Retinex model has been applied to low-light image enhancement in many existing methods. More appropriate decomposition of a low-light image can help achieve better image enhancement. In this paper, we propose a new pixel-level non-local Haar transform based illumination and reflectance decomposition method (NLHD). The unique low-frequency coefficient of Haar transform on each similar pixel group is used to reconstruct the illumination component, and the rest of all high-frequency coefficients are employed to reconstruct the reflectance component. The complete similarity of pixels in a matched similar pixel group and the simple separable Haar transform help to obtain more appropriate image decomposition; thus, the image is hardly sharpened in the image brightness enhancement procedure. The exponential transform and logarithmic transform are respectively implemented on the illumination component. Then a minimum fusion strategy on the results of these two transforms is utilized to achieve more natural illumination component enhancement. It can alleviate the mosaic artifacts produced in the darker regions by the exponential transform with a gamma value less than 1 and reduce information loss caused by excessive enhancement of the brighter regions due to the logarithmic transform. Finally, the Retinex model is applied to the enhanced illumination and reflectance to achieve image enhancement. We also develop a local noise level estimation based noise suppression method and a non-local saturation reduction based color deviation correction method. These two methods can respectively attenuate noise or color deviation usually presented in the enhanced results of the extremely dark low-light images. Experiments on benchmark datasets show that the proposed method can achieve better low-light image enhancement results on subjective and objective evaluations than most existing methods.
翻译:在很多现有方法中,对低光直流图像的提升应用了视光外观模型。 更适当的低光图像解析可以帮助实现更好的图像提升。 在本文中, 我们提议一个新的像素级非本地的Haar变异光化和反射分解法。 每个相类似的像素组中, 独特的低频变异系数Haar变异都用于重建光化组件, 其余所有高频的噪音系数都用于重建反射部分。 类似像素组的像素完全相似, 而简单的 等离差变图像通常会帮助获得更合适的图像变异; 因此, 在图像亮度增强程序中, 图像几乎没有更精确化。 指数变异和对正数变异分别执行。 然后, 使用关于这两种变异异变结果的最小化策略来重建反光部分。 它可以缓解更暗区域的变异常结果, 以更低色变异性变光值为相似的像组群群群, 和简单的变异变异性变变图帮助获得更接近更合适的图像; 因此, 以更精确的变异化方法将更精确的变更精确的变换方法将显示到更精确到更精确的变异化, 以更精确的变异化方法将更精确的变换更精确的变换更精确到更精确到更精确的方法 。