Low-light Color Image Enhancement based on Dark Channel Prior with Retinex Model

Sameena, E. Sreenivasulu
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Abstract

Low light image enhancement plays the crucial role in night vision applications, and road monitoring systems of artificial intelligence assisted vehicles. But the conventional methods are unable to remove the darkness from source images and resulted in poor visibility performance. Thus, this article proposed an advanced low light image enhancement approach using dark channel prior (DCP). Initially, light reflection (retinex) angles are identified and red channel estimation was used to restore light direction attention. Further, DCP is used to identify the background darkness region with light illumination properties. Then, new anthropic light properties were generated by using transmission map estimation and refinement. Further, image light radiance is recovered by using this updated transmission map values, which generates darkness removed image. Finally, denoising operation is performed to get the best visual quality output image. The simulations conducted on ExDark dataset shows that the proposed method resulted in superior subjective and objective performance as compared to state of art approaches.
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基于暗通道先验的Retinex模型弱光彩色图像增强
弱光图像增强在夜视应用和人工智能辅助车辆道路监控系统中起着至关重要的作用。但是传统的方法无法去除源图像中的黑暗,导致图像的可见性较差。为此,本文提出了一种基于暗通道先验(DCP)的弱光图像增强方法。首先,识别光反射(视网膜)角度,并使用红色通道估计来恢复光的方向注意力。进一步,利用DCP识别具有光照特性的背景暗区。然后,通过透射图估计和细化,生成新的人类光属性。利用更新后的透射图值恢复图像的亮度,生成去暗图像。最后,进行去噪处理,得到视觉质量最好的输出图像。在ExDark数据集上进行的仿真表明,与最先进的方法相比,所提出的方法具有优越的主观和客观性能。
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