Skip to content
forked from schollz/find3

High-precision indoor positioning framework, version 3.

License

Notifications You must be signed in to change notification settings

hloeffler/find3

 
 

Repository files navigation

Version 3.0 Version 3.0 Version 3.0 Donate Say Thanks

The Framework for Internal Navigation and Discovery (FIND) is like indoor GPS for your house or business, using only a simple smartphone or laptop.

This version, 3.X, is a complete re-write of the previous versions 2.x.

About the project

This repository is a complete re-write of the previous version of FIND (github.com/schollz/find). There are notable improvements from the previous version:

  • Support for any data source - Bluetooth / WiFi / magnetic fields / etc. (previously just WiFi)
  • Passive scanning built-in (previously required a separate server)
  • Support for Bluetooth scanning in scanning utility (previously just WiFi)
  • Meta-learning with 10 different machine learning classifiers (previously just three)
  • Client uses Websockets+React which reduces bandwidth (and coding complexity)
  • Rolling compression of MAC addresses for much smaller on-disk databases (see stringsizer)
  • Data storage in SQLite-database (previously it was BoltDB)
  • Released under MIT license (more commercially compatible than AGPL)

The API for sending fingerprints (/track and /learn) and MQTT endpoints are backward compatible.

Status

FIND3 is stable and ready for use.

Contributing

FIND3 is a framework with multiple components. There are multiple repositories that have the components, including:

Reporting issues

Please report issues through this repo's issue tracker.

Community

Subscribe to the Slack channel to get latest information about the project and get help.

Use the FIND mailing list for discussion about use and development.

License

MIT

About

High-precision indoor positioning framework, version 3.

Resources

License

Stars

Watchers

Forks

Packages

No packages published

Languages

  • Go 77.9%
  • Python 18.8%
  • Dockerfile 2.2%
  • Other 1.1%