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MetaSLAM: Target for General AI & Robotic System

framework

🙋‍♀️ Introduction to MetaSLAM

In an era where automation and robotics are revolutionizing various industries, MetaSLAM stands at the forefront of innovation, driving progress in field robotics and multi-agent systems. Established as a non-profit initiative under the GAIRLAB (General AI & Robotic Lab) led by Prof. Peng Yin at the City University of Hong Kong, MetaSLAM operates as a collective intelligence framework aimed at enhancing the capabilities of robotic systems during large-scale and long-term operations.

🌈 A Global Network of Excellence

A unique feature of MetaSLAM is its international network that brings together top-tier researchers from around the globe, including a strategic partnership with Carnegie Mellon University. By fostering a collaborative ecosystem, MetaSLAM aims to extend the boundaries of what is currently possible in real-world robotic applications.

👩‍💻 Core Capabilities

MetaSLAM specializes in a range of core approaches that represent the cutting edge in the field:

  • Multi-sensor Fusion-based Localization and Navigation: Utilizing a blend of sensors and algorithms, MetaSLAM offers unparalleled accuracy in robotic positioning and navigation.

  • City-scale Crowdsourced Mapping: With capabilities to aggregate and optimize enormous datasets, MetaSLAM enables accurate and real-time map merging across sprawling urban environments.

  • Multi-agent Cooperation and Exploration: Designed for collaborative efficacy, the system allows multiple robotic agents to work in sync for optimized task performance.

  • Lifelong Perception and Navigation: With a focus on long-term operations, MetaSLAM ensures robots can adapt to their environments over time, improving both perception and navigation.

🧙 Step by Step AGI System Developing

  • 🌍 World Model: Learns from physical interactions to understand and predict the environment.
  • 🎬 Action Model: Learns from actions and interactions to perform tasks and navigate.
  • 👁️ Perception Model: Processes sensory inputs to perceive and interpret surroundings.
  • 🧠 Memory Model: Utilizes past experiences to inform current decisions.
  • 🎮 Control Model: Manages control inputs for movement and interaction.

🍿 Empowering Future Research

The ultimate goal of MetaSLAM is to empower researchers and innovators in various domains of field robotics. Its state-of-the-art approaches provide invaluable tools and frameworks that can be customized for a range of applications, from urban planning and disaster recovery to industrial automation and healthcare.

By advancing the capabilities of multi-agent systems and large-scale operations, MetaSLAM is not just setting new benchmarks in robotics; it is shaping the future of how we interact with and leverage robotic technologies in the real world.

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  1. AutoMerge_Docker AutoMerge_Docker Public

    AutoMerge: A Framework for Map Assembling and Smoothing in City-scale Environments

    269 12

  2. Cyber Cyber Public

    Forked from CyberOrigin2077/Cyber

    This repo is designed for General Robotic Operation System

    Python 1

  3. GPR_Competition GPR_Competition Public

    Dataset for MetaSLAM Challenge

    Jupyter Notebook 177 18

  4. GPRS_Survey GPRS_Survey Public

    Benchmark for lidar and visual place recognition

    Python 158 10

  5. AutoMemory_Docker AutoMemory_Docker Public

    BioSLAM: A Bio-inspired Lifelong Localization System

    66 2

  6. Ghostar Ghostar Public

    An integration of MetaSLAM series works

    Shell 64 4

Repositories

Showing 10 of 21 repositories
  • Cyber Public Forked from CyberOrigin2077/Cyber

    This repo is designed for General Robotic Operation System

    MetaSLAM/Cyber’s past year of commit activity
    Python 1 Apache-2.0 19 0 0 Updated Oct 25, 2024
  • .github Public

    Readme file for MetaSLAM

    MetaSLAM/.github’s past year of commit activity
    0 0 0 0 Updated Oct 20, 2024
  • ALITA Public

    ALITA: A Large-scale Incremental Dataset for Long-term Autonomy

    MetaSLAM/ALITA’s past year of commit activity
    Python 95 BSD-3-Clause 4 2 0 Updated Jun 20, 2024
  • metaslam.github.io Public

    metaslam.github.io

    MetaSLAM/metaslam.github.io’s past year of commit activity
    HTML 1 MIT 1 0 0 Updated Jun 7, 2024
  • GPRS_Survey Public

    Benchmark for lidar and visual place recognition

    MetaSLAM/GPRS_Survey’s past year of commit activity
    Python 158 BSD-3-Clause 10 0 0 Updated Apr 26, 2024
  • fabric Public Forked from danielmiessler/fabric

    fabric is an open-source framework for augmenting humans using AI.

    MetaSLAM/fabric’s past year of commit activity
    Python 0 MIT 2,804 0 0 Updated Feb 3, 2024
  • generative_agents Public Forked from joonspk-research/generative_agents

    Generative Agents: Interactive Simulacra of Human Behavior

    MetaSLAM/generative_agents’s past year of commit activity
    0 Apache-2.0 2,357 0 0 Updated Jan 13, 2024
  • SphereVLAD Public

    Offical Code of SphereVLAD and SphereVLAD++

    MetaSLAM/SphereVLAD’s past year of commit activity
    Python 46 BSD-3-Clause 3 0 0 Updated Sep 7, 2023
  • iSimLocServer Public

    iSimLoc: Visual Global Localization for Previously Unseen Environments with Simulated Images

    MetaSLAM/iSimLocServer’s past year of commit activity
    23 GPL-3.0 0 3 0 Updated Jul 25, 2023
  • AutoDriver_Docker Public

    Automatice driver configuration for different robot platforms.

    MetaSLAM/AutoDriver_Docker’s past year of commit activity
    1 BSD-3-Clause 0 0 0 Updated May 22, 2023

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