Human autonomy teaming-based safety-aware navigation through bio-inspired and graph-based algorithms

Timothy Sellers , Tingjun Lei , Chaomin Luo , Zhuming Bi , Gene Eu Jan
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Abstract

In the field of autonomous robots, achieving complete precision is challenging, underscoring the need for human intervention, particularly in ensuring safety. Human Autonomy Teaming (HAT) is crucial for promoting safe and efficient human–robot collaboration in dynamic indoor environments. This paper introduces a framework designed to address these precision gaps, enhancing safety and robotic interactions within such settings. Central to our approach is a hybrid graph system that integrates the Generalized Voronoi Diagram (GVD) with spatio-temporal graphs, effectively combining human feedback, environmental factors, and key waypoints. An integral component of this system is the improved Node Selection Algorithm (iNSA), which utilizes the revised Grey Wolf Optimization (rGWO) for better adaptability and performance. Furthermore, an obstacle tracking model is employed to provide predictive data, enhancing the efficiency of the system. Human insights play a critical role, from supplying initial environmental data and determining key waypoints to intervening during unexpected challenges or dynamic environmental changes. Extensive simulation and comparison tests confirm the reliability and effectiveness of our proposed model, highlighting its unique advantages in the domain of HAT. This comprehensive approach ensures that the system remains robust and responsive to the complexities of real-world applications.
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通过生物启发和基于图的算法实现基于人类自主团队的安全意识导航
在自主机器人领域,实现完全精确具有挑战性,这就强调了人类干预的必要性,尤其是在确保安全方面。人类自主团队(HAT)对于促进动态室内环境中安全高效的人机协作至关重要。本文介绍了一个旨在解决这些精度差距的框架,以增强此类环境中的安全性和机器人互动。我们方法的核心是一个混合图系统,它将广义伏罗诺图(GVD)与时空图整合在一起,有效地结合了人类反馈、环境因素和关键航点。该系统的一个组成部分是改进的节点选择算法(iNSA),该算法采用了经修订的灰狼优化算法(rGWO),具有更好的适应性和性能。此外,还采用了障碍物跟踪模型来提供预测数据,从而提高了系统的效率。从提供初始环境数据和确定关键航点,到在意外挑战或动态环境变化时进行干预,人类的洞察力发挥着至关重要的作用。广泛的模拟和对比测试证实了我们所建议的模型的可靠性和有效性,凸显了其在 HAT 领域的独特优势。这种全面的方法确保了系统在现实世界的复杂应用中始终保持稳健性和响应性。
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