一种用于增强相机数据的GAN亮度控制方法

Tan Phan, D. Nguyen
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引用次数: 0

摘要

要制造一辆自动驾驶汽车,需要应用许多技术。全自动驾驶汽车最重要的组成部分是物体检测系统。这个系统负责探测街道上的障碍物。然而,这些检测模型仍然面临着许多困难,例如无法在极端条件下工作(暴风雨、夜间、混乱的道路等)。为了解决这个问题的一个方面,在本文中,我们提出了一种增强方法,通过使用LCcycleGAN(一种亮度条件不配对图像到图像的转换方法)从白天图像生成夜间图像来创建更多数据,反之亦然,该框架是CycleGAN[1]和条件GAN[2]的融合。为了评估我们的方法,我们测量了YoloV3[3]在我们收集的数据集(和增强数据)上的性能,这些数据集由越南街道的昼夜图像组成,这些图像通常非常混乱和极端。我们的方法将基础车辆检测模型的AP性能从0.5提高到0.56。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
An Alternative Lightness Control with GAN for Augmenting Camera Data
To build an autonomous car, many technologies have to be taken into application. The most important component of a fully self-driving car is the object detection system. This system is responsible for detecting obstacles on the street. However, these detection models still face many difficulties such as unable to work on extreme conditions (storm, night, chaotic road,…). To tackle one aspect of this problem, in this paper we propose an augmentation method that creates more data by generating night images from day images and vice versa using LCcycleGAN, a Lightness conditional Unpaired Image-to-Image Translation approach, this framework is the fusion of CycleGAN [1] and conditional GAN [2]. To evaluate our method, we measure performance of YoloV3 [3] on our collected dataset (and augmented data) consists of day and night images of Vietnamese streets which are often highly chaotic and extreme. Our method increases AP of base vehicle detection model's performance from 0.5 to 0.56.
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