Residual Attention Network
Residual Attention Network for Image Classification (CVPR-2017 Spotlight)
By Fei Wang, Mengqing Jiang, Chen Qian, Shuo Yang, Chen Li, Honggang Zhang, Xiaogang Wang, Xiaoou Tang
Introduction
Residual Attention Network is a convolutional neural network using attention mechanism which can incorporate with state-of-the-art feed forward network architecture in an end-to-end training fashion.
Residual Attention Networks are described in the paper "Residual Attention Network for Image Classification"(https://arxiv.org/pdf/1704.06904.pdf).
This repository contains the prototxts of "Residual Attention Network". The trained model will be released soon.
Citation
If you find "Residual Attention Network" useful in your research, please cite:
@article{wang2017residual,
title={Residual Attention Network for Image Classification},
author={Wang, Fei and Jiang, Mengqing and Qian, Chen and Yang, Shuo and Li, Cheng and Zhang, Honggang and Wang, Xiaogang and Tang, Xiaoou},
journal={arXiv preprint arXiv:1704.06904},
year={2017}
}
Models
-
Attention-56 and Attention-92 are based on the pre-activation residual unit.
-
According to the paper, we replace pre-activation residual unit with resnext unit to contruct the AttentionNeXt-56 and AttentionNeXt-92.
Main Performance
- Evaluation on ImageNet validation dataset.
Network | Test Size | top-1 | top-5 |
---|---|---|---|
Attention-56 | 224*224 | 21.76% | 5.9% |
AttentionNeXt-56 | 224*224 | 21.2% | 5.6% |
Attention-92 | 320*320 | 19.5% | 4.8% |
Note
-
We use Caffe ("https://github.com/buptwangfei/caffe") to train our Residual Attention Networks.
-
We follow the implementation of BN layer from "https://github.com/happynear/caffe-windows.git", which merge computations of mean, variance, scale and shift into one layer. We use moving average in the training stage.
-
The scale augmentation and ratio augmentation are used in the training process.
-
The mini-batch of per GPU should be at least 32 images.
-
If you want to train Residual Attention Network, you should use my caffe code and add data augmentation described in the paper. I think it is easy to reproduce the performance on the ImageNet validation dataset.