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Exploring Uncertainty and Movement in Categorical Perception Using Robots

机译:使用机器人探索类别感知的不确定性和运动

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Cognitive agents are able to perform categorical perception through physical interaction (active categorical perception; ACP), or passively at a distance (distal categorical perception; DCP). It is possible that the former scaffolds the learning of the latter. However, it is unclear whether ACP indeed scaffolds DCP in humans and animals, nor how a robot could be trained to likewise learn DCP from ACP. Here we demonstrate a method for doing so which involves uncertainty: robots are trained to perform ACP when uncertain and DCP when certain. We found evidence in these trials that suggests such scaffolding may be occurring: Early during training, robots moved objects to reduce uncertainty as to their class (ACP), but later in training, robots exhibited less action and less class uncertainty (DCP). Furthermore, we demonstrate that robots trained in such a manner are more competent at categorizing novel objects than robots trained to categorize in other ways.
机译:认知主体能够通过物理交互(主动分类感知; ACP)或在远处被动地进行分类感知(远距离分类感知; DCP)。前者可能会影响后者的学习。但是,尚不清楚ACP是否确实在人畜中架设了DCP,也不清楚如何训练机器人从ACP同样学习DCP。在这里,我们演示了一种涉及不确定性的方法:训练机器人进行不确定性时的ACP和确定性时的DCP。我们在这些试验中发现了表明可能发生这种脚手架的证据:在训练的早期,机器人移动了物体以降低其类别(ACP)的不确定性,但是在训练后期,机器人表现出的动作更少且类别的不确定性(DCP)更少。此外,我们证明以这种方式训练的机器人比通过其他方式训练的机器人在分类新颖对象方面更有能力。

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