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Segment Anything Model

Skill Verified Active

Foundation model for image segmentation with zero-shot transfer. Use when you need to segment any object in images using points, boxes, or masks as prompts, or automatically generate all object masks in an image.

Purpose

To enable users to perform zero-shot image segmentation on any object in images using flexible prompts, or to automatically generate all object masks, without requiring task-specific training.

Features

  • Zero-shot image segmentation
  • Flexible prompting (points, boxes, masks)
  • Automatic mask generation
  • Support for multiple model variants (ViT-B/L/H)
  • Clear installation and usage instructions

Use Cases

  • Segmenting any object in images without fine-tuning
  • Building interactive annotation tools
  • Generating training data for computer vision models
  • Processing specialized image domains (medical, satellite)

Non-Goals

  • Real-time object detection with predefined classes (use YOLO/Detectron2)
  • Semantic/panoptic segmentation with categories (use Mask2Former)
  • Text-prompted segmentation (use GroundingDINO + SAM)
  • Video segmentation tasks (use SAM 2)

Installation

npx skills add davila7/claude-code-templates

Runs the Vercel skills CLI (skills.sh) via npx — needs Node.js locally and at least one installed skills-compatible agent (Claude Code, Cursor, Codex, …). Assumes the repo follows the agentskills.io format.

Quality Score

Verified
95 /100
Analyzed about 17 hours ago

Trust Signals

Last commitabout 19 hours ago
Stars27.2k
LicenseMIT
Status
View Source

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