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SRAC: Self-Reflective Risk-Aware Artificial Cognitive models for robot response to human activities

机译:SRAC:机器人对人类活动的反应的自我反思的风险意识人工认知模型

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In human-robot teaming, interpretation of human actions, recognition of new situations, and appropriate decision making are crucial abilities for cooperative robots (“co-robots”) to interact intelligently with humans. Given an observation, it is important that human activities are interpreted the same way by co-robots as human peers so that robot actions can be appropriate to the activity at hand. A novel interpretability indicator is introduced to address this issue. When a robot encounters a new scenario, the pretrained activity recognition model, no matter how accurate in a known situation, may not produce the correct information necessary to act appropriately and safely in new situations. To effectively and safely interact with people, we introduce a new generalizability indicator that allows a co-robot to self-reflect and reason about when an observation falls outside the co-robot's learned model. Based on topic modeling and the two novel indicators, we propose a new Self-reflective Risk-aware Artificial Cognitive (SRAC) model, which allows a robot to make better decisions by incorporating robot action risks and identifying new situations. Experiments both using real-world datasets and on physical robots suggest that our SRAC model significantly outperforms the traditional methodology and enables better decision making in response to human behaviors.
机译:在人机协作中,对人的行为的解释,对新情况的识别以及适当的决策是协作型机器人(“协作机器人”)与人进行智能交互的关键能力。给出一个观察,重要的是合作机器人与人类同行对人类活动的解释方式相同,这样机器人的动作才能适合于当前的活动。引入了一种新颖的可解释性指标来解决此问题。当机器人遇到新的情况时,无论在已知情况下多么精确,预训练的活动识别模型都可能无法产生在新情况下适当而安全地采取行动所必需的正确信息。为了与人们进行有效和安全的互动,我们引入了新的可概括性指标,该指标可让协作机器人进行自我反思,并推断观察结果何时超出了协作机器人的学习模型。基于主题建模和两个新指标,我们提出了一种新的自反射式风险感知人工认知(SRAC)模型,该模型可通过合并机器人动作风险并识别新情况来使机器人做出更好的决策。使用真实数据集和物理机器人进行的实验均表明,我们的SRAC模型大大优于传统方法,并能够根据人类行为做出更好的决策。

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