Image Restoration on Residual Aggregation Network in Poor Weather Condition

Jing Wang
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引用次数: 1

Abstract

Image restoration in poor weather conditions can assist military combatants to efficiently and accurately perform object detection, object recognition and object tracking. Moreover, in security systems, traffic navigation, etc. it also has high application value. Aiming at the problem of image distortion caused by different poor weather conditions like dust, rain, snow, fog, haze, etc. this paper proposes a new deep neural network based image restoration technology, a residual aggregation module is constructed for extracting the detailed features. Furthermore, dense connection is applied to combine low-dimensional features and generate high-dimensional features. The experimental results show that the network achieves superior results in image de-raining(IDR) compared with Deep Detail Network(DDN) and Dual Convolutional Neural Network(DualCNN) while obtaining favorable performances in image de-noising, image de-hazing, image de-blurring, image de-raindrops and other tasks.
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恶劣天气条件下残差聚集网络图像恢复
恶劣天气条件下的图像恢复可以帮助军事作战人员高效、准确地进行目标检测、目标识别和目标跟踪。此外,在安防系统、交通导航等方面也具有很高的应用价值。针对沙尘、雨、雪、雾、霾等不同恶劣天气条件造成的图像失真问题,提出了一种新的基于深度神经网络的图像恢复技术,构建残差聚集模块提取图像的细节特征。在此基础上,利用密集连接将低维特征组合起来,生成高维特征。实验结果表明,该网络在图像去训练(IDR)方面取得了优于深度细节网络(DDN)和双卷积神经网络(DualCNN)的效果,同时在图像去噪、去雾化、去模糊、去雨滴等任务上取得了良好的性能。
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