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PyTorch Wildlife: a Collaborative Deep Learning Framework for Conservation.

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A Collaborative Deep Learning Framework for Conservation



✅ Update highlights (Version 1.0.2.13)

  • Added a file separation function. You can now automatically separate your files between animals and non-animals into different folders using our detection_folder_separation function. Please see the Python demo file and Jupyter demo!
  • 🥳 Added Timelapse compatibility! Check the Gradio interface or notebooks.
  • Added Google Colab demos.
  • Added Snapshot Serengeti classification model into the model zoo.
  • Added Classification fine-tuning module.
  • Added a Docker Image for ease of installation.

🔥 Future highlights

  • MegaDetectorV6 with multiple model sizes for both optimized performance and low-budget devices like camera systems.
  • A detection model fine-tuning module to fine-tune your own detection model for Pytorch-Wildlife.
  • Direct LILA connection for more training/validation data.
  • More pretrained detection and classification models to expand the current model zoo.

To check the full version of the roadmap with completed tasks and long term goals, please click here!.

🐾 Introduction

At the core of our mission is the desire to create a harmonious space where conservation scientists from all over the globe can unite. Where they're able to share, grow, use datasets and deep learning architectures for wildlife conservation. We've been inspired by the potential and capabilities of Megadetector, and we deeply value its contributions to the community. As we forge ahead with Pytorch-Wildlife, under which Megadetector now resides, please know that we remain committed to supporting, maintaining, and developing Megadetector, ensuring its continued relevance, expansion, and utility.

Pytorch-Wildlife is pip installable:

pip install PytorchWildlife

To use the newest version of MegaDetector with all the existing functionalities, you can use our Hugging Face interface or simply load the model with Pytorch-Wildlife. The weights will be automatically downloaded:

from PytorchWildlife.models import detection as pw_detection
detection_model = pw_detection.MegaDetectorV5()

For those interested in accessing the previous MegaDetector repository, which utilizes the same MegaDetector v5 model weights and was primarily developed by Dan Morris during his time at Microsoft, please visit the archive directory, or you can visit this forked repository that Dan Morris is actively maintaining.

Tip

If you have any questions regarding MegaDetector and Pytorch-Wildlife, please email us or join us in our discord channel:

👋 Welcome to Pytorch-Wildlife Version 1.0

PyTorch-Wildlife is a platform to create, modify, and share powerful AI conservation models. These models can be used for a variety of applications, including camera trap images, overhead images, underwater images, or bioacoustics. Your engagement with our work is greatly appreciated, and we eagerly await any feedback you may have.

The Pytorch-Wildlife library allows users to directly load the MegaDetector v5 model weights for animal detection. We've fully refactored our codebase, prioritizing ease of use in model deployment and expansion. In addition to MegaDetector v5, Pytorch-Wildlife also accommodates a range of classification weights, such as those derived from the Amazon Rainforest dataset and the Opossum classification dataset. Explore the codebase and functionalities of Pytorch-Wildlife through our interactive HuggingFace web app or local demos and notebooks, designed to showcase the practical applications of our enhancements at PyTorchWildlife. You can find more information in our documentation.

👇 Here is a brief example on how to perform detection and classification on a single image using PyTorch-wildlife

import torch
from PytorchWildlife.models import detection as pw_detection
from PytorchWildlife.models import classification as pw_classification

img = torch.randn((3, 1280, 1280))

# Detection
detection_model = pw_detection.MegaDetectorV5() # Model weights are automatically downloaded.
detection_result = detection_model.single_image_detection(img)

#Classification
classification_model = pw_classification.AI4GAmazonRainforest() # Model weights are automatically downloaded.
classification_results = classification_model.single_image_classification(img)

⚙️ Install Pytorch-Wildlife

pip install PytorchWildlife

Please refer to our installation guide for more installation information.

🕵️ Explore Pytorch-Wildlife and MegaDetector with our Demo User Interface

If you want to directly try Pytorch-Wildlife with the AI models available, including MegaDetector v5, you can use our Gradio interface. This interface allows users to directly load the MegaDetector v5 model weights for animal detection. In addition, Pytorch-Wildlife also has two classification models in our initial version. One is trained from an Amazon Rainforest camera trap dataset and the other from a Galapagos opossum classification dataset (more details of these datasets will be published soon). To start, please follow the installation instructions on how to run the Gradio interface! We also provide multiple Jupyter notebooks for demonstration.

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🛠️ Core Features

What are the core components of Pytorch-Wildlife? Pytorch-core-diagram

🌐 Unified Framework:

Pytorch-Wildlife integrates four pivotal elements:

▪ Machine Learning Models
▪ Pre-trained Weights
▪ Datasets
▪ Utilities

👷 Our work:

In the provided graph, boxes outlined in red represent elements that will be added and remained fixed, while those in blue will be part of our development.

🚀 Inaugural Model:

We're kickstarting with YOLO as our first available model, complemented by pre-trained weights from MegaDetector v5. This is the same MegaDetector v5 model from the previous repository.

📚 Expandable Repository:

As we move forward, our platform will welcome new models and pre-trained weights for camera traps and bioacoustic analysis. We're excited to host contributions from global researchers through a dedicated submission platform.

📊 Datasets from LILA:

Pytorch-Wildlife will also incorporate the vast datasets hosted on LILA, making it a treasure trove for conservation research.

🧰 Versatile Utilities:

Our set of utilities spans from visualization tools to task-specific utilities, many inherited from Megadetector.

