Research on Performance Limitations of Visual-based Perception System for Autonomous Vehicle under Severe Weather Conditions*

Wei Jiang, Xingyu Xing, An Huang, Junyi Chen
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引用次数: 1

Abstract

Visual-based perception systems are widely used in autonomous vehicles (AVs). In severe weather conditions, hazardous events of AVs may be induced by the performance limitations of perception system. We propose a staged analyzing method to quantitatively evaluate the performance limitations of visual-based perception system under severe weather conditions and explore the influence mechanism. In our method, the working process of visual-based perception systems is divided into two stages of image obtaining by camera and target recognition by recognition algorithm. Firstly, in image obtaining stage, the quality of images obtained in scenarios with different weather types and intensity is evaluated using monofactor analysis method. The relationship between different weather and metrics of image quality is analyzed. Secondly, in target recognition stage, metrics values of image quality and recognition results are fitted with (weighted) multiple linear regression model, and a regression model representing the influence relationship is acquired. Finally, the importance of indicators in image quality metrics is verified with BP neural network, and the performance of the regression model is analyzed with the results acquired in two example scenarios. With the obtained monofactor analysis results and the regression model, the influence mechanisms of high luminance and fog conditions are analyzed and compared, which shows the effectiveness of the method in performance limitation and its influence mechanism analysis.
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恶劣天气条件下自动驾驶汽车基于视觉感知系统性能限制研究*
基于视觉的感知系统广泛应用于自动驾驶汽车。在恶劣天气条件下,自动驾驶汽车的危险事件可能是由感知系统的性能限制引起的。提出了一种阶段性分析方法,定量评价基于视觉的感知系统在恶劣天气条件下的性能局限性,并探讨其影响机制。该方法将基于视觉的感知系统的工作过程分为相机获取图像和识别算法识别目标两个阶段。首先,在图像获取阶段,利用单因素分析方法对不同天气类型和强度场景下获得的图像质量进行评价;分析了不同天气与图像质量指标之间的关系。其次,在目标识别阶段,对图像质量度量值和识别结果进行(加权)多元线性回归模型拟合,得到一个表示影响关系的回归模型;最后,利用BP神经网络验证了指标在图像质量度量中的重要性,并通过两个示例场景的结果分析了回归模型的性能。结合得到的单因素分析结果和回归模型,分析比较了高亮度条件和雾条件的影响机理,验证了该方法在性能限制及其影响机理分析方面的有效性。
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