能见度增强器:适用于沙尘天气下扭曲的交通场景

Mourad A. Kenk, M. Hassaballah, Mohamed Abdel Hameed, Saddam Bekhet
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引用次数: 5

摘要

恶劣的天气条件,如大雪、雾、雨和沙尘暴,通过降低清晰的能见度,被认为是对相机功能的危险限制。因此,它们对用于交通场景理解的计算机视觉算法产生了不良影响,例如对交通监控至关重要的目标检测、跟踪和识别。在多雾多尘天气变化的影响下,现有的图像增强方法无法应用。提出了一种基于亮度平衡和拉普拉斯滤波的自适应视觉增强技术。整体的可见度增强过程包括三个主要部分:颜色和光照增强、反射和分量细节增强以及线性加权融合。首先,通过对每个颜色通道(红、绿、蓝)分别进行自动白平衡和伽马校正来增强图像的对比度,以实现颜色增强并优于照明。其次,利用拉普拉斯金字塔滤波器对反射分量进行处理,实现细节增强。第三,将细节增强层加回校正后的颜色层,重建出清晰的图像。定量结果和可视化分析证明了该方法的有效性。通过与现有图像增强方法的比较,客观指标的评价表明,该方法可以有效地提高模糊图像的对比度,并且在雾天和多尘情况下都有良好的效果。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Visibility Enhancer: Adaptable for Distorted Traffic Scenes by Dusty Weather
Poor weather conditions such as the presence of heavy snow, fog, rain and dust storm are considered as dangerous restrictions of the functionality of cameras via reducing clear visibility. Thus, they have bad effect on computer vision algorithms used in traffic scene understanding, such as object detection, tracking, and recognition which are vital for traffic monitoring. Current methods for image enhancement can not be utilized under the influence of weather variability from foggy to dusty situations. This paper proposes an adaptive technique for visibility enhancement based on the bright balance and Laplace filtering. The overall visibility enhancement process is composed of three main parts: color and illumination improvement, reflection and component details enhancement, and linear weighted fusion. First, the contrast of an image is enhanced by auto white balance and Gamma correction for each color channel (Red, Green, Blue) individually to achieve color enhancement and outperform the illumination. Second, the detail enhancement is achieved by the Laplace pyramid filter to process the reflection component. Third, the detail enhanced layer is added back to the corrected color layer to reconstruct the clear image. The quantitative results and visual analysis demonstrate the efficacy of the proposed technique. Comparing with the state-of-the-art image enhancement methods, the evaluation of the objective metrics have shown that the contrast of unclear images can be effectively improved by the proposed method and with well effects on both foggy and dusty situations.
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