DAWN: Vehicle Detection in Adverse Weather Nature Dataset
Mourad A. Kenk, Mahmoud Hassaballah

TL;DR
This paper introduces DAWN, a new real-world dataset of 1000 images under adverse weather conditions, to evaluate and improve vehicle detection algorithms in challenging environments for autonomous driving.
Contribution
The paper presents DAWN, a comprehensive dataset capturing diverse adverse weather conditions to benchmark vehicle detection performance in real-world scenarios.
Findings
Dataset includes images under fog, snow, rain, and sandstorms.
Annotations support vehicle detection in autonomous driving.
Facilitates evaluation of detection algorithms in adverse weather.
Abstract
Recently, self-driving vehicles have been introduced with several automated features including lane-keep assistance, queuing assistance in traffic-jam, parking assistance and crash avoidance. These self-driving vehicles and intelligent visual traffic surveillance systems mainly depend on cameras and sensors fusion systems. Adverse weather conditions such as heavy fog, rain, snow, and sandstorms are considered dangerous restrictions of the functionality of cameras impacting seriously the performance of adopted computer vision algorithms for scene understanding (i.e., vehicle detection, tracking, and recognition in traffic scenes). For example, reflection coming from rain flow and ice over roads could cause massive detection errors which will affect the performance of intelligent visual traffic systems. Additionally, scene understanding and vehicle detection algorithms are mostly…
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