State of the Art Machine Learning for Classifying Vegetation

Making Machine Learning Accessible to Ecologists Around the World!

Developed for use in mining, natural resource management, carbon, and biodiversity markets, TytonAI empowers ecologists around the world to utilise machine learning for better environmental outcomes.
Accurately and economically detect individual plants across entire landscapes for rehabilitation and vegetation condition monitoring, whole-of-site weed detection, targeted species searches, and carbon quantification monitoring in diverse systems.

Easily Classify Vegetation

TytonAI is a web-based platform and toolset built specifically for the unique challenge of classifying vegetation and landscape elements, including trees, shrubs, grasses, herbs, individual species of interest, and erosion features.

Built on Billions of Pixels of Training Data

Powered by extensively trained “megamodels,” TytonAI makes using Machine Learning simple.

Use our mega-models, select from our ever-growing library of species-specific signatures, or easily develop your own signatures using our suite of in-built tools and be rewarded for contributing them to our community library.

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Leverage Your Data for Better Environmental Outcomes

Perform one-time classifications, time series analyses, and seamlessly export to TytonEIS for advanced analytics, detecting trends, identifying risks, and reporting to stakeholders.

Register your interest in Tyton AI

The TytonAI process

Step 1

Capture aerial data.

Step 2

Complete ground truthing survey.

Step 3

Use TytonAI to automatically classify lifeforms, and target genera/species. Perform accuracy assessment.

Step 4

Generate key metrics / measurements and data analysis.

Step 5

Make data and reporting available to client.

See How Tyton AI and Tyton EIS Work Together

Tyton AI and EIS work together by delivering an advanced whole-of-site study that provides valuable insights into ecological function, and informs ongoing decision-making to enable organisations to successfully monitor and care for the environment.

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