Institute of Cognitive Science, Department of Neurobiopsychology, University of Osnabrück Osnabrück, Germany.
Front Neurorobot. 2010 May 12;4:2. doi: 10.3389/fnbot.2010.00002. eCollection 2010.
Here we introduce a cognitive model capable to model a variety of behavioral domains and apply it to a navigational task. We used place cells as sensory representation, such that the cells' place fields divided the environment into discrete states. The robot learns knowledge of the environment by memorizing the sensory outcome of its motor actions. This is composed of a central process, learning the probability of state-to-state transitions by motor actions and a distal processing routine, learning the extent to which these state-to-state transitions are caused by sensory-driven reflex behavior (obstacle avoidance). Navigational decision making integrates central and distal learned environmental knowledge to select an action that leads to a goal state. Differentiating distal and central processing increases the behavioral accuracy of the selected actions and the ability of behavioral adaptation to a changed environment. We propose that the system can canonically be expanded to model other behaviors, using alternative definitions of states and actions. The emphasis of this paper is to test this general cognitive model on a robot in a real-world environment.
在这里,我们介绍了一种能够模拟多种行为领域的认知模型,并将其应用于导航任务。我们使用位置细胞作为感觉表示,使得细胞的位置场将环境划分为离散的状态。机器人通过记忆其运动动作的感觉结果来学习环境知识。这由中央过程组成,通过运动动作学习状态到状态的转移概率,以及远程处理例程,学习这些状态到状态的转移在多大程度上是由感觉驱动的反射行为(避免障碍物)引起的。导航决策将中央和远程学习的环境知识整合在一起,以选择导致目标状态的动作。区分远程和中央处理可以提高所选动作的行为准确性,并提高对变化环境的行为适应能力。我们提出该系统可以使用替代的状态和动作定义,规范地扩展到其他行为的建模。本文的重点是在真实环境中的机器人上测试这个通用认知模型。