ROCRLGJan 20, 2022

RoboMal: Malware Detection for Robot Network Systems

arXiv:2201.08470v1
AI Analysis

It addresses a critical security problem for robot systems interacting with humans, but is incremental as it applies existing LSTM methods to a new domain.

The paper tackles malware detection in robotic software by proposing the RoboMal framework for static analysis on binary executables, achieving 85% accuracy and 87% precision in 10-fold cross-validation.

Robot systems are increasingly integrating into numerous avenues of modern life. From cleaning houses to providing guidance and emotional support, robots now work directly with humans. Due to their far-reaching applications and progressively complex architecture, they are being targeted by adversarial attacks such as sensor-actuator attacks, data spoofing, malware, and network intrusion. Therefore, security for robotic systems has become crucial. In this paper, we address the underserved area of malware detection in robotic software. Since robots work in close proximity to humans, often with direct interactions, malware could have life-threatening impacts. Hence, we propose the RoboMal framework of static malware detection on binary executables to detect malware before it gets a chance to execute. Additionally, we address the great paucity of data in this space by providing the RoboMal dataset comprising controller executables of a small-scale autonomous car. The performance of the framework is compared against widely used supervised learning models: GRU, CNN, and ANN. Notably, the LSTM-based RoboMal model outperforms the other models with an accuracy of 85% and precision of 87% in 10-fold cross-validation, hence proving the effectiveness of the proposed framework.

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