, Image standardization, Data augmentation: rotating(15), width/height shift(0.1), shearing(0.2), zooming(0.1) |
Model | Sample | Comment |
---|---|---|
GAN | ||
DCGAN | ||
cGAN |