

Dynamicrafter 1024
Overview :
DynamiCrafter is a text-to-video model capable of generating approximately 2-second dynamic videos based on input images and text. This model, trained to generate 576x1024 resolution videos, excels at capturing the dynamic effects of both input images and text descriptions, producing realistic short video content. Suitable for video production, animation creation, and other video generation scenarios, DynamiCrafter serves as a powerful productivity tool for content creators. The model is currently in the research stage and is available for personal and research use only.
Target Users :
Video production, animation creation, content creation
Use Cases
Generate a dynamic video of leaves swaying in the wind from a landscape photo and the text description 'gentle breeze'
Generate a dynamic video of a car driving on a highway from a car image and the description 'fast driving'
Generate a dynamic video of a person dancing from a person photo and the description 'graceful dance'
Features
Generate dynamic videos from images and text
Generate high-definition videos with a resolution of up to 576x1024
Capture the dynamic effects of input images and text
Support various video generation scenarios
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