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We have recently merged Video-LLaVA to @huggingface transformers! 🤗 | |
🎞️ What makes this model different? keep reading ⇊ | |
![video](video_1.mp4) | |
[Demo](https://t.co/MVP14uEj9e) | [Model](https://t.co/oqSCMUqwJo) | |
See below how to initialize the model and processor and infer ⬇️ | |
![image_1](image_1.jpg) | |
Compared to other models that take image and video input and either project them separately or downsampling video and projecting selected frames, Video-LLaVA is converting images and videos to unified representation and project them using a shared projection layer. | |
![image_2](image_2.jpg) | |
It uses Vicuna 1.5 as the language model and LanguageBind's own encoders that's based on OpenCLIP, these encoders project the modalities to an unified representation before passing to projection layer. | |
![image_3](image_3.jpg) | |
I feel like one of the coolest features of this model is the joint understanding which is also introduced recently with many models it's a relatively older model but ahead of it's time and works very well! | |
![image_4](image_4.jpg) | |
> [!TIP] | |
Ressources: | |
[Video-LLaVA: Learning United Visual Representation by Alignment Before Projection](https://arxiv.org/abs/2311.10122) | |
by Bin Lin, Yang Ye, Bin Zhu, Jiaxi Cui, Munan Ning, Peng Jin, Li Yuan (2023) | |
[GitHub](https://github.com/PKU-YuanGroup/Video-LLaVA) | |
[Hugging Face documentation](https://huggingface.co/docs/transformers/main/en/model_doc/video_llava) | |
> [!NOTE] | |
[Original tweet](https://x.com/mervenoyann/status/1816427325073842539) (July 25, 2024) |