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A Review of the Impacts of Defogging on Deep Learning-Based Object Detectors in Self-Driving Cars

机译:对自动驾驶汽车中深层学习对象探测器的影响综述

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Autonomous Vehicle (AV) technologies are faced with several challenges under adverse weather conditions such as snow, fog, rain, sun glare, etc. Object detection under adverse weather conditions is one of the most critical issues facing autonomous driving. Several state-of-the-art Convolutional Neural Network (CNN) based object detection algorithms have been employed in autonomous vehicles and promising results have been established under favorable weather conditions. However, results from the literature show that the accuracy and performance of these CNN-based object detectors under adverse weather conditions tend to diminish rapidly. This problem continues to raise major concerns in the research and automotive community. In this paper, the foggy weather condition is our case study. The goal of this work is to investigate how defogging and restoring the quality of foggy images can improve the performance of CNN-based real-time object detectors. We employed a Cycle consistent Generative Adversarial Network (CycleGAN)-based image fog removal technique [1] to defog, improve the visibility and the quality of the foggy images. We train our YOLOv3 algorithm using the Karlsruhe Institute of Technology and Toyota Technological Institute (KITTI) dataset [2]. Using the trained YOLOv3 network, we perform object detection on the original foggy images and restored images. We compare the performances of the object detector under no fog, moderate fog, and heavy fog conditions. Our results show that detection performance improved significantly under moderate fog and there was no significant improvement under heavy fog conditions.
机译:自主车辆(AV)技术面临着在恶劣的天气条件下的几个挑战,如雪,雾,雨,太阳眩光等。在恶劣天气条件下的对象检测是自主驾驶的最关键问题之一。基于最先进的卷积神经网络(CNN)的物体检测算法已经采用自主车辆,并且在有利的天气条件下已经建立了有希望的结果。然而,文献的结果表明,基于CNN的物体探测器在恶劣天气条件下的准确性和性能趋于迅速减少。这个问题继续提高研究和汽车社区的主要问题。在本文中,有雾的天气状况是我们的案例研究。这项工作的目标是调查如何违背和恢复雾图像的质量可以提高基于CNN的实时对象探测器的性能。我们使用一个循环一致的生成对冲网络(CuStcan)基础的图像雾清除技术[1]以缺点,提高有雾图像的可见性和质量。我们使用Karlsruhe技术研究所和丰田技术研究所(Kitti)DataSet [2]培训我们的Yolov3算法。使用训练有素的yolov3网络,我们在原始雾图像上执行对象检测并恢复图像。我们将物体探测器的性能进行比较在没有雾,中等雾和沉重的雾条件下的表现。我们的研究结果表明,检测性能在中度雾下显着提高,重雾条件下没有显着改善。

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