Animate static images into dynamic video with the Lite model. Delivers motion, transitions, and stylistic coherence at lower latency and cost, while preserving source imagery.
Animate static images into dynamic video with the Lite model. Delivers motion, transitions, and stylistic coherence at lower latency and cost, while preserving source imagery.
A video generation model that creates videos from text prompts and images.
Text-to-Video (T2V): Generate videos from text descriptions
Image-to-Video (I2V): Generate videos from static images with optional text prompts
Resolution: Outputs 1080p videos
Wide dynamic range supporting both subtle and large-scale movements
Maintains physical realism and stability across motion sequences
Handles complex action sequences and multi-agent interactions
Native multi-shot video generation with narrative coherence
Maintains consistency in subjects, visual style, and atmosphere across shot transitions
Handles temporal and spatial shifts between scenes
Supports diverse visual styles: photorealism, cyberpunk, illustration, felt texture, and more
Interprets stylistic prompts accurately
Maintains cinematic quality with rich visual details
Parses natural language descriptions effectively
Stable control over camera movements and positioning
Accurate interpretation of complex scene descriptions
Strong prompt adherence across generated content
Model Version: 1.0
Output Resolution: 1080p
Input Types: Text prompts, images (for I2V mode)
Video Length: Multi-shot capable (specific duration limits not specified)
Based on internal benchmarks using SeedVideoBench-1.0 and third-party evaluations:
High scores in prompt adherence
Strong motion quality ratings
Competitive aesthetic quality
Effective source image consistency in I2V tasks
Creative video content generation
Prototype development for film and animation
Commercial video production
Educational and documentary content
Fantasy and surreal video creation
Performance metrics based on specific benchmark datasets
Actual generation quality may vary with prompt complexity
Multi-shot consistency depends on prompt clarity and scene descriptions
尽在 Atlas Cloud。