论文标题
机器人自我/其他区别:主动推理符合镜子中的神经网络学习
Robot self/other distinction: active inference meets neural networks learning in a mirror
论文作者
论文摘要
自我/其他区别和自我认识是与世界互动的重要技能,因为它使人类能够将自己的行为与他人区分开来并自我意识。但是,只有一组选定的动物,主要是人类等高级哺乳动物,已经通过了镜像测试,这是一种行为实验,旨在评估自我认识能力。在本文中,我们将自我识别描述为建立在身体知觉无意识机制上的过程。我们提出了一种算法,该算法使机器人能够通过回答以下问题来在镜子上执行非表达的自我认可,并将其简单动作与其他实体区分开:我会产生这些感觉吗?该算法将主动推理结合在一起,这是大脑中的感知和动作的理论模型,以及神经网络学习。机器人通过在视野和身体传感器中产生的效果来了解其动作与身体之间的关系。模型之间产生的预测误差和相互作用期间的实际观察结果用于通过自由能最小化来推断身体的构型,并积累证据以识别其身体。人形机器人的实验结果显示了算法在不同初始条件下的可靠性,例如任何透视上的镜像识别,机器人机器人的区别和人类机器人分化。
Self/other distinction and self-recognition are important skills for interacting with the world, as it allows humans to differentiate own actions from others and be self-aware. However, only a selected group of animals, mainly high order mammals such as humans, has passed the mirror test, a behavioural experiment proposed to assess self-recognition abilities. In this paper, we describe self-recognition as a process that is built on top of body perception unconscious mechanisms. We present an algorithm that enables a robot to perform non-appearance self-recognition on a mirror and distinguish its simple actions from other entities, by answering the following question: am I generating these sensations? The algorithm combines active inference, a theoretical model of perception and action in the brain, with neural network learning. The robot learns the relation between its actions and its body with the effect produced in the visual field and its body sensors. The prediction error generated between the models and the real observations during the interaction is used to infer the body configuration through free energy minimization and to accumulate evidence for recognizing its body. Experimental results on a humanoid robot show the reliability of the algorithm for different initial conditions, such as mirror recognition in any perspective, robot-robot distinction and human-robot differentiation.