This project is no longer maintained. Consider using ImageNet training in PyTorch instead.
This implements training of residual networks from Deep Residual Learning for Image Recognition by Kaiming He, et. al.
We wrote a more verbose blog post discussing this code, and ResNets in general here.
See the installation instructions for a step-by-step guide.
- Install Torch on a machine with CUDA GPU
- Install cuDNN v4 or v5 and the Torch cuDNN bindings
- Download the ImageNet dataset and move validation images to labeled subfolders
If you already have Torch installed, update nn
, cunn
, and cudnn
.
See the training recipes for addition examples.
The training scripts come with several options, which can be listed with the --help
flag.
th main.lua --help
To run the training, simply run main.lua. By default, the script runs ResNet-34 on ImageNet with 1 GPU and 2 data-loader threads.
th main.lua -data [imagenet-folder with train and val folders]
To train ResNet-50 on 4 GPUs:
th main.lua -depth 50 -batchSize 256 -nGPU 4 -nThreads 8 -shareGradInput true -data [imagenet-folder]
Trained ResNet 18, 34, 50, 101, 152, and 200 models are available for download. We include instructions for using a custom dataset, classifying an image and getting the model's top5 predictions, and for extracting image features using a pre-trained model.
The trained models achieve better error rates than the original ResNet models.
Network | Top-1 error | Top-5 error |
---|---|---|
ResNet-18 | 30.43 | 10.76 |
ResNet-34 | 26.73 | 8.74 |
ResNet-50 | 24.01 | 7.02 |
ResNet-101 | 22.44 | 6.21 |
ResNet-152 | 22.16 | 6.16 |
ResNet-200 | 21.66 | 5.79 |
This implementation differs from the ResNet paper in a few ways:
Scale augmentation: We use the scale and aspect ratio augmentation from Going Deeper with Convolutions, instead of scale augmentation used in the ResNet paper. We find this gives a better validation error.
Color augmentation: We use the photometric distortions from Andrew Howard in addition to the AlexNet-style color augmentation used in the ResNet paper.
Weight decay: We apply weight decay to all weights and biases instead of just the weights of the convolution layers.
Strided convolution: When using the bottleneck architecture, we use stride 2 in the 3x3 convolution, instead of the first 1x1 convolution.