CVAug 29, 2024

One-Shot Learning Meets Depth Diffusion in Multi-Object Videos

arXiv:2408.16704v11 citationsh-index: 1
Originality Incremental advance
AI Analysis

This addresses a problem for filmmakers and content creators by enabling efficient video generation from minimal data, though it builds incrementally on pre-trained models.

The paper tackles the challenge of generating editable videos of complex multi-object interactions in various artistic styles by introducing a depth-conditioning approach that enables coherent and diverse video creation from a single text-video pair, achieving results across styles like photorealism and animation.

Creating editable videos that depict complex interactions between multiple objects in various artistic styles has long been a challenging task in filmmaking. Progress is often hampered by the scarcity of data sets that contain paired text descriptions and corresponding videos that showcase these interactions. This paper introduces a novel depth-conditioning approach that significantly advances this field by enabling the generation of coherent and diverse videos from just a single text-video pair using a pre-trained depth-aware Text-to-Image (T2I) model. Our method fine-tunes the pre-trained model to capture continuous motion by employing custom-designed spatial and temporal attention mechanisms. During inference, we use the DDIM inversion to provide structural guidance for video generation. This innovative technique allows for continuously controllable depth in videos, facilitating the generation of multiobject interactions while maintaining the concept generation and compositional strengths of the original T2I model across various artistic styles, such as photorealism, animation, and impressionism.

Foundations

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