Stand-Alone Self-Attention in Vision Models
Abstract
Convolutions are a fundamental building block of modern computer vision systems. Recent approaches have argued for going beyond convolutions in order to capture long-range dependencies. These efforts focus on augmenting convolutional models with content-based interactions, such as self-attention and non-local means, to achieve gains on a number of vision tasks. The natural question that arises is whether attention can be a stand-alone primitive for vision models instead of serving as just an augmentation on top of convolutions. In developing and testing a pure self-attention vision model, we verify that self-attention can indeed be an effective stand-alone layer. A simple procedure of replacing all instances of spatial convolutions with a form of self-attention to ResNet-50 produces a fully self-attentional model that outperforms the baseline on ImageNet classification with 12% fewer FLOPS and 29% fewer parameters. On COCO object detection, a fully self-attention model matches the mAP of a baseline RetinaNet while having 39% fewer FLOPS and 34% fewer parameters. Detailed ablation studies demonstrate that self-attention is especially impactful when used in later layers. These results establish that stand-alone self-attention is an important addition to the vision practitioner's toolbox.
Cite
Text
Ramachandran et al. "Stand-Alone Self-Attention in Vision Models." Neural Information Processing Systems, 2019.Markdown
[Ramachandran et al. "Stand-Alone Self-Attention in Vision Models." Neural Information Processing Systems, 2019.](https://mlanthology.org/neurips/2019/ramachandran2019neurips-standalone/)BibTeX
@inproceedings{ramachandran2019neurips-standalone,
title = {{Stand-Alone Self-Attention in Vision Models}},
author = {Ramachandran, Prajit and Parmar, Niki and Vaswani, Ashish and Bello, Irwan and Levskaya, Anselm and Shlens, Jon},
booktitle = {Neural Information Processing Systems},
year = {2019},
pages = {68-80},
url = {https://mlanthology.org/neurips/2019/ramachandran2019neurips-standalone/}
}