深度学习用于除雾的比较与分析

Rajat Tiwari
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引用次数: 0

摘要

模糊图像是由空气光线不均匀、暗度、对比度、饱和度和衰减等环境因素引起的。由于能见度有限,各种应用程序,如ITS,跟踪系统,目标检测设备等可能会失败。图像去雾是用来减少天气条件的影响,改善图像的图像影响,使后期处理更容易。各种方法被用来创建高质量的图像与改进的颜色,照明和边界,这是自由的光晕伪影。为了消除雾霾,大多数已知的去雾算法采用传统的散射模型,即先验方法。该研究将目前基于深度学习的去雾方法与现有的最先进技术进行了比较。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Comparison and analysis of deep learning for Dehazing
Hazy image is caused by environmental factors such as uneven air light, darkness, contrast, saturation, and attenuation. Due to limited visibility, various applications such as ITS, tracking systems, object detection devices, and others may fail. Image dehazing is used to minimise the effects of weather conditions and improve the pictorial impacts of the image which make post-processing easier. Various approaches are utilized to create high-quality images with improved colour, lighting, and boundaries which are free of halo artifacts. To eliminate the haze, most known de-hazing algorithms employ a conventional scattering model, prior’s methods. This research compares a current de-hazing method based on deep learning to existing state-of-the-art technologies.
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