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Towards Active Event Recognition

机译:走向活动事件识别

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Directing robot attention to recognise activities and to anticipate events like goal-directed actions is a crucial skill for human-robot interaction.Unfortunately,issues like intrinsic time constraints,the spatially distributed nature of the entailed information sources,and the existence of a multitude of unobservable states affecting the system,like latent intentions,have long rendered achievement of such skills a rather elusive goal.The problem tests the limits of current attention control systems.It requires an integrated solution for tracking,exploration and recognition,which traditionally have been seen as separate problems in active vision.We propose a probabilistic generative framework based on information gain maximisation and a mixture of Kalman Filters that uses predictions in both recognition and attention-control.This framework can efficiently use the observations of one element in a dynamic environment to provide information on other elements,and consequently enables guided exploration.Interestingly,the sensors control policy,directly derived from first principles,represents the intuitive trade-off between finding the most discriminative clues and maintaining overall awareness.Experiments on a simulated humanoid robot observing a human executing goal-oriented actions demonstrated improvement on recognition time and precision over baseline systems.
机译:引导机器人的注意力来识别活动并预测诸如目标定向动作之类的事件是人机交互的一项关键技能。不幸的是,诸如内在时间约束,所包含的信息源在空间上的分布以及诸如此类的问题的存在等问题。长期以来,影响系统的不可观测状态(如潜在意图)一直使实现这些技能成为一个难以捉摸的目标。该问题测试了当前注意力控制系统的局限性。它需要用于跟踪,探索和识别的集成解决方案,这在传统上已被发现作为主动视觉中的独立问题,我们提出了一个基于信息增益最大化和卡尔曼滤波器混合的概率生成框架,该框架在识别和注意力控制中都使用了预测,该框架可以有效地利用动态环境中对一个元素的观察来提供有关其他元素的信息,并因此启用指南有趣的是,直接基于第一原理的传感器控制策略代表了在找到最有区别的线索与保持整体意识之间的直观权衡。在模拟人形机器人上观察人类以目标为导向的行为的实验表明,该方法的改进。基线系统的识别时间和精度。

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