利用夜间图像转换提高高级驾驶辅助系统的夜间能见度

H. Lakmal, M. B. Dissanayake
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引用次数: 1

摘要

汽车制造商的目标是通过整合不同的高级驾驶辅助系统(ADAS)来提高驾驶员和乘客的安全性。大多数ADAS都是基于视觉的,为了正确操作,这些系统需要清晰的视觉,这在夜间很难获得。考虑到这一限制,该研究探讨了将夜间图像转换为可用于ADAS的清晰可见的白天图像的可能性,而不是质量较差的夜间图像。尽管存在许多基于深度学习的技术来在两个域之间转换图像,但大多数技术在训练过程中高度依赖于像素对像素的配对数据集。开发这样的数据集是具有挑战性的,特别是在动态的路边环境中。因此,本研究提出无监督深度学习与流行的循环gan模型来解决这个问题。另一个具有挑战性的任务是获取Cycle-GAN生成图像的质量。由于不存在像素对像素的成对图像,为了比较再生图像的质量,采用无参考图像空间质量评价技术(Blind reference - eless Image Spatial quality Evaluator, BRISQUE)对模型的性能进行评价。训练后的Cycle-GAN合成输出的平均BRISQUE分数为28.0416,而原始白天图像的平均BRISQUE分数为26.2156。这表明Cycle-GAN能够生成与实际白天图像非常相似的未配对夜间图像的合成白天图像。本研究的源代码和数据集可在https://www.github.com/isurushanaka/Unpaired-N2D上公开获取。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Improving the Visibility at Night for Advanced Driver Assistance Systems Using Night-to-Day Image Translation
Automobile manufacturers are targeting to increase the safety of drivers and passengers by incorporating different Advanced Driver Assistance Systems (ADAS). Most of these ADAS are vision-based and in order to operate them properly, these systems require a clear vision which is challenging to acquire during the night. Considering this limitation, the study presented explores the possibility of translating night-time images to clear and visible day-time images which can be used for ADAS instead of poor-quality night-time images. Even though there exist many deep-learning-based techniques to transform images between two domains, most of them highly depend on pixel-to-pixel paired datasets during training. It is challenging to develop such a dataset, particularly in dynamic roadside environments. Hence, this study proposes unsupervised deep learning with the popular Cycle-GAN model to cater the problem. Another challenging task is accessing the quality of the Cycle-GAN generated images. Since there do not exist pixel-to-pixel paired images, to compare the quality of the regenerated images, Blind Referenceless Image Spatial Quality Evaluator (BRISQUE), a referenceless image quality evaluation technique, is utilised to evaluate the performance of the model. The synthesized output of the trained Cycle-GAN indicated an average BRISQUE score of 28.0416, whereas that of the original day-time images was 26.2156. This exhibits that the Cycle-GAN was able to generate synthesised day-time images with unpaired night images with significant similarity to the actual day-time images. The source code along with the dataset of this study is publicly available at https://www.github.com/isurushanaka/Unpaired-N2D.
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