PanopticRoad:对抗条件下的综合Panoptic道路分割

Hidetomo Sakaino
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引用次数: 6

摘要

分割成为场景理解的重要方法之一。分割在识别场景中的事物方面起着核心作用。在场景中的所有事物中,道路引导着城市和高速公路上的车辆。大多数分割模型,即语义分割、实例分割和全景分割,都专注于具有晴朗白天天气条件的图像。很少有论文涉及在敌对条件下的夜间视觉,即雾、雨、雪、强光照和灾难事件。此外,在这种不可见的条件下,进一步分割干、湿、雪等道路状况仍然具有挑战性。天气不仅会影响能见度,还会影响道路及其周围环境,道路上的障碍物,即岩石和水,会造成重大灾害。本文提出了PanopticRoad的五个基于深度学习的模块,用于对抗性条件下的路况分割:DeepReject/Scene/Snow/Depth/ road。它们的整合有助于在天气和物理限制的情况下改善当地道路状况的故障。利用有雾和大雪的夜间道路图像和灾难图像,PanopticRoad在稳定性、鲁棒性和准确性方面优于最先进的基于全景和基于自适应域的深度学习模型。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
PanopticRoad: Integrated Panoptic Road Segmentation Under Adversarial Conditions
Segmentation becomes one of the most important methods for scene understanding. Segmentation plays a central role in recognizing things and stuff in a scene. Among all things and stuff in a scene, the road guides vehicles in the cities and highways. Most segmentation models, i.e., semantic, instance, and panoptic segmentation, have focused on images with clear daytime weather conditions. Few papers have tackled nighttime vision under adversarial conditions, i.e., fog, rain, snow, strong illumination, and disaster events. Moreover, further segmentation of road conditions like dry, wet, and snow is still challenging under such invisible conditions. Weather impacts not only visibility but also roads and their surrounding environment, causing vital disasters with obstacles on the road, i.e., rocks and water. This paper proposes PanopticRoad with five Deep Learning-based modules for road condition segmentation under adversarial conditions: DeepReject/Scene/Snow/Depth/Road. Integration of them helps refine the failure of local road conditions where weather and physical constraints are applied. Using foggy and heavy snowfall nighttime road images and disaster images, the superiority of PanopticRoad is demonstrated over state-of-the-art panoptic-based and adaptive domain-based Deep Learning models in terms of stability, robustness, and accuracy.
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