Haptic-Based User Authentication for Tele-robotic System
Haptic-Based User Authentication for Tele-robotic System
Tele-operated robots rely on real-time user behavior mapping for remote tasks, but ensuring secure authentication remains a challenge. Traditional methods, such as passwords and static biometrics, are vulnerable to spoofing and replay attacks, particularly in high-stakes, continuous interactions. This paper presents a novel anti-spoofing and anti-replay authentication approach that leverages distinctive user behavioral features extracted from haptic feedback during human-robot interactions. To evaluate our authentication approach, we collected a time-series force feedback dataset from 15 participants performing seven distinct tasks. We then developed a transformer-based deep learning model to extract temporal features from the haptic signals. By analyzing user-specific force dynamics, our method achieves over 90 percent accuracy in both user identification and task classification, demonstrating its potential for enhancing access control and identity assurance in tele-robotic systems.
Rongyu Yu、Kan Chen、Zeyu Deng、Chen Wang、Burak Kizilkaya、Liying Emma Li
电子技术应用自动化技术、自动化技术设备计算技术、计算机技术
Rongyu Yu,Kan Chen,Zeyu Deng,Chen Wang,Burak Kizilkaya,Liying Emma Li.Haptic-Based User Authentication for Tele-robotic System[EB/OL].(2025-06-16)[2025-07-21].https://arxiv.org/abs/2506.14116.点此复制
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