EfficientViT: Multi-Scale Linear Attention for High-Resolution Dense Prediction [paper]
Efficient vision foundation models for high-resolution generation and perception.
Deep Compression Autoencoder (DC-AE) is a new family of high-spatial compression autoencoders with a spatial compression ratio of up to 128 while maintaining reconstruction quality. It accelerates all latent diffusion models regardless of the diffusion model architecture.
Figure 1: We address the reconstruction accuracy drop of high spatial-compression autoencoders.
Figure 2: DC-AE speeds up latent diffusion models.
Figure 3: DC-AE enables efficient text-to-image generation on the laptop. For more details, please check our text-to-image diffusion model SANA.
- Usage of Deep Compression Autoencoder
- Usage of DC-AE-Diffusion
- Evaluate Deep Compression Autoencoder
- Demo DC-AE-Diffusion Models
- Evaluate DC-AE-Diffusion Models
- Train DC-AE-Diffusion Models
- Reference
EfficientViT-SAM: Accelerated Segment Anything Model Without Accuracy Loss [paper] [online demo] [readme]
EfficientViT-SAM is a new family of accelerated segment anything models by replacing SAM's heavy image encoder with EfficientViT. It delivers a 48.9x measured TensorRT speedup on A100 GPU over SAM-ViT-H without sacrificing accuracy.
- Pretrained EfficientViT-SAM Models
- Usage of EfficientViT-SAM
- Evaluate EfficientViT-SAM
- Visualize EfficientViT-SAM
- Deploy EfficientViT-SAM
- Train EfficientViT-SAM
- Reference
Efficient image classification models with EfficientViT backbones.
- Pretrained EfficientViT Classification Models
- Usage of EfficientViT Classification Models
- Evaluate EfficientViT Classification Models
- Export EfficientViT Classification Models
- Train EfficientViT Classification Models
- Reference
Efficient semantic segmantation models with EfficientViT backbones.
- Pretrained EfficientViT Segmentation Models
- Usage of EfficientViT Segmentation Models
- Evaluate EfficientViT Segmentation Models
- Visualize EfficientViT Segmentation Models
- Export EfficientViT Segmentation Models
- Reference
EfficientViT-GazeSAM [readme]
Gaze-prompted image segmentation models capable of running in real time with TensorRT on an NVIDIA RTX 4070.
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- [2024/10/21] DC-AE and EfficientViT block are used in our latest text-to-image diffusion model SANA! Check the project page for more details.
- [2024/10/15] We released Deep Compression Autoencoder (DC-AE): link!
- [2024/07/10] EfficientViT is used as the backbone in Grounding DINO 1.5 Edge for efficient open-set object detection.
- [2024/07/10] EfficientViT-SAM is used in MedficientSAM, the 1st place model in CVPR 2024 Segment Anything In Medical Images On Laptop Challenge.
- [2024/07/10] An FPGA-based accelerator for EfficientViT: link.
- [2024/04/23] We released the training code of EfficientViT-SAM.
- [2024/04/06] EfficientViT-SAM is accepted by eLVM@CVPR'24.
- [2024/03/19] Online demo of EfficientViT-SAM is available: https://evitsam.hanlab.ai/.
- [2024/02/07] We released EfficientViT-SAM, the first accelerated SAM model that matches/outperforms SAM-ViT-H's zero-shot performance, delivering the SOTA performance-efficiency trade-off.
- [2023/11/20] EfficientViT is available in the NVIDIA Jetson Generative AI Lab.
- [2023/09/12] EfficientViT is highlighted by MIT home page and MIT News.
- [2023/07/18] EfficientViT is accepted by ICCV 2023.
conda create -n efficientvit python=3.10
conda activate efficientvit
pip install -U -r requirements.txt
If EfficientViT or EfficientViT-SAM or DC-AE is useful or relevant to your research, please kindly recognize our contributions by citing our paper:
@inproceedings{cai2023efficientvit,
title={Efficientvit: Lightweight multi-scale attention for high-resolution dense prediction},
author={Cai, Han and Li, Junyan and Hu, Muyan and Gan, Chuang and Han, Song},
booktitle={Proceedings of the IEEE/CVF International Conference on Computer Vision},
pages={17302--17313},
year={2023}
}
@article{zhang2024efficientvit,
title={EfficientViT-SAM: Accelerated Segment Anything Model Without Performance Loss},
author={Zhang, Zhuoyang and Cai, Han and Han, Song},
journal={arXiv preprint arXiv:2402.05008},
year={2024}
}
@article{chen2024deep,
title={Deep Compression Autoencoder for Efficient High-Resolution Diffusion Models},
author={Chen, Junyu and Cai, Han and Chen, Junsong and Xie, Enze and Yang, Shang and Tang, Haotian and Li, Muyang and Lu, Yao and Han, Song},
journal={arXiv preprint arXiv:2410.10733},
year={2024}
}