Sun Ying, Zhao Zichen, Jiang Du, Tong Xiliang, Tao Bo, Jiang Guozhang, Kong Jianyi, Yun Juntong, Liu Ying, Liu Xin, Zhao Guojun, Fang Zifan
Key Laboratory of Metallurgical Equipment and Control Technology of Ministry of Education, Wuhan University of Science and Technology, Wuhan, China.
Research Center for Biomimetic Robot and Intelligent Measurement and Control, Wuhan University of Science and Technology, Wuhan, China.
Front Bioeng Biotechnol. 2022 Apr 11;10:865820. doi: 10.3389/fbioe.2022.865820. eCollection 2022.
In order to solve the problems of poor image quality, loss of detail information and excessive brightness enhancement during image enhancement in low light environment, we propose a low-light image enhancement algorithm based on improved multi-scale Retinex and Artificial Bee Colony (ABC) algorithm optimization in this paper. First of all, the algorithm makes two copies of the original image, afterwards, the irradiation component of the original image is obtained by used the structure extraction from texture via relative total variation for the first image, and combines it with the multi-scale Retinex algorithm to obtain the reflection component of the original image, which are simultaneously enhanced using histogram equalization, bilateral gamma function correction and bilateral filtering. In the next part, the second image is enhanced by histogram equalization and edge-preserving with Weighted Guided Image Filtering (WGIF). Finally, the weight-optimized image fusion is performed by ABC algorithm. The mean values of Information Entropy (IE), Average Gradient (AG) and Standard Deviation (SD) of the enhanced images are respectively 7.7878, 7.5560 and 67.0154, and the improvement compared to original image is respectively 2.4916, 5.8599 and 52.7553. The results of experiment show that the algorithm proposed in this paper improves the light loss problem in the image enhancement process, enhances the image sharpness, highlights the image details, restores the color of the image, and also reduces image noise with good edge preservation which enables a better visual perception of the image.
为了解决低光照环境下图像增强过程中图像质量差、细节信息丢失以及亮度增强过度等问题,本文提出了一种基于改进的多尺度视网膜皮层模型(Retinex)和人工蜂群(ABC)算法优化的低光照图像增强算法。首先,该算法对原始图像进行两份复制,之后,通过对第一张图像使用基于相对全变分的纹理结构提取方法得到原始图像的照射分量,并将其与多尺度Retinex算法相结合得到原始图像的反射分量,同时利用直方图均衡化、双边伽马函数校正和双边滤波对二者进行增强。在下一部分中,通过直方图均衡化和加权引导图像滤波(WGIF)进行边缘保留来增强第二张图像。最后,通过ABC算法进行权重优化的图像融合。增强后图像的信息熵(IE)、平均梯度(AG)和标准差(SD)的平均值分别为7.7878、7.5560和67.0154,与原始图像相比的提升分别为2.4916、5.8599和52.7553。实验结果表明,本文提出的算法改善了图像增强过程中的光损失问题,提高了图像清晰度,突出了图像细节,恢复了图像颜色,并且在良好地保留边缘的同时降低了图像噪声,从而使图像具有更好的视觉效果。