Image De-hazing Based on Polynomial Estimation and Steepest Descent Concept

Shilong Liu, Hongkun Wu, Ruowei Li, Md. Arifur Rahman, Xuan He, S. Liu, N. Kwok
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Abstract

Digital images captured in hazy conditions suffer from colour distortion and loss of contrast, posing difficulties in being applied for further applications. Due to the existed challenge and its great significance, a large amount of research has been conducted for image de-hazing. Among the image haze removal methods, the algorithm based on dark channel prior is proved to be the most effective. Furthermore, the introduction of guided filter has boosted its efficiency to a large extent. However, the requirement for transmission refinement and the assumption that the transmission is the same in each colour channel still make the DCP concept based methods time consuming and suffer from colour distortion. To solve this problem, an approach named as Image De-hazing Based on Polynomial Estimation and Steepest Descent Concept (IDBPESDC) is proposed, which derives the pixel-wised transmission that does not require any further refinement. Additionally, image de-hazing procedures based on the steepest descent concept are adopted so that the objective of saturation enhancement under the minimum hue change constraint is achieved. Experiments are conducted on one hundred hazy images, processed by the proposed method and four other available approaches. Results are analysed qualitatively and quantitatively, which verified the effectiveness and efficiency of the proposed algorithm.
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基于多项式估计和最陡下降概念的图像去雾
在雾霾条件下拍摄的数码图像会出现色彩失真和对比度下降的问题,给进一步应用带来困难。由于图像去雾存在的挑战和重要意义,人们对图像去雾进行了大量的研究。在图像去雾方法中,基于暗通道先验的算法被证明是最有效的。此外,导流滤波器的引入在很大程度上提高了其效率。然而,由于对传输精细化的要求和每个颜色通道的传输都是相同的假设,使得基于DCP概念的方法仍然耗时且存在颜色失真。为了解决这一问题,提出了一种基于多项式估计和最陡下降概念的图像去雾方法(IDBPESDC),该方法派生出无需进一步细化的像素化传输。采用基于最陡下降概念的图像去雾处理,在最小色相变化约束下达到饱和度增强的目的。在100幅模糊图像上进行了实验,分别用该方法和其他四种方法进行了处理。对结果进行了定性和定量分析,验证了所提算法的有效性和高效性。
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