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Tools for annotating and developing ML models for benthic imagery

Project description

CoralNet-Toolbox 🪸🧰

CoralNet-Toolbox

AI-Powered Annotation for Coral Reef Analysis. An unofficial toolkit to supercharge your CoralNet workflows.

Python Version Version GitHub last commit Downloads

PyPI Passing Windows macOS Ubuntu

⚡ Get Started

1. Create Conda Environment (Recommended)

# Create and activate custom environment
conda create --name coralnet10 python=3.10 -y
conda activate coralnet10

2. Install

# Use UV for the fastest installation
pip install uv
uv pip install coralnet-toolbox

3. Launch

coralnet-toolbox

4. (Optional) GPU Acceleration For full acceleration, install PyTorch with CUDA support.

# Example for CUDA 12.9; use your version of CUDA
uv pip install torch torchvision --index-url https://download.pytorch.org/whl/cu129

See the Installation Guide for details on other versions.

Fallback: If UV fails, use regular pip: pip install coralnet-toolbox

🎯 GPU Status Indicators

  • 🐢 CPU only
  • 🐇 Single GPU
  • 🚀 Multiple GPUs
  • 🍎 Mac Metal (Apple Silicon)

Click the icon in the bottom-left to see available devices

🔄 Upgrading

# When updates are available
uv pip install -U coralnet-toolbox==[latest_version]

📚 Resources & Advanced Details

📺 Watch the Demo Videos

Video Tutorial Series

🎬 Complete playlist covering all major features and workflows

From Bottleneck to Pipeline

Traditional benthic imagery analysis is time-consuming. Manual annotation, data management, and model training are often separate, complex tasks. CoralNet-Toolbox unifies this process, turning a research bottleneck into an integrated, AI-accelerated pipeline.

📝 Core Annotation Tools

Patch Annotation
🎯 Patch Annotation
Rectangle Annotation
📐 Rectangle Annotation
Polygon Annotation
🔷 Multi-Polygon Annotation

🤖 AI-Powered Analysis

Classification
🧠 Image Classification
Object Detection
🎯 Object Detection
Instance Segmentation
🎭 Instance Segmentation

🔬 Advanced Capabilities

SAM
🪸 Segment Anything (SAM)
Polygon Classification
🔍 Polygon Classification
Work Areas
📍 Region-based Detection

✂️ Editing & Processing Tools

Cut Tool
✂️ Cut
Combine Tool
🔗 Combine
Simplify Tool
🎨 Simplify

🌊 Success Stories

Using CoralNet-Toolbox in your research?

We'd love to feature your work! Share your success stories to help others learn and get inspired.


🏗️ Repository Structure


🌍 About CoralNet

Coral reefs are among Earth's most biodiverse ecosystems, supporting marine life and coastal communities worldwide. However, they face unprecedented threats from climate change, pollution, and human activities.

CoralNet is a revolutionary platform enabling researchers to:

  • Upload and analyze coral reef photographs
  • Create detailed species annotations
  • Build AI-powered classification models
  • Collaborate with the global research community

The CoralNet-Toolbox extends this mission by providing advanced AI tools that accelerate research and improve annotation quality.


📄 Citation

If you use CoralNet-Toolbox in your research, please cite:

@misc{CoralNet-Toolbox,
  author = {Pierce, Jordan and Battista, Tim and Kuester, Falko},
  title = {CoralNet-Toolbox: Tools for Annotating and Developing Machine Learning Models for Benthic Imagery},
  year = {2025},
  howpublished = {\url{https://github.com/Jordan-Pierce/CoralNet-Toolbox}},
  note = {GitHub repository}
}

⚖️ Legal & Licensing

⚠️ Disclaimer

This is a scientific product and not official communication of NOAA or the US Department of Commerce. All code is provided 'as is' - users assume responsibility for its use.

📋 License

Software created by US Government employees is not subject to copyright in the United States (17 U.S.C. §105). The Department of Commerce reserves rights to seek copyright protection in other countries.


Empowering researchers • Protecting ecosystems • Advancing science

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