Papers
arxiv:2512.01715

DiG-Flow: Discrepancy-Guided Flow Matching for Robust VLA Models

Published on Dec 1
· Submitted by Wanpeng Zhang on Dec 3
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Abstract

DiG-Flow enhances VLA models' robustness by using geometric regularization to align observation and action embeddings, improving performance on complex tasks and with limited data.

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Vision-Language-Action (VLA) models trained with flow matching have demonstrated impressive capabilities on robotic manipulation tasks. However, their performance often degrades under distribution shift and on complex multi-step tasks, suggesting that the learned representations may not robustly capture task-relevant semantics. We introduce DiG-Flow, a principled framework that enhances VLA robustness through geometric regularization. Our key insight is that the distributional discrepancy between observation and action embeddings provides a meaningful geometric signal: lower transport cost indicates compatible representations, while higher cost suggests potential misalignment. DiG-Flow computes a discrepancy measure between empirical distributions of observation and action embeddings, maps it to a modulation weight via a monotone function, and applies residual updates to the observation embeddings before flow matching. Crucially, this intervention operates at the representation level without modifying the flow matching path or target vector field. We provide theoretical guarantees showing that discrepancy-guided training provably decreases the training objective, and that guided inference refinement converges with contraction. Empirically, DiG-Flow integrates into existing VLA architectures with negligible overhead and consistently improves performance, with particularly pronounced gains on complex multi-step tasks and under limited training data.

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DiG-Flow is a plug-and-play module for flow-matching based VLAs that rebalances control between the autoregressive foundation model and the flow expert. It embeds model inputs and flow outputs into a unified discrepancy space and uses this signal to gate the flow path, preventing shortcut transports that bypass the pretrained model and steering the expert toward more general, robust actions. DiG-Flow integrates seamlessly into diverse VLA architectures.

Project Page: https://beingbeyond.github.io/DiG-Flow
arXiv: https://arxiv.org/abs/2512.01715

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