Self-motion as a structural prior for coherent and robust formation of cognitive maps
By: Yingchao Yu , Pengfei Sun , Yaochu Jin and more
Most computational accounts of cognitive maps assume that stability is achieved primarily through sensory anchoring, with self-motion contributing to incremental positional updates only. However, biological spatial representations often remain coherent even when sensory cues degrade or conflict, suggesting that self-motion may play a deeper organizational role. Here, we show that self-motion can act as a structural prior that actively organizes the geometry of learned cognitive maps. We embed a path-integration-based motion prior in a predictive-coding framework, implemented using a capacity-efficient, brain-inspired recurrent mechanism combining spiking dynamics, analog modulation and adaptive thresholds. Across highly aliased, dynamically changing and naturalistic environments, this structural prior consistently stabilizes map formation, improving local topological fidelity, global positional accuracy and next-step prediction under sensory ambiguity. Mechanistic analyses reveal that the motion prior itself encodes geometrically precise trajectories under tight constraints of internal states and generalizes zero-shot to unseen environments, outperforming simpler motion-based constraints. Finally, deployment on a quadrupedal robot demonstrates that motion-derived structural priors enhance online landmark-based navigation under real-world sensory variability. Together, these results reframe self-motion as an organizing scaffold for coherent spatial representations, showing how brain-inspired principles can systematically strengthen spatial intelligence in embodied artificial agents.
Similar Papers
Embodied World Models Emerge from Navigational Task in Open-Ended Environments
Artificial Intelligence
Robot learns to map mazes by moving through them.
MapFormer: Self-Supervised Learning of Cognitive Maps with Input-Dependent Positional Embeddings
Machine Learning (CS)
Teaches AI to learn and navigate like a brain.
From reactive to cognitive: brain-inspired spatial intelligence for embodied agents
Artificial Intelligence
Helps robots learn and remember places like humans.