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Combining intention and emotional state inference in a dynamic neural field architecture for human-robot joint action

机译:在动态神经场架构中将意图和情绪状态推理相结合,实现人机交互作用

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We report on our approach towards creating socially intelligent robots, which is heavily inspired by recent experimental findings about the neurocognitive mechanisms underlying action and emotion understanding in humans. Our approach uses neuro-dynamics as a theoretical language to model cognition, emotional states, decision making and action. The control architecture is formalized by a coupled system of dynamic neural fields representing a distributed network of local but connected neural populations. Different pools of neurons encode relevant information in the form of self-sustained activation patterns, which are triggered by input from connected populations and evolve continuously in time. The architecture implements a dynamic and flexible context-dependent mapping from observed hand and facial actions of the human onto adequate complementary behaviors of the robot that take into account the inferred goal and inferred emotional state of the co-actor. The dynamic control architecture was validated in multiple scenarios in which an anthropomorphic robot and a human operator assemble a toy object from its components. The scenarios focus on the robot's capacity to understand the human's actions, and emotional states, detect errors and adapt its behavior accordingly by adjusting its decisions and movements during the execution of the task.
机译:我们报告了我们创建社交智能机器人的方法,该方法在很大程度上受最近关于人类动作和情感理解背后的神经认知机制的实验发现的启发。我们的方法使用神经动力学作为一种理论语言来对认知,情绪状态,决策和行动进行建模。控制体系结构由动态神经场耦合系统形式化,该系统表示局部但相互连接的神经种群的分布式网络。不同的神经元库以自我维持的激活模式的形式对相关信息进行编码,该激活模式由连接的群体的输入触发并随时间不断发展。该体系结构实现了动态灵活的上下文相关映射,该映射从人类观察到的手和面部动作到机器人的充分互补行为,其中要考虑共同角色的目标和情感状态。动态控制体系结构已在多种场景中得到验证,在这种场景中,拟人化的机器人和操作员从其组件组装了玩具对象。这些场景着重于机器人理解人类行为和情绪状态,检测错误并通过在执行任务期间调整其决策和动作来相应地适应其行为的能力。

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