HomeCloudSoftwareHardware
  • Overview
  • Release Notes
DepthAI Components
  • Device
  • Pipeline
  • Nodes
  • Messages
  • Bootloader
DepthAI Tutorials
  • Getting Started
  • Manual DepthAI installation
  • Hello World
  • Multi-Device Setup
  • Standalone mode
  • On Device Programming
  • Resolution Techniques for NNs
  • Pipeline Debugging
  • Optimizing FPS & Latency
  • Examples
DepthAI Perception
  • Computer Vision
  • RGB-D
  • Neural Networks
  • Spatial AI
Tools
  • DepthAI Viewer
  • DepthAI Pipeline Graph
ROS
  • DepthAI ROS
  • VIO and SLAM
  • Visualization (Foxglove)
Neural Networks
  • Model ZOO
  • Conversion
  • Integrations
  • Training
  • Post-processing
  • Performance Optimization
  • YOLO models
  • DataDreamer
DepthAI API References
  • Python API
  • C++ API
  • Java API

Neural Networks

This section will describe how you can train, export, and integrate various AI models on our devices. We will show how to measure the performance of a model and possible ways to optimize the performance. Furthermore, we will talk about how to post-process outputs of models.

Model Zoo

Visit our DepthAI Model Zoo to explore a range of pre-trained AI models, optimized for performance on DepthAI devices and suited for various applications.

Conversion

For adapting AI models from frameworks like PyTorch to Luxonis devices, check our Conversion page for easy-to-follow instructions.

Integrations

Explore our Integrations page for guidance on exporting Yolo models and using Roboflow models with our hardware.

Post-processing

Visit the Post-processing page for key steps to refine AI model outputs for use on Luxonis devices.

Performance Optimization

Enhance your AI models' performance on Luxonis devices with helpful tips from our Performance Optimization page.

Training

Learn about Luxonis's training and inference capabilities through our collection of Jupyter notebook tutorials.

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