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Main Authors: Wang, Yunbo, Sun, Cong, Liu, Qiaosen, Su, Bingnan, Zhang, Zongxu, Norris, Michael, Tan, Gang, Ma, Jianfeng
Format: Preprint
Published: 2025
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Online Access:https://arxiv.org/abs/2504.20569
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author Wang, Yunbo
Sun, Cong
Liu, Qiaosen
Su, Bingnan
Zhang, Zongxu
Norris, Michael
Tan, Gang
Ma, Jianfeng
author_facet Wang, Yunbo
Sun, Cong
Liu, Qiaosen
Su, Bingnan
Zhang, Zongxu
Norris, Michael
Tan, Gang
Ma, Jianfeng
contents Sensor attacks on robotic vehicles have become pervasive and manipulative. Their latest advancements exploit sensor and detector characteristics to bypass detection. Recent security efforts have leveraged the physics-based model to detect or mitigate sensor attacks. However, these approaches are only resilient to a few sensor attacks and still need improvement in detection effectiveness. We present VIMU, an efficient sensor attack detection and resilience system for unmanned aerial vehicles. We propose a detection algorithm, CS-EMA, that leverages low-pass filtering to identify stealthy gyroscope attacks while achieving an overall effective sensor attack detection. We develop a fine-grained nonlinear physical model with precise aerodynamic and propulsion wrench modeling. We also augment the state estimation with a FIFO buffer safeguard to mitigate the impact of high-rate IMU attacks. The proposed physical model and buffer safeguard provide an effective system state recovery toward maintaining flight stability. We implement VIMU on PX4 autopilot. The evaluation results demonstrate the effectiveness of VIMU in detecting and mitigating various realistic sensor attacks, especially stealthy attacks.
format Preprint
id arxiv_https___arxiv_org_abs_2504_20569
institution arXiv
publishDate 2025
record_format arxiv
spellingShingle VIMU: Effective Physics-based Realtime Detection and Recovery against Stealthy Attacks on UAVs
Wang, Yunbo
Sun, Cong
Liu, Qiaosen
Su, Bingnan
Zhang, Zongxu
Norris, Michael
Tan, Gang
Ma, Jianfeng
Cryptography and Security
Sensor attacks on robotic vehicles have become pervasive and manipulative. Their latest advancements exploit sensor and detector characteristics to bypass detection. Recent security efforts have leveraged the physics-based model to detect or mitigate sensor attacks. However, these approaches are only resilient to a few sensor attacks and still need improvement in detection effectiveness. We present VIMU, an efficient sensor attack detection and resilience system for unmanned aerial vehicles. We propose a detection algorithm, CS-EMA, that leverages low-pass filtering to identify stealthy gyroscope attacks while achieving an overall effective sensor attack detection. We develop a fine-grained nonlinear physical model with precise aerodynamic and propulsion wrench modeling. We also augment the state estimation with a FIFO buffer safeguard to mitigate the impact of high-rate IMU attacks. The proposed physical model and buffer safeguard provide an effective system state recovery toward maintaining flight stability. We implement VIMU on PX4 autopilot. The evaluation results demonstrate the effectiveness of VIMU in detecting and mitigating various realistic sensor attacks, especially stealthy attacks.
title VIMU: Effective Physics-based Realtime Detection and Recovery against Stealthy Attacks on UAVs
topic Cryptography and Security
url https://arxiv.org/abs/2504.20569