雨水对自动驾驶车辆感知的影响分析

IF 5.3 Q1 ENGINEERING, ELECTRICAL & ELECTRONIC
Tim Brophy;Darragh Mullins;Ashkan Parsi;Jonathan Horgan;Enda Ward;Patrick Denny;Ciarán Eising;Brian Deegan;Martin Glavin;Edward Jones
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引用次数: 0

摘要

在恶劣条件下(如下雨),自动驾驶车辆的目标检测感知算法的可靠性能对于维护弱势道路使用者的安全至关重要。可见光谱相机提供了丰富的信息来源,与其他传感器相比具有成本效益;然而,在恶劣的环境条件下,它们的性能会下降。尽管人们普遍认为降雨会对计算机视觉中的目标检测性能产生不利影响,但对这一关系的详细研究相对缺乏。本文研究了降雨条件下的目标检测性能,重点关注算法性能和底层目标特征。使用公开可用的bdd100k数据集,本研究检查了多个深度学习目标检测架构的目标检测性能,分析了下雨和无雨条件下的错误类型和图像特征。此外,采用统计学方法比较图像级指标以确定统计显著性。结果表明,降雨对目标检测性能没有不利影响,在某些情况下,可以观察到更好的性能。对于某些模型,中等大小的对象在下雨条件下的检测和分类得到了改进,而大型对象的性能略有下降。误差分析表明,定位误差增加,分类误差减少。对象级分析显示,对比噪声比、熵、平均像素值、像素方差、色相、饱和度和值的变化具有统计学意义,其中色相和饱和度的变化最为显著。这项研究强调需要在数据集中进行更详细的天气标记,以充分了解降雨与目标探测之间关系的细微差别。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Analysis of the Impact of Rain on Perception in Automated Vehicle Applications
The reliable performance of object detection perception algorithms in automated vehicles under adverse conditions such as rain is critical for maintaining vulnerable road user safety. Visible-spectrum cameras provide a rich source of information and are cost-effective compared with other sensors; however, their performance can degrade under adverse environmental conditions. Despite the general consensus that the object detection performance in computer vision is adversely affected by rain, there is a relative lack of research investigating this relationship in detail. This study investigates the performance of object detection under rain conditions, focusing on algorithm performance and low-level object characteristics. Using the publicly available BDD100 k dataset, this study examines object detection performance across multiple deep-learning object detection architectures, analyzing error types and image characteristics under rain and no rain conditions. In addition, statistical methods were used to compare image-level metrics to determine statistical significance. The results reveal that rain is not detrimental to object detection performance, and in some cases, better performance is observed. For some models, medium-sized objects experience improved detection and classification under rain conditions, while large objects experience a slight decline in performance. The error analysis shows an increase in localization errors and a decrease in classification errors. The object-level analysis revealed statistically significant changes in the contrast-to-noise ratio, entropy, mean pixel value, pixel variance, hue, saturation, and value, with hue and saturation experiencing the most significant changes. This study highlights the need for more detailed weather labeling in datasets to fully understand the nuances of the relationship between rain and object detection.
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来源期刊
CiteScore
9.60
自引率
0.00%
发文量
25
审稿时长
10 weeks
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