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SaliencyMix

SaliencyMix: A Saliency Guided Data Augmentation Strategy for Better Regularization

CIFAR training and testing code is based on

The ImageNet is based on

Requirements

  • Python3
  • PyTorch (> 1.0)
  • torchvision (> 0.2)
  • NumPy
  • OpenCV-contrib-python (4.2.0.32)

CIFAR

Please use "SaliencyMix_CIFAR" directory

CIFAR 10

-To train ResNet18 on CIFAR10 with SaliencyMix and traditional data augmentation:

CUDA_VISIBLE_DEVICES=0,1 python saliencymix.py \
--dataset cifar10 \
--model resnet18 \
--beta 1.0 \
--salmix_prob 0.5 \
--batch_size 128 \
--data_augmentation \
--learning_rate 0.1

-To train ResNet50 on CIFAR10 with SaliencyMix and traditional data augmentation:

CUDA_VISIBLE_DEVICES=0,1 python saliencymix.py \
--dataset cifar10 \
--model resnet50 \
--beta 1.0 \
--salmix_prob 0.5 \
--batch_size 128 \
--data_augmentation \
--learning_rate 0.1

-To train WideResNet on CIFAR10 with SaliencyMix and traditional data augmentation:

CUDA_VISIBLE_DEVICES=0,1 python saliencymix.py \
--dataset cifar10 \
--model wideresnet \
--beta 1.0 \
--salmix_prob 0.5 \
--batch_size 128 \
--data_augmentation \
--learning_rate 0.1

CIFAR 100

-To train ResNet18 on CIFAR100 with SaliencyMix and traditional data augmentation:

CUDA_VISIBLE_DEVICES=0,1 python saliencymix.py \
--dataset cifar100 \
--model resnet18 \
--beta 1.0 \
--salmix_prob 0.5 \
--batch_size 128 \
--data_augmentation \
--learning_rate 0.1

-To train ResNet50 on CIFAR100 with SaliencyMix and traditional data augmentation:

--dataset cifar100 \
--model resnet50 \
--beta 1.0 \
--salmix_prob 0.5 \
--batch_size 128 \
--data_augmentation \
--learning_rate 0.1

-To train WideResNet on CIFAR100 with SaliencyMix and traditional data augmentation:

CUDA_VISIBLE_DEVICES=0,1 python saliencymix.py \
--dataset cifar100 \
--model wideresnet \
--beta 1.0 \
--salmix_prob 0.5 \
--batch_size 128 \
--data_augmentation \
--learning_rate 0.1

ImageNet

-Please use "SaliencyMix-ImageNet" directory

Train Examples

  • ImageNet with 4 NVIDIA GeForce RTX 2080 Ti GPUs
python train.py \
--net_type resnet \
--dataset imagenet \
--batch_size 256 \
--lr 0.1 \
--depth 50 \
--epochs 300 \
--expname ResNet50 \
-j 40 \
--beta 1.0 \
--salmix_prob 1.0 \
--no-verbose

Test Examples using ImageNet Pretrained models

  • Trained models can be downloaded from here

  • ResNet-50

python test.py \
--net_type resnet \
--dataset imagenet \
--batch_size 64 \
--depth 50 \
--pretrained /runs/ResNet50_SaliencyMix_21.26/model_best.pth.tar
  • ResNet-101
python test.py \
--net_type resnet \
--dataset imagenet \
--batch_size 64 \
--depth 101 \
--pretrained /runs/ResNet101_SaliencyMix_20.09/model_best.pth.tar

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