Comprehensive collision avoidance Tools for Every Need

Get access to collision avoidance solutions that address multiple requirements. One-stop resources for streamlined workflows.

collision avoidance

  • An open-source Python simulation environment for training cooperative drone swarm control with multi-agent reinforcement learning.
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    What is Multi-Agent Drone Environment?
    Multi-Agent Drone Environment is a Python package offering a customizable multi-agent simulation for UAV swarms, built on OpenAI Gym and PyBullet. Users define multiple drone agents with kinematic and dynamic models to explore cooperative tasks such as formation flying, target tracking, and obstacle avoidance. The environment supports modular task configuration, realistic collision detection, and sensor emulation, while allowing custom reward functions and decentralized policies. Developers can integrate their own reinforcement learning algorithms, evaluate performance under varied scenarios, and visualize agent trajectories and metrics in real time. Its open-source design encourages community contributions, making it ideal for research, teaching, and prototyping advanced multi-agent control solutions.
  • NavGround is an open-source 2D navigation framework providing reactive AI motion planning and obstacle avoidance for differential drive robots.
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    What is NavGround?
    NavGround is a comprehensive AI-driven navigation framework that delivers reactive motion planning, obstacle avoidance, and trajectory generation for differential drive and holonomic robots in 2D environments. It integrates dynamic map representations and sensor fusion to detect static and moving obstacles, applying velocity obstacle methods to compute collision-free velocities adhering to robot kinematics and dynamics. The lightweight C++ library offers a modular API with ROS support, enabling seamless integration with SLAM systems, path planners, and control loops. NavGround’s real-time performance and on-the-fly adaptability make it suitable for service robots, autonomous vehicles, and research prototypes operating in cluttered or dynamic scenarios. The framework’s customizable cost functions and extensible architecture facilitate rapid experimentation and optimization of navigation behaviors.
  • Waymo provides autonomous vehicle technology for safe self-driving options.
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    What is Waymo?
    Waymo's AI system powers its self-driving vehicles by utilizing a combination of sensors, advanced algorithms, and machine learning. The technology autonomously navigates complex urban environments, avoiding obstacles and following traffic laws without any human input. Waymo's goal is to create safer roads and provide convenient transportation options for everyone. The platform uses real-time data from its fleet to continuously improve driving performance and safety.
  • Efficient Prioritized Heuristics MAPF (ePH-MAPF) quickly computes collision-free multi-agent paths in complex environments using incremental search and heuristics.
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    What is ePH-MAPF?
    ePH-MAPF provides an efficient pipeline for computing collision-free paths for dozens to hundreds of agents on grid-based maps. It uses prioritized heuristics, incremental search techniques, and customizable cost metrics (Manhattan, Euclidean) to balance speed and solution quality. Users can select between different heuristic functions, integrate the library into Python-based robotics systems, and benchmark performance on standard MAPF scenarios. The codebase is modular and well-documented, enabling researchers and developers to extend it for dynamic obstacles or specialized environments.
  • A Python-based multi-agent robotic framework enabling autonomous coordination, path planning, and collaborative task execution across robot teams.
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    What is Multi Agent Robotic System?
    The Multi Agent Robotic System project offers a modular Python-based platform for developing, simulating, and deploying cooperative robotic teams. At its core, it implements decentralized control strategies, enabling robots to share state information and collaboratively allocate tasks without a central coordinator. The system includes built-in modules for path planning, collision avoidance, environment mapping, and dynamic task scheduling. Developers can integrate new algorithms by extending provided interfaces, adjust communication protocols via configuration files, and visualize robot interactions in simulated environments. Compatible with ROS, it supports seamless transitions from simulation to real-world hardware deployments. This framework accelerates research by providing reusable components for swarm behavior, collaborative exploration, and warehouse automation experiments.
  • Explore AI-powered technology for self-parking cars that enhances driving convenience.
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    What is Self-Parking Car Evolution?
    The self-parking car AI Agent utilizes advanced sensors and algorithms to assist vehicles in parking automatically. By processing real-time data from its surroundings, the AI can maneuver the vehicle into parking spots accurately, whether parallel or perpendicular. This technology reduces the risk of collisions and enhances the efficiency of the parking process, driving innovations in automotive convenience and safety for users.
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