基于深度神经网络的立体视觉辅助图像去雾

Jeong-Yun Na, Kuk-jin Yoon
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引用次数: 5

摘要

雾霾引起的图像劣化是影响计算机视觉算法性能的因素之一。雾霾成分吸收和反射来自物体的反射光,扭曲原始辐照度。距离摄像机越远,它就越容易变质。因此,通过估计雾霾沿距离的分布来去除雾霾的研究已经开始。在本文中,我们使用卷积神经网络同时进行深度估计和基于立体图像的雾霾去除,深度信息有助于提高雾霾去除的性能。我们提出了一个多任务网络,其中编码器通过使用两个解码器进行深度估计和去雾同时学习深度信息和去雾特征。网络的学习是基于立体图像,需要大量的左右模糊图像。然而,现有的模糊图像数据集由于被添加到室内图像的雾分量中,在现实中表现较差。因此,构建一个与距离信息相对应的霾分量组成的数据集,用于由大量立体户外驾驶图像组成的KITTI道路数据集。实验结果表明,与现有方法相比,该网络对不同程度的雾霾图像具有鲁棒的去雾性能,并通过增强雾霾模糊区域的边界对比度来提高能见度。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Stereo Vision aided Image Dehazing using Deep Neural Network
Deterioration of image due to haze is one of the factors that degrade the performance of computer vision algorithm. The haze component absorbs and reflects the reflected light from the object, distorting the original irradiance. The more the distance from the camera is, the more deteriorated it tends to be. Therefore, studies have been conducted to remove haze by estimating the distribution of haze along the distance. In this paper, we use convolution neural network to simultaneously perform depth estimation and haze removal based on stereo image, and depth information to help improve performance of haze removal. We propose a multitasking network in which the encoder learns depth information and dehazing features simultaneously by performing depth estimation and dehazing using two decoders. The learning of the network is based on a stereo image, and a large amount of left and right hazy images are required. However, existing hazy image data sets are inferior in reality because they are added to fog components in indoor images. Therefore, a data set composed of a haze component corresponding to the distance information was constructed and used in the KITTI road data set composed of a large amount of stereo outdoor driving images. Experimental results show that the proposed network has robust dehazing performance compared to existing methods for various levels of hazy images and improves the visibility by strengthening the contrast of boundaries in faint areas due to haze.
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