SoK: Security of the Image Processing Pipeline for Camera-based Sensing in Autonomous Vehicles
Michael K\"uhr, Mohammad Hamad, Pedram MohajerAnsari, Mert D. Pes\'e, Sebastian Steinhorst

TL;DR
This paper provides a comprehensive survey and analysis of security and robustness in the image processing pipeline for autonomous vehicle cameras, introducing tools and testbeds to enhance system security.
Contribution
It systematically reviews existing research, classifies attack risks using ISO 21434, and introduces an interactive risk assessment tool and an open-source testbed for security evaluation.
Findings
Identified gaps between security and robustness research
Developed TARA-CAM for threat analysis and risk assessment
Created PICT, an open-source testbed for security testing
Abstract
Cameras capture images that are essential for many safety-critical tasks. To process these images, a complex pipeline with multiple layers is used. Security attacks on this pipeline can severely affect passenger safety and system performance. However, many attacks presented in scientific literature overlook the fact that there are different layers and, hence, the feasibility and impact of these attacks can vary. While there has been research to improve the quality and robustness of the image processing pipeline, these efforts are often orthogonal to security research without exploiting potential overlap and synergies. In this work, we aim to bridge this gap by combining security and robustness research for the image processing pipeline in autonomous vehicles. We thoroughly investigated the body of literature on the security and robustness of the image processing pipeline and selected 92…
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Taxonomy
TopicsSecurity and Verification in Computing · Advanced Malware Detection Techniques
