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Contextual Trust Model With a Humanoid Robot Defense for Attacks to Smart Eco-Systems

Andrea F. Abate, Paola Barra, Carmen Bisogni, Lucia Cascone, Ignazio Passero

发表年份
2020
引用次数
14
访问权限
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摘要

Pepper is a humanoid robot that just embeds the few computational resources for controlling its sensors and actuators, and is not capable of handling big amounts of data or performing in parallel complicate tasks. Aiming at enriching its functionalities and its interaction with the environment, the robot has been put in communication with a plethora of satellite smart objects and services ranging from simple environmental sensors, up to deep learning enhanced smart cameras. The addition of biometric, emotional, social, machine learning and other capabilities to Pepper, while enabling advanced functionalities and additional instruments for controlling users and the environment, raises security and, obviously, privacy concerns. The robot itself, its interaction with the environment and every weakness exposed by the smart objects involved in its eco-system, may represent an exploit point for attacking the smart home and threaten security and privacy. Aiming at preventing attacks and strengthen security, each action with the system is evaluated against the entire context, as detected by the entire eco-system of smart-objects. This paper describes and analyses the experience and how the semantic trust model adopted mitigates the effects of weaknesses and the risks related to smart home cyber-attacks.

关键词

Computer scienceExploitHumanoid robotComputer securityContext (archaeology)RobotHuman–computer interactionHome automationArtificial intelligenceTelecommunications

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