Kurban Rifat
Department of Computer Engineering, Abdullah Gul University, 38080 Kayseri, Turkey.
Entropy (Basel). 2023 Aug 15;25(8):1215. doi: 10.3390/e25081215.
The separate analysis of images obtained from a single source using different camera settings or spectral bands, whether from one or more than one sensor, is quite difficult. To solve this problem, a single image containing all of the distinctive pieces of information in each source image is generally created by combining the images, a process called image fusion. In this paper, a simple and efficient, pixel-based image fusion method is proposed that relies on weighting the edge information associated with each pixel of all of the source images proportional to the distance from their neighbors by employing a Gaussian filter. The proposed method, Gaussian of differences (GD), was evaluated using multi-modal medical images, multi-sensor visible and infrared images, multi-focus images, and multi-exposure images, and was compared to existing state-of-the-art fusion methods by utilizing objective fusion quality metrics. The parameters of the GD method are further enhanced by employing the pattern search (PS) algorithm, resulting in an adaptive optimization strategy. Extensive experiments illustrated that the proposed GD fusion method ranked better on average than others in terms of objective quality metrics and CPU time consumption.
使用不同相机设置或光谱带从单个源获取的图像进行单独分析非常困难,无论该源是一个还是多个传感器。为了解决这个问题,通常通过组合图像来创建包含每个源图像中所有独特信息片段的单个图像,这个过程称为图像融合。本文提出了一种简单有效的基于像素的图像融合方法,该方法通过使用高斯滤波器,根据与相邻像素的距离对所有源图像中每个像素的边缘信息进行加权。所提出的方法——差异高斯(GD),使用多模态医学图像、多传感器可见光和红外图像、多聚焦图像以及多曝光图像进行了评估,并通过使用客观融合质量指标与现有的最先进融合方法进行了比较。通过采用模式搜索(PS)算法进一步增强了GD方法的参数,从而产生了一种自适应优化策略。大量实验表明,所提出的GD融合方法在客观质量指标和CPU时间消耗方面平均比其他方法排名更靠前。