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simmediumpolicy-learningmetric · varies

Rectified Schrödinger Bridge Matching for Few-Step Visual Navigation

Description

Visual navigation is a core challenge in Embodied AI, requiring autonomous agents to translate high-dimensional sensory observations into continuous, long-horizon action trajectories. While generative policies based on diffusion models and Schrödinger Bridges (SB) effectively capture multimodal action distributions, they require dozens of integration steps due to high-variance stochastic transport, posing a critical barrier for real-time robotic control. We propose Rectified Schrödinger Bridge M

Source

http://arxiv.org/abs/2604.05673v1