Neuromorphic Spiking Ring Attractor for Proprioceptive Joint-State Estimation
arXiv cs.RO / 4/16/2026
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Key Points
- The paper proposes a neuromorphic spiking ring-attractor network to estimate a robot joint angle by maintaining a stable, self-sustaining activity bump as an internal continuous representation.
- It achieves stability via local excitation combined with broad inhibition, while velocity-modulated asymmetries translate the activity bump and enforce boundary conditions tied to mechanical joint limits.
- Experiments/analysis indicate smooth trajectory tracking and improved behavior near joint limits, including reduced drift and better accuracy versus unbounded variants.
- The approach is designed for compact, hardware-compatible implementation and demonstrates multi-second stability with an approximately near-linear relationship between bump velocity and synaptic modulation.
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