改进机器人操作系统框架中的障碍物检测与规避混合模型(快速探索随机树和动态视窗方法)

Ndidiamaka Adiuku, Nicolas P. Avdelidis, Gilbert Tang, Angelos Plastropoulos
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摘要

机器学习与机器人技术的融合为解决工业中移动机器人导航的应用难题带来了巨大潜力。现实世界的环境具有高度动态性和不可预测性,对效率和安全性的要求也越来越高。这就需要一种多方面的方法,将先进的传感、强大的障碍物检测和规避机制结合起来,以获得有效的机器人导航体验。虽然使用默认机器人操作系统(ROS)导航栈的混合方法已取得显著效果,但其在实时和高度动态环境中的性能仍然是一个挑战。这些环境的特点是条件不断变化,会影响障碍物检测系统的精度和高效的避障控制决策过程。为了应对这些挑战,本文提出了一种新颖的解决方案,将快速探索随机树(RRT)集成 ROS 导航堆栈和预训练 YOLOv7 物体检测模型相结合,以增强 NAV-YOLO 系统开发工作的能力。所提出的方法利用了YOLOv7障碍物检测的高精度以及RRT和动态窗口方法(DWA)的高效路径规划能力,提高了移动机器人在现实世界复杂多变环境中的导航性能。为了评估所提解决方案的效率,我们进行了广泛的仿真和实际机器人平台实验。结果表明,该方案具有高水平的避障能力,可确保航空环境中移动机器人导航操作的安全性和效率。
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Improved Hybrid Model for Obstacle Detection and Avoidance in Robot Operating System Framework (Rapidly Exploring Random Tree and Dynamic Windows Approach)
The integration of machine learning and robotics brings promising potential to tackle the application challenges of mobile robot navigation in industries. The real-world environment is highly dynamic and unpredictable, with increasing necessities for efficiency and safety. This demands a multi-faceted approach that combines advanced sensing, robust obstacle detection, and avoidance mechanisms for an effective robot navigation experience. While hybrid methods with default robot operating system (ROS) navigation stack have demonstrated significant results, their performance in real time and highly dynamic environments remains a challenge. These environments are characterized by continuously changing conditions, which can impact the precision of obstacle detection systems and efficient avoidance control decision-making processes. In response to these challenges, this paper presents a novel solution that combines a rapidly exploring random tree (RRT)-integrated ROS navigation stack and a pre-trained YOLOv7 object detection model to enhance the capability of the developed work on the NAV-YOLO system. The proposed approach leveraged the high accuracy of YOLOv7 obstacle detection and the efficient path-planning capabilities of RRT and dynamic windows approach (DWA) to improve the navigation performance of mobile robots in real-world complex and dynamically changing settings. Extensive simulation and real-world robot platform experiments were conducted to evaluate the efficiency of the proposed solution. The result demonstrated a high-level obstacle avoidance capability, ensuring the safety and efficiency of mobile robot navigation operations in aviation environments.
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