DS1 spectrogram: Test-Time Perturbation Learning with Delayed Feedback for Vision-Language-Action Models

Test-Time Perturbation Learning with Delayed Feedback for Vision-Language-Action Models

April 20, 20262604.18107

Authors

Lixiang Lium,Jiahuan Zhou,Jiangmeng Li,Zehua Zang,Xi Wang

Abstract

Vision-Language-Action models (VLAs) achieve remarkable performance in sequential decision-making but remain fragile to subtle environmental shifts, such as small changes in object pose. We attribute this brittleness to trajectory overfitting, where VLAs over-attend to the spurious correlation between actions and entities, then reproduce memorized action patterns.

We propose Perturbation learning with Delayed Feedback (PDF), a verifier-free test-time adaptation framework that improves decision performance without fine-tuning the base model. PDF mitigates the spurious correlation through uncertainty-based data augmentation and action voting, while an adaptive scheduler allocates augmentation budgets to balance performance and efficiency.

To further improve stability, PDF learns a lightweight perturbation module that retrospectively adjusts action logits guided by delayed feedback, correcting overconfidence issue. Experiments on LIBERO (+7.4% success rate) and Atari (+10.3 human normalized score) demonstrate consistent gains of PDF in task success over vanilla VLA and VLA with test-time adaptation, establishing a practical path toward reliable test-time adaptation in multimodal decision-making agents.

The code is available at https://github.com/zhoujiahuan1991/CVPR2026-PDF.

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