ARODNet: adaptive rain image enhancement object detection network for autonomous driving in adverse weather conditions

IF 1.1 4区 工程技术 Q4 OPTICS Optical Engineering Pub Date : 2023-11-10 DOI:10.1117/1.oe.62.11.118101
Yongsheng Qiu, Yuanyao Lu, Yuantao Wang, Haiyang Jiang
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Abstract

The current field of autonomous driving has achieved superior object detection performance in good weather conditions. However, the environment sensing capability of autonomous vehicles is severely affected in rainfall traffic environments. Although deep-learning-based image derain algorithms have made significant progress, integrating them with high-level vision tasks, such as object detection, remains challenging due to the significant differences between the derain and object detection algorithms. Additionally, the accuracy of object detection in real rain traffic environments is significantly reduced due to the domain transfer problem between the training dataset and the actual rain environment. To address this domain-shifting problem, we propose an adaptive rain image enhancement object detection network for autonomous driving in adverse weather conditions (ARODNet). This network architecture consists of an image adaptive enhancement module, an image derain module, and an object detection module. The baseline detection module (CBAM-YOLOv7) is built by incorporating the YOLOv7 object detection network into a feed-forward convolutional neural network, and it includes an attention module (CBAM). We propose a domain adaptive rain image enhancement module, DRIP, for low-quality images acquired under heavy rainfall conditions. DRIP enhances low-quality images on rainy days by adaptively learning multiple preprocessing weights. To remove the effects of rain patterns and fog clouds on image detection, we introduce DRIP-enhanced images into the depth estimation derain module (DeRain) to prevent rain and fog from obscuring the objects to be detected. Finally, the multistage joint training strategy is adopted to improve the training efficiency, and the object detection is performed while the image is derained. The efficacy of the ARODNet network for object detection in rainy weather traffic environments has been demonstrated through numerous quantitative and qualitative studies.
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ARODNet:用于恶劣天气条件下自动驾驶的自适应雨图像增强目标检测网络
目前的自动驾驶领域已经在良好的天气条件下实现了卓越的目标检测性能。然而,在降雨交通环境下,自动驾驶汽车的环境感知能力受到严重影响。尽管基于深度学习的图像derain算法已经取得了重大进展,但由于derain和目标检测算法之间的显着差异,将它们与高级视觉任务(如目标检测)集成仍然具有挑战性。此外,由于训练数据集与实际雨环境之间的域转移问题,在真实雨交通环境中,目标检测的准确性显著降低。为了解决这一领域转移问题,我们提出了一种用于恶劣天气条件下自动驾驶的自适应雨图像增强目标检测网络(ARODNet)。该网络结构由图像自适应增强模块、图像偏移模块和目标检测模块组成。将YOLOv7目标检测网络整合到前馈卷积神经网络中构建基线检测模块(CBAM-YOLOv7),其中包含一个注意模块(CBAM)。针对在强降雨条件下获取的低质量图像,我们提出了一个域自适应降雨图像增强模块,DRIP。DRIP通过自适应学习多个预处理权值来增强下雨天低质量图像。为了消除降雨模式和雾云对图像检测的影响,我们将雨滴增强图像引入深度估计derain模块(derain),以防止雨和雾遮挡待检测物体。最后,采用多阶段联合训练策略提高训练效率,在提取图像的同时进行目标检测。ARODNet网络在雨天交通环境中目标检测的有效性已经通过大量的定量和定性研究得到了证明。
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来源期刊
Optical Engineering
Optical Engineering 工程技术-光学
CiteScore
2.70
自引率
7.70%
发文量
393
审稿时长
2.6 months
期刊介绍: Optical Engineering publishes peer-reviewed papers reporting on research and development in optical science and engineering and the practical applications of known optical science, engineering, and technology.
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