This is the official Pytorch implementation of FocalNets:
"Focal Modulation Networks" by Jianwei Yang, Chunyuan Li, Xiyang Dai, Lu Yuan and Jianfeng Gao.
We propose FocalNets: Focal Modulation Networks, an attention-free architecture that achieves superior performance than SoTA self-attention (SA) methods across various vision benchmarks. SA is an first interaction, last aggregation (FILA) process as shown above. Our Focal Modulation inverts the process by first aggregating, last interaction (FALI). This inversion brings several merits:
Before getting started, see what our FocalNets have learned to perceive images and where to modulate!
Finally, FocalNets are built with convolutional and linear layers, but goes beyond by proposing a new modulation mechanism that is simple, generic, effective and efficient. We hereby recommend:
Focal-Modulation May be What We Need for Visual Modeling!
NOTE: We reorder the class names in imagenet-22k so that we can directly use the first 1k logits for evaluating on imagenet-1k. We remind that the 851th class (label=850) in imagenet-1k is missed in imagenet-22k. Please refer to this labelmap. More discussion found in this issue.
Backbone Kernels Lr Schd #Params. (M) FLOPs (G) box mAP mask mAP Download FocalNet-T [9,11] 1x 48.6 267 45.9 41.3 ckpt/config/log FocalNet-T [9,11] 3x 48.6 267 47.6 42.6 ckpt/config/log FocalNet-T [9,11,13] 1x 48.8 268 46.1 41.5 ckpt/config/log FocalNet-T [9,11,13] 3x 48.8 268 48.0 42.9 ckpt/config/log FocalNet-S [9,11] 1x 70.8 356 48.0 42.7 ckpt/config/log FocalNet-S [9,11] 3x 70.8 356 48.9 43.6 ckpt/config/log FocalNet-S [9,11,13] 1x 72.3 365 48.3 43.1 ckpt/config/log FocalNet-S [9,11,13] 3x 72.3 365 49.3 43.8 ckpt/config/log FocalNet-B [9,11] 1x 109.4 496 48.8 43.3 ckpt/config/log FocalNet-B [9,11] 3x 109.4 496 49.6 44.1 ckpt/config/log FocalNet-B [9,11,13] 1x 111.4 507 49.0 43.5 ckpt/config/log FocalNet-B [9,11,13] 3x 111.4 507 49.8 44.1 ckpt/config/logThere are three steps in our FocalNets:
We visualize them one by one.
Yellow colors represent higher values. Apparently, FocalNets learn to gather more local context at earlier stages while more global context at later stages.
From left to right, the images are input image, gating map for focal level 1,2,3 and the global context. Clearly, our model has learned where to gather the context depending on the visual contents at different locations.
The modulator derived from our model automatically learns to focus on the foreground regions.
For visualization by your own, please refer to visualization notebook.
If you find this repo useful to your project, please consider to cite it with following bib:
@misc{yang2022focal,
title={Focal Modulation Networks},
author={Jianwei Yang and Chunyuan Li and Xiyang Dai and Jianfeng Gao},
journal={Advances in Neural Information Processing Systems (NeurIPS)},
year={2022}
}
Our codebase is built based on Swin Transformer and Focal Transformer. To achieve the SoTA object detection performance, we heavily rely on the most advanced method DINO and the advices from the authors. We thank the authors for the nicely organized code!
This project welcomes contributions and suggestions. Most contributions require you to agree to a Contributor License Agreement (CLA) declaring that you have the right to, and actually do, grant us the rights to use your contribution. For details, visit https://cla.opensource.microsoft.com.
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