Worsening Perception: Real-time Degradation of Autonomous Vehicle Perception Performance for Simulation of Adverse Weather Conditions
Ivan Fursa, Elias Fandi, Valentina Musat, Jacob Culley, Enric Gil,, Izzeddin Teeti, Louise Bilous, Isaac Vander Sluis, Alexander Rast, Andrew, Bradley

TL;DR
This paper presents a lightweight, real-time weather augmentation method for autonomous vehicle perception testing, simulating adverse conditions like water droplets and fading light to evaluate perception system robustness efficiently.
Contribution
The study introduces a novel, low-latency weather augmentation technique that enhances simulation and real-world testing of perception systems under adverse weather conditions.
Findings
Achieves less than 8 ms latency in weather simulation
Effectively replicates water droplets and lighting fading
Enables real-time testing of perception robustness
Abstract
Autonomous vehicles rely heavily upon their perception subsystems to see the environment in which they operate. Unfortunately, the effect of variable weather conditions presents a significant challenge to object detection algorithms, and thus it is imperative to test the vehicle extensively in all conditions which it may experience. However, development of robust autonomous vehicle subsystems requires repeatable, controlled testing - while real weather is unpredictable and cannot be scheduled. Real-world testing in adverse conditions is an expensive and time-consuming task, often requiring access to specialist facilities. Simulation is commonly relied upon as a substitute, with increasingly visually realistic representations of the real-world being developed. In the context of the complete autonomous vehicle control pipeline, subsystems downstream of perception need to be tested with…
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Taxonomy
TopicsImage Enhancement Techniques · Autonomous Vehicle Technology and Safety · Advanced Neural Network Applications
