On the Assessment of Sensitivity of Autonomous Vehicle Perception
Apostol Vassilev, Munawar Hasan, Edward Griffor, Honglan Jin, Pavel Piliptchak, Mahima Arora, Thoshitha Gamage

TL;DR
This paper evaluates the robustness of autonomous vehicle perception systems under adverse conditions using ensemble models, highlighting the impact of weather, lighting, and distance on perception accuracy and reliability.
Contribution
It introduces a novel perception assessment framework based on predictive sensitivity quantification and evaluates multiple state-of-the-art models under challenging scenarios.
Findings
Lighting conditions like fog and low sun significantly impair perception.
Adversarial road conditions and weather jointly increase perception sensitivity.
Perception robustness decreases with increased distance to objects.
Abstract
The viability of automated driving is heavily dependent on the performance of perception systems to provide real-time accurate and reliable information for robust decision-making and maneuvers. These systems must perform reliably not only under ideal conditions, but also when challenged by natural and adversarial driving factors. Both of these types of interference can lead to perception errors and delays in detection and classification. Hence, it is essential to assess the robustness of the perception systems of automated vehicles (AVs) and explore strategies for making perception more reliable. We approach this problem by evaluating perception performance using predictive sensitivity quantification based on an ensemble of models, capturing model disagreement and inference variability across multiple models, under adverse driving scenarios in both simulated environments and real-world…
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Taxonomy
TopicsAutonomous Vehicle Technology and Safety · Adversarial Robustness in Machine Learning · Advanced Neural Network Applications
