A Brain-Inspired Compact Cognitive Mapping System
Taiping Zeng, and Bailu Si

TL;DR
This paper introduces a neurobiologically inspired compact cognitive mapping system for robots, effectively limiting map growth over time while maintaining accurate environmental representation, suitable for long-term SLAM applications.
Contribution
The paper proposes a novel neuro-inspired method for creating compact cognitive maps that efficiently manage map size and support real-time long-term robot mapping.
Findings
Map size growth is effectively restricted over time.
The method accurately represents the environment's overall structure.
The approach is suitable for long-term robotic mapping applications.
Abstract
As the robot explores the environment, the map grows over time in the simultaneous localization and mapping (SLAM) system, especially for the large scale environment. The ever-growing map prevents long-term mapping. In this paper, we developed a compact cognitive mapping approach inspired by neurobiological experiments. Inspired from neighborhood cells, neighborhood fields determined by movement information, i.e. translation and rotation, are proposed to describe one of distinct segments of the explored environment. The vertices and edges with movement information below the threshold of the neighborhood fields are avoided adding to the cognitive map. The optimization of the cognitive map is formulated as a robust non-linear least squares problem, which can be efficiently solved by the fast open linear solvers as a general problem. According to the cognitive decision-making of familiar…
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Taxonomy
TopicsRobotics and Sensor-Based Localization · Memory and Neural Mechanisms · Advanced Image and Video Retrieval Techniques
