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Bayesian Deep Predictive Coding for Snake-Like Robotic Control in Unknown Terrains

William Ziming Qu, Jessica Ziyu Qu, Li Li, Jie Yang, Yuanyuan Jia

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Abstract

Effectively modeling the spatio-temporal interac- tions both internally and externally is a challenge in controlling multi-linked snake robots. This paper presents an effective method based on deep predictive coding: SnakeFormer, to address the aforementioned issue. The main contributions include: 1) Deriving a variational free energy function with two innovative regularization terms through Bayesian prob- abilistic analysis, offering a novel perspective to simulate the interactions between agent and the environment; 2) Introducing an interaction-attention model within a Transformer structure for predicting dynamics, and collaboratively addressing path planning and obstacle avoidance tasks. 3) By incorporating serpenoid embedding and optimizing self-attention computa- tions, the gait stability and motion efficiency are improved. Preliminary experiments and comparative analysis with base- line models fully validate the effectiveness and generalizability of the method.

Index terms

Biologically-Inspired Robots Redundant Robots Probability and Statistical Methods