Ghent University - imec, Belgium.
Ghent University - imec, Belgium.
Neural Netw. 2021 Oct;142:192-204. doi: 10.1016/j.neunet.2021.05.010. Epub 2021 May 10.
Localization and mapping has been a long standing area of research, both in neuroscience, to understand how mammals navigate their environment, as well as in robotics, to enable autonomous mobile robots. In this paper, we treat navigation as inferring actions that minimize (expected) variational free energy under a hierarchical generative model. We find that familiar concepts like perception, path integration, localization and mapping naturally emerge from this active inference formulation. Moreover, we show that this model is consistent with models of hippocampal functions, and can be implemented in silico on a real-world robot. Our experiments illustrate that a robot equipped with our hierarchical model is able to generate topologically consistent maps, and correct navigation behaviour is inferred when a goal location is provided to the system.
定位与建图一直以来都是神经科学和机器人学领域的重要研究课题,前者旨在研究哺乳动物如何在环境中导航,后者则旨在使自主移动机器人能够实现此功能。在本文中,我们将导航视为在分层生成模型下推断出最小化(预期)变分自由能的动作。我们发现,诸如感知、路径整合、定位和建图等熟悉的概念自然地从这种主动推断公式中涌现出来。此外,我们还证明了该模型与海马体功能的模型一致,并可以在现实机器人上进行仿真实现。我们的实验表明,配备了分层模型的机器人能够生成拓扑一致的地图,并且当系统接收到目标位置时,可以推断出正确的导航行为。