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A general implementation of Monte Carlo Localization (MCL) algorithms written in C++17, and a ROS package that can be used in ROS 1 and ROS 2.

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Shows the Beluga logo.

CI pipeline codecov pre-commit License Apache-2.0

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For the latest stable version of our codebase, please refer to the release branch. If you are interested in ongoing development and cutting-edge features, the main branch is the place to be.

🌐 Overview

Beluga is an extensible C++17 library with a ground-up implementation of the Monte Carlo Localization (MCL) family of estimation algorithms featuring:

  • A modular design based on orthogonal components.
  • Emphasis on the prevention of regressions and facilitation of code improvements through test coverage.
  • Semi-automated benchmarks that can be used to validate different configurations.
beluga_andino_demo.mp4

Beluga AMCL running on an Andino robot (Raspberry Pi 4B), go to Ekumen-OS/andino for more details!

📦 Packages

This repository contains the following packages:

Package Description
beluga A ROS-agnostic extensible library to implement algorithms based on particle filters.
beluga_ros A ROS library, providing utilities to interface ROS with Beluga.
beluga_amcl A ROS wrapper, providing an executable node and component (or nodelet).
It provides interface parity with nav2_amcl (and amcl).
beluga_example Example launch files, showing how to run Beluga-based nodes.
beluga_benchmark Scripts to benchmark, profile and also compare Beluga with other MCL implementations.
beluga_system_tests System integration tests for Beluga.

⚙️ First Steps

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A general implementation of Monte Carlo Localization (MCL) algorithms written in C++17, and a ROS package that can be used in ROS 1 and ROS 2.

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  • C++ 84.5%
  • Python 8.0%
  • CMake 3.8%
  • Dockerfile 1.6%
  • Shell 1.2%
  • TeX 0.6%
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