💻 User Interface Flexibility:

While we provide a foundational user interface, our platform is designed to inspire. We encourage researchers to craft and share their unique interfaces, and we'll list both existing and new UIs from other collaborators for the community's benefit.

Let's shape the future of wildlife research, together! 🙌

📈 Progress on core tasks

▪️ Packaging
  • Animal detection fine-tuning
  • MegaDetectorV5 integration
  • MegaDetectorV6 integration
  • User submitted weights
  • Animal classification fine-tuning
  • Amazon Rainforest classification
  • Amazon Opossum classification
  • User submitted weights

▪️ Utility Toolkit
  • Visualization tools
  • MegaDetector utils
  • User submitted utils

▪️ Datasets
  • Animal Datasets
  • LILA datasets

▪️ Accessibility
  • Basic user interface for demonstration
  • UI Dev tools
  • List of available UIs

🖼️ Examples

Image detection using MegaDetector v5

animal_det_1
Credits to Universidad de los Andes, Colombia.

Image classification with MegaDetector v5 and AI4GAmazonRainforest

animal_clas_1
Credits to Universidad de los Andes, Colombia.

Opossum ID with MegaDetector v5 and AI4GOpossum

opossum_det
Credits to the Agency for Regulation and Control of Biosecurity and Quarantine for Galápagos (ABG), Ecuador.

🤝 Contributing

This project is open to your ideas and contributions. If you want to submit a pull request, we'll have some guidelines available soon.

We have adopted the Microsoft Open Source Code of Conduct. For more information see the Code of Conduct FAQ or contact us with any additional questions or comments.

License

This repository is licensed with the MIT license.

👥 Existing Collaborators

The extensive collaborative efforts of Megadetector have genuinely inspired us, and we deeply value its significant contributions to the community. As we continue to advance with Pytorch-Wildlife, our commitment to delivering technical support to our existing partners on MegaDetector remains the same.

Here we list a few of the organizations that have used MegaDetector. We're only listing organizations who have given us permission to refer to them here or have posted publicly about their use of MegaDetector.

👉 Full list of organizations

(Newly Added) TerrOïko (OCAPI platform)

Arizona Department of Environmental Quality

Blackbird Environmental

Camelot

Canadian Parks and Wilderness Society (CPAWS) Northern Alberta Chapter

Conservation X Labs

Czech University of Life Sciences Prague

EcoLogic Consultants Ltd.

Estación Biológica de Doñana

Idaho Department of Fish and Game

Island Conservation

Myall Lakes Dingo Project

Point No Point Treaty Council

Ramat Hanadiv Nature Park

SPEA (Portuguese Society for the Study of Birds)

Synthetaic

Taronga Conservation Society

The Nature Conservancy in Wyoming

TrapTagger

Upper Yellowstone Watershed Group

Applied Conservation Macro Ecology Lab, University of Victoria

Banff National Park Resource Conservation, Parks Canada(https://www.pc.gc.ca/en/pn-np/ab/banff/nature/conservation)

Blumstein Lab, UCLA

Borderlands Research Institute, Sul Ross State University

Capitol Reef National Park / Utah Valley University

Center for Biodiversity and Conservation, American Museum of Natural History

Centre for Ecosystem Science, UNSW Sydney

Cross-Cultural Ecology Lab, Macquarie University

DC Cat Count, led by the Humane Rescue Alliance

Department of Fish and Wildlife Sciences, University of Idaho

Department of Wildlife Ecology and Conservation, University of Florida

Ecology and Conservation of Amazonian Vertebrates Research Group, Federal University of Amapá

Gola Forest Programma, Royal Society for the Protection of Birds (RSPB)

Graeme Shannon's Research Group, Bangor University

Hamaarag, The Steinhardt Museum of Natural History, Tel Aviv University

Institut des Science de la Forêt Tempérée (ISFORT), Université du Québec en Outaouais

Lab of Dr. Bilal Habib, the Wildlife Institute of India

Mammal Spatial Ecology and Conservation Lab, Washington State University

McLoughlin Lab in Population Ecology, University of Saskatchewan

National Wildlife Refuge System, Southwest Region, U.S. Fish & Wildlife Service

Northern Great Plains Program, Smithsonian

Quantitative Ecology Lab, University of Washington

Santa Monica Mountains Recreation Area, National Park Service

Seattle Urban Carnivore Project, Woodland Park Zoo

Serra dos Órgãos National Park, ICMBio

Snapshot USA, Smithsonian

Wildlife Coexistence Lab, University of British Columbia

Wildlife Research, Oregon Department of Fish and Wildlife

Wildlife Division, Michigan Department of Natural Resources

Department of Ecology, TU Berlin

Ghost Cat Analytics

Protected Areas Unit, Canadian Wildlife Service

School of Natural Sciences, University of Tasmania (story)

Kenai National Wildlife Refuge, U.S. Fish & Wildlife Service (story)

Australian Wildlife Conservancy (blog, blog)

Felidae Conservation Fund (WildePod platform) (blog post)

Alberta Biodiversity Monitoring Institute (ABMI) (WildTrax platform) (blog post)

Shan Shui Conservation Center (blog post) (translated blog post)

Irvine Ranch Conservancy (story)

Wildlife Protection Solutions (story, story)

Road Ecology Center, University of California, Davis (Wildlife Observer Network platform)

The Nature Conservancy in California (Animl platform)

San Diego Zoo Wildlife Alliance (Animl R package)


Important

If you would like to be added to this list or have any questions regarding MegaDetector and Pytorch-Wildlife, please email us or join us in our Discord channel:

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