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Autori principali: Jeong, Jaehwan, Zhu, Evelyn, Lin, Jinying, Jaimes, Emmanuel, Vu, Tuan-Anh, Joo, Jungseock, Kim, Sangpil, Jawed, M. Khalid
Natura: Preprint
Pubblicazione: 2026
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Accesso online:https://arxiv.org/abs/2603.13782
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author Jeong, Jaehwan
Zhu, Evelyn
Lin, Jinying
Jaimes, Emmanuel
Vu, Tuan-Anh
Joo, Jungseock
Kim, Sangpil
Jawed, M. Khalid
author_facet Jeong, Jaehwan
Zhu, Evelyn
Lin, Jinying
Jaimes, Emmanuel
Vu, Tuan-Anh
Joo, Jungseock
Kim, Sangpil
Jawed, M. Khalid
contents Vision-Language-Action (VLA) models have demonstrated strong potential for predicting semantic actions in navigation tasks, demonstrating the ability to reason over complex linguistic instructions and visual contexts. However, they are fundamentally hindered by visual-reasoning hallucinations that lead to trajectory deviations. Addressing this issue has conventionally required training external critic modules or relying on complex uncertainty heuristics. In this work, we discover that monitoring a few attention heads within a frozen VLA model can accurately detect path deviations without incurring additional computational overhead. We refer to these heads, which inherently capture the spatiotemporal causality between historical visual sequences and linguistic instructions, as Navigation Heads. Using these heads, we propose an intuitive, training-free anomaly-detection framework that monitors their signals to detect hallucinations in real time. Surprisingly, among over a thousand attention heads, a combination of just three is sufficient to achieve a 44.6 % deviation detection rate with a low false-positive rate of 11.7 %. Furthermore, upon detecting a deviation, we bypass the heavy VLA model and trigger a lightweight Reinforcement Learning (RL) policy to safely execute a shortest-path rollback. By integrating this entire detection-to-recovery pipeline onto a physical robot, we demonstrate its practical robustness. All source code will be publicly available.
format Preprint
id arxiv_https___arxiv_org_abs_2603_13782
institution arXiv
publishDate 2026
record_format arxiv
spellingShingle Your Vision-Language-Action Model Already Has Attention Heads For Path Deviation Detection
Jeong, Jaehwan
Zhu, Evelyn
Lin, Jinying
Jaimes, Emmanuel
Vu, Tuan-Anh
Joo, Jungseock
Kim, Sangpil
Jawed, M. Khalid
Robotics
Computer Vision and Pattern Recognition
Vision-Language-Action (VLA) models have demonstrated strong potential for predicting semantic actions in navigation tasks, demonstrating the ability to reason over complex linguistic instructions and visual contexts. However, they are fundamentally hindered by visual-reasoning hallucinations that lead to trajectory deviations. Addressing this issue has conventionally required training external critic modules or relying on complex uncertainty heuristics. In this work, we discover that monitoring a few attention heads within a frozen VLA model can accurately detect path deviations without incurring additional computational overhead. We refer to these heads, which inherently capture the spatiotemporal causality between historical visual sequences and linguistic instructions, as Navigation Heads. Using these heads, we propose an intuitive, training-free anomaly-detection framework that monitors their signals to detect hallucinations in real time. Surprisingly, among over a thousand attention heads, a combination of just three is sufficient to achieve a 44.6 % deviation detection rate with a low false-positive rate of 11.7 %. Furthermore, upon detecting a deviation, we bypass the heavy VLA model and trigger a lightweight Reinforcement Learning (RL) policy to safely execute a shortest-path rollback. By integrating this entire detection-to-recovery pipeline onto a physical robot, we demonstrate its practical robustness. All source code will be publicly available.
title Your Vision-Language-Action Model Already Has Attention Heads For Path Deviation Detection
topic Robotics
Computer Vision and Pattern Recognition
url https://arxiv.org/abs/2603.13782