segment-anything-model
Segment Anything Model (SAM)
Comprehensive guide to using Meta AI's Segment Anything Model for zero-shot image segmentation.
When to use SAM
Use SAM when:
- Need to segment any object in images without task-specific training
- Building interactive annotation tools with point/box prompts
- Generating training data for other vision models
- Need zero-shot transfer to new image domains
- Building object detection/segmentation pipelines
- Processing medical, satellite, or domain-specific images
Key features:
- Zero-shot segmentation: Works on any image domain without fine-tuning
- Flexible prompts: Points, bounding boxes, or previous masks
- Automatic segmentation: Generate all object masks automatically
- High quality: Trained on 1.1 billion masks from 11 million images
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