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Application of CycleGAN-based Augmentation for Autonomous Driving at Night

机译:Crancan基增强在夜间自动驾驶的应用

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Self-driving vehicles contain a number of modules allowing them to autonomously navigate in uncertain environment. The robust, efficient, safe and accurate autonomous navigation are heavily depend on parameters of a perception module. In this paper, we consider perception module as a combination of object detection and road segmentation submodules. As a matter of fact, all of them are based on Deep learning technique. It leads to liability of a big training datasets to provide the accuracy, efficiency and robustness of a perception module for a self-driving car operating in a wide range of scenarios. This paper presents the GAN-based augmentation as a key factor allowing to improve the performances of perception. The provided research shows the comparison between classical augmentation method and CycleGAN-based method. The main focus is made on detection and segmentation problems at nights. The initial training data includes BDD100K dataset and our own one collected in winter time by means of front-view camera of a self-driving car developed in Innopolis University. The obtained results show the improvement of segmentation task in case of application of CycleGAN augmentation. However, the chosen method of GAN-based augmentation has not shown the positive influence on object detection due to appeared visual artifacts.
机译:自动驾驶车辆包含许多模块,允许它们在不确定的环境中自主导航。强大,高效,安全,准确的自主导航严重依赖于感知模块的参数。在本文中,我们将感知模块视为对象检测和道路分割子模块的组合。事实上,所有这些都是基于深度学习技术。它导致大型训练数据集的责任,为在广泛情景中运行的自动驾驶汽车提供感知模块的准确性,效率和稳健性。本文介绍了基于GaN的增强作为允许改善感知性能的关键因素。提供的研究表明了经典增强方法与基于Cryclan的方法的比较。主要重点是在夜间检测和分割问题进行。初始培训数据包括BDD100K数据集和我们自己的人,通过在史诺大大学开发的自动驾驶汽车的正视摄像头在冬季收集。在应用Conscangan增强的情况下,所获得的结果表明了分割任务的改善。然而,基于GaN的增强方法的选择方法没有显示出由于出现的视觉伪像而对物体检测的积极影响。

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