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EPFL and Apple just released 4M-21: single any-to-any model that can do anything from text-to-image generation to generating depth masks! 🙀 Let's unpack 🧶 | |
![image_1](image_1.jpg) | |
4M is a multimodal training [framework](https://t.co/jztLublfSF) introduced by Apple and EPFL. | |
Resulting model takes image and text and output image and text 🤩 | |
[Models](https://t.co/1LC0rAohEl) | [Demo](https://t.co/Ra9qbKcWeY) | |
![video_1](video_1.mp4) | |
This model consists of transformer encoder and decoder, where the key to multimodality lies in input and output data: input and output tokens are decoded to generate bounding boxes, generated image's pixels, captions and more! | |
![image_2](image_2.jpg) | |
This model also learnt to generate canny maps, SAM edges and other things for steerable text-to-image generation 🖼️ | |
The authors only added image-to-all capabilities for the demo, but you can try to use this model for text-to-image generation as well ☺️ | |
![image_3](image_3.jpg) | |
In the project page you can also see the model's text-to-image and steered generation capabilities with model's own outputs as control masks! | |
![video_2](video_2.mp4) | |
> [!TIP] | |
Ressources: | |
[4M-21: An Any-to-Any Vision Model for Tens of Tasks and Modalities](https://arxiv.org/abs/2406.09406) | |
by Roman Bachmann, Oğuzhan Fatih Kar, David Mizrahi, Ali Garjani, Mingfei Gao, David Griffiths, Jiaming Hu, Afshin Dehghan, Amir Zamir (2024) | |
[GitHub](https://github.com/apple/ml-4m/) | |
> [!NOTE] | |
[Original tweet](https://twitter.com/mervenoyann/status/1804138208814309626) (June 21, 2024) |