基于Retinex的非均匀低照度图像增强方法

Retinex-based method for non-uniform low-light image enhancement

  • 摘要: 针对真实环境下采集的图像可能存在亮度和对比度低、照度非均匀等质量退化问题,提出了一种基于Retinex理论的非均匀低照度图像增强方法。该方法首先将输入图像从RGB(red, green, blue)空间转换至HSV(hue, saturation, value)空间,选取V分量进行增强处理;然后对V分量通过组合窗口滤波实现Retinex分解,分别采用侧窗滤波和全窗滤波处理图像的边缘和纹理,从而获得局部平滑且结构保留的照度分量;接着对于照度分量,设计了一种基于二次曲线形式的亮度变换方法进行间接调整,以有效增强低照度并校正非均匀照度;对于反射分量,采用混合滤波实现噪声抑制和边缘细节锐化;最后将增强后的照度分量和反射分量重新组合得到增强后的V分量,并转换回RGB空间获得最终的增强图像。实验结果表明,该方法的NIQE(natural image qualityevaluator)、NIQMC(no-reference image quality metric)、CEIQ(content-enhanced image quality)和Entropy评价指标分别为2.747、5.380、3.432和7.476,优于现有大多数图像增强算法。该方法具有更好的亮度和对比度增强性能,同时能够有效校正图像照度的非均匀性,使得增强图像视觉效果更清晰,纹理细节更丰富。

     

    Abstract: Aiming at the quality degradation problems such as low brightness and contrast, non-uniform illumination of images captured in real environments, a non-uniform low illumination image enhancement algorithm based on Retinex theory was proposed. Firstly, the original image was converted from RGB(red, green, blue) space to HSV(hue, saturation, value) space by the algorithm, and the V-component was extracted for enhancement processing. The Retinex decomposition was implemented by the algorithm through combined window filtering, with side window filtering and full window filtering being used for the edge and texture of the image respectively to obtain a locally smooth and structure-preserving illuminance component. For the illuminance component, a luminance transformation method based on the quadratic curve is used for indirect adjustment to effectively enhance the low illuminance and correct the non-uniform illuminance. For the reflection component, hybrid filtering was used to suppress noise and sharpen edge details. Finally, the enhanced illumination component and reflectance component were recombined to obtain the enhanced V-component, and then converted back to RGB space to obtain the final enhanced image. The experimentalresults show that the NIQE(natural image qualityevaluator), NIQMC(no-reference image quality metric), CEIQ(content-enhanced image quality) and Entropy metrics for this method are 2.747, 5.380, 3.432 and 7.476, respectively, which are superior to most existing image enhancement algorithms. The proposed algorithm not only enhances the brightness and contrast, but also effectively corrects the non-uniformity of image illumination, making the visual effect clearer and texture details richer.

     

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