ROMar 31

Interacting Multiple Model Proprioceptive Odometry for Legged Robots

arXiv:2603.2938311.9h-index: 7
AI Analysis

This work addresses a domain-specific problem for legged robotics by improving estimation accuracy under varying contact conditions, representing an incremental advancement.

The paper tackled the problem of state estimation for legged robots when exteroceptive sensors are unreliable by proposing an interacting multiple model proprioceptive odometry framework, which achieved superior pose estimation accuracy over state-of-the-art methods in simulations and real-world experiments.

State estimation for legged robots remains challenging because legged odometry generally suffers from limited observability and therefore depends critically on measurement constraints to suppress drift. When exteroceptive sensors are unreliable or degraded, such constraints are mainly derived from proprioceptive measurements, particularly contact-related leg kinematics information. However, most existing proprioceptive odometry methods rely on an idealized point-contact assumption, which is often violated during real locomotion. Consequently, the effectiveness of proprioceptive constraints may be significantly reduced, resulting in degraded estimation accuracy. To address these limitations, we propose an interacting multiple model (IMM)-based proprioceptive odometry framework for legged robots. By incorporating multiple contact hypotheses within a unified probabilistic framework, the proposed method enables online mode switching and probabilistic fusion under varying contact conditions. Extensive simulations and real-world experiments demonstrate that the proposed method achieves superior pose estimation accuracy over state-of-the-art methods while maintaining comparable computational efficiency.

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