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Efficient Text-to-Video Generation with Grid Diffusion Models


Temel Kavramlar
Our novel grid diffusion models efficiently generate high-quality videos from text by reducing the temporal dimension of videos to the image dimension, enabling the use of various image-based methods for video tasks.
Özet
The authors propose a simple but effective novel approach for text-to-video generation using grid diffusion models. The model consists of two main stages: (1) key grid image generation and (2) autoregressive grid image interpolation. In the first stage, the key grid image generation model generates a key grid image that represents the video from the given text. The key grid image consists of four inside frames that capture the primary motions or events of the video. The authors fine-tune a pre-trained text-to-image model (Stable Diffusion) to generate the key grid image. In the second stage, the autoregressive grid image interpolation model generates the output grid image conditioned on the previously generated grid image and the masked input grid image. This approach allows the model to maintain temporal consistency and generate videos with more than 28 frames. The authors also explore extensions of their method, such as text-guided video manipulation and high-resolution video generation. Experimental results show that the proposed model outperforms existing text-to-video generation models in both quantitative and qualitative evaluations, while being more efficient in terms of GPU memory usage and requiring less training data.
İstatistikler
Our model can generate high-quality videos with a fixed amount of GPU memory regardless of the number of frames. Our model outperforms existing text-to-video models on MSR-VTT, UCF-101, and CGcaption datasets in CLIPSIM and FVD metrics, despite using a much smaller training dataset.
Alıntılar
"Unlike the existing video generation paradigm, we propose novel grid diffusion models that reduce the high dimensionality of videos to that of images, allowing for high-quality video generation without substantial GPU memory costs and a large paired dataset." "Since we represent a video as a grid image, our model can be applied to various applications with image-based models, such as video manipulation from using image manipulation."

Önemli Bilgiler Şuradan Elde Edildi

by Taegyeong Le... : arxiv.org 04-02-2024

https://arxiv.org/pdf/2404.00234.pdf
Grid Diffusion Models for Text-to-Video Generation

Daha Derin Sorular

How can the grid diffusion approach be extended to generate videos with higher resolutions and frame rates?

The grid diffusion approach can be extended to generate videos with higher resolutions and frame rates by leveraging advanced text-to-image models capable of producing high-resolution images. By incorporating models like SD-XL, which can generate images with resolutions up to 1024x1024, the grid diffusion method can be adapted to create videos with increased clarity and detail. Additionally, by optimizing the interpolation process and enhancing the autoregressive generation models, the grid diffusion approach can effectively handle the generation of videos with higher frame rates, ensuring smooth and realistic motion in the generated content.

What are the potential limitations or drawbacks of representing videos as grid images, and how can they be addressed?

One potential limitation of representing videos as grid images is the loss of temporal information and continuity between frames, especially in complex or dynamic scenes. This can lead to challenges in maintaining seamless transitions and coherence in the generated videos. To address this limitation, techniques such as incorporating more sophisticated interpolation methods, utilizing motion prediction algorithms, or introducing temporal consistency constraints during the generation process can help mitigate the loss of temporal information. Additionally, optimizing the key grid image generation process and refining the autoregressive interpolation models can enhance the overall quality and consistency of the generated videos.

Could the grid diffusion approach be applied to other video generation tasks, such as video synthesis from audio or video-to-video translation?

Yes, the grid diffusion approach can be applied to various other video generation tasks beyond text-to-video generation. For video synthesis from audio, the grid diffusion method can be adapted to generate visual content based on audio inputs by associating audio features with corresponding image elements in the grid. This can enable the creation of music videos, sound-driven animations, or audio-visual storytelling. Similarly, for video-to-video translation tasks, the grid diffusion approach can be utilized to transform videos from one style or format to another while maintaining visual consistency and coherence. By conditioning the grid image generation on specific video attributes or characteristics, the method can facilitate seamless video transformations and adaptations.
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