融合全局与局部区域亮度的逆光图像增强算法

Backlight Image Enhancement by Fusing Images of Global and Local Region Brightness

  • 摘要: 逆光是造成图像质量降低的主要原因之一。针对逆光拍摄造成的亮度降低与细节信息损失等问题,本文提出了一种融合全局与局部区域亮度的逆光图像增强算法。通过颜色估计模型(CEM)对逆光图像进行全局增强,恢复图像细节信息。在此基础上,为避免颜色估计模型对逆光图像的局部区域进行增强时出现的“虚化”问题,建立了局部亮度保持的颜色估计模型。此外,为平衡全局与局部区域的增强性能,提出了一种基于图像局部块信息熵的自适应融合方法。实验结果验证了本文算法的有效性。

     

    Abstract: Backlight is one of the main causes of degrading image quality, which limits its applications to a large extent. To address the issues of brightness reduction and loss of detail information of backlight image, this paper proposes an image enhancement algorithm by fusing global and local brightness enhancements. Through the color estimation model (CEM) based on global statistics, the detail information of backlight image can be well restored. To eliminate the fuzzy effect on dark region of backlight image by CEM, the brightness preserving color estimation model (BPCEM) is presented. Unlike CEM, it is also shown that the problem of over enhancement on local region can be avoided by BPCEM. By taking advantages of both CEM and BPCEM model, an adaptive fusion method based on block information entropy is proposed. Thus, good balance between CEM and BPCEM can be made. Experimental results show that the proposed method has achieved competitive performance.

     

/

返回文章
返回