Event-Based De-Snowing for Autonomous Driving
Manasi Muglikar, Nico Messikommer, Marco Cannici, Davide Scaramuzza

TL;DR
This paper introduces a novel event-camera-based de-snowing method that effectively removes snow artifacts from images in real-time, improving safety and reliability for autonomous driving in winter conditions.
Contribution
It presents an attention-based approach leveraging event camera data to accurately recover snow-occluded background images, outperforming existing methods.
Findings
Outperforms state-of-the-art de-snowing methods by 3 dB in PSNR.
Enables effective depth and optical flow estimation on de-snowed images.
Demonstrates robustness in snow removal under various conditions.
Abstract
Adverse weather conditions, particularly heavy snowfall, pose significant challenges to both human drivers and autonomous vehicles. Traditional image-based de-snowing methods often introduce hallucination artifacts as they rely solely on spatial information, while video-based approaches require high frame rates and suffer from alignment artifacts at lower frame rates. Camera parameters, such as exposure time, also influence the appearance of snowflakes, making the problem difficult to solve and heavily dependent on network generalization. In this paper, we propose to address the challenge of desnowing by using event cameras, which offer compressed visual information with submillisecond latency, making them ideal for de-snowing images, even in the presence of ego-motion. Our method leverages the fact that snowflake occlusions appear with a very distinctive streak signature in the…
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