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Synthesized Trust Learning from Limited Human Feedback for Human-Load-Reduced Multi-Robot Deployments

机译:综合信任从有限的人力反馈中获得人力负荷减少的多机器人部署

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Human multi-robot system (MRS) collaboration is demonstrating potentials in wide application scenarios due to the integration of human cognitive skills and a robot team’s powerful capability introduced by its multi-member structure. However, due to limited human cognitive capability, a human cannot simultaneously monitor multiple robots and identify the abnormal ones, largely limiting the efficiency of the human-MRS collaboration. There is an urgent need to proactively reduce unnecessary human engagements and further reduce human cognitive loads. Human trust in human MRS collaboration reveals human expectations on robot performance. Based on trust estimation, the work between a human and MRS will be reallocated that an MRS will self-monitor and only request human guidance in critical situations. Inspired by that, a novel Synthesized Trust Learning (STL) method was developed to model human trust in the collaboration. STL explores two aspects of human trust (trust level and trust preference), meanwhile accelerates the convergence speed by integrating active learning to reduce human workload. To validate the effectiveness of the method, tasks "searching victims in the context of city rescue" were designed in an open-world simulation environment, and a user study with 10 volunteers was conducted to generate real human trust feedback. The results showed that by maximally utilizing human feedback, the STL achieved higher accuracy in trust modeling with a few human feedback, effectively reducing human interventions needed for modeling an accurate trust, therefore reducing human cognitive load in the collaboration.
机译:由于人类认知技能的整合和由其多成员结构引入的强大功能,人类多机器人系统(MRS)协作正在展示广泛应用方案的潜力。然而,由于人类认知能力有限,人类不能同时监测多个机器人并识别异常,在很大程度上限制了人员合作的效率。迫切需要主动减少不必要的人类接触,进一步减少人类认知载荷。人类信任人类的合作揭示了人类对机器人绩效的期望。基于信托估计,将重新分配人员和夫人的工作,即夫人将自我监测,并仅在危急情况下请求人类指导。受到影响,开发了一种新颖的合成信任学习(STL)方法,以模拟人类信任。 STL探讨了人类信任(信任级别和信任偏好)的两个方面,同时通过集成积极学习来减少人类工作量来加速收敛速度。为了验证该方法的有效性,在开放世界的模拟环境中设计了“在城市救援背景下搜索受害者”的任务,并进行了具有10个志愿者的用户学习,以产生真正的人类信任反馈。结果表明,通过最大限度地利用人的反馈,STL在少数人反馈中实现了更高的信任建模精度,有效减少了建模准确信任所需的人类干预,从而减少了合作中的人类认知载荷。

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