An AI-powered Hierarchical Communication Framework for Robust Human-Robot Collaboration in Industrial Settings

D. Mukherjee, Kashish Gupta, H. Najjaran
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引用次数: 3

Abstract

Cohesive human-robot collaboration (HRC) for carrying out an industrial task requires an intelligent robot capable of functioning in uncertain and noisy environments. This can be achieved through seamless and natural communication between human and robot partners. Introducing naturalness in communication is highly complex due to both aleatoric variability and epistemic uncertainty originating from the components of the HRC system including the human, sensors, robot(s), and the environment. The presented work proposes the artificial intelligence (AI)-powered multimodal, robust fusion (AI-MRF) architecture that combines communication modalities from the human for a more natural communication. The proposed architecture utilizes fuzzy inferencing and Dempster-Shafer theory for deal with different manifestations of uncertainty. AI-MRF is scalable and modular. The evaluation of AI-MRF for safety and robustness under real-world mimicking case studies is showcased. While the architecture has been evaluated for HRC in industrial settings, it can be readily implemented into any human and machine communication scenarios.
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工业环境中用于稳健人机协作的人工智能分层通信框架
执行工业任务的内聚人机协作(HRC)需要能够在不确定和嘈杂环境中工作的智能机器人。这可以通过人类和机器人伙伴之间无缝和自然的沟通来实现。由于HRC系统的组成部分(包括人、传感器、机器人和环境)的任意可变性和认知不确定性,在通信中引入自然性是非常复杂的。本文提出了人工智能(AI)驱动的多模态鲁棒融合(AI- mrf)架构,该架构结合了来自人类的通信模式,以实现更自然的通信。提出的体系结构利用模糊推理和邓普斯特-谢弗理论来处理不同的不确定性表现。AI-MRF具有可扩展性和模块化。在现实世界模拟案例研究中,展示了AI-MRF的安全性和鲁棒性评估。虽然该体系结构已经针对工业环境中的HRC进行了评估,但它可以很容易地实现到任何人机通信场景中。
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