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An Incremental Episodic Memory Framework for Topological Map Building

机译:用于拓扑图构建的增量情景存储器框架

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In this paper, an episodic memory learning framework is proposed for categorizing and encoding sensory information that acquired from a robot for environment adaptation and sensorimotor map building. The proposed learning model termed as Incremental Episodic Memory Adaptive Resonance Theory (In-EMART), consists two layers of ART networks which used to detect novel event encountered by the robot and learn the spatio-temporal relationship by creating neurons incrementally. A set of connected episodes forms a sensorimotor map that can be used for path planning and goal navigation autonomously. The experimental results for a mobile robot show that: (i) In-EMART can learn sensory data in real time which is important for robot implementation; (ii) the model solves the perceptual aliasing issue by recalling the connected episode neurons; (iii) compared with previous works, the proposed method further generates a sensorimotor map for connecting episodes together to navigate from one place to another continuously.
机译:本文提出了一种情景记忆学习框架,用于对从机器人获取的用于环境适应和感觉运动图构建的感觉信息进行分类和编码。所提出的称为增量情景记忆自适应共振理论(In-EMART)的学习模型包括两层ART网络,用于检测机器人遇到的新事件并通过逐步创建神经元来学习时空关系。一组相连的情节形成一个感觉运动图,可以自动用于路径规划和目标导航。移动机器人的实验结果表明:(i)In-EMART可以实时学习感官数据,这对于实现机器人非常重要; (ii)该模型通过召回连接的发作神经元解决了感知混叠问题; (iii)与以前的工作相比,所提出的方法还生成了一个感觉运动图,用于将情节连接在一起以连续地从一个地方导航到另一个地方。

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