基于权值归一化的交叉双边和滚动制导滤波图像融合

Q4 Medicine
D. C. Lepcha, Bhawna Goyal, Ayush Dogra
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引用次数: 4

摘要

图像融合是将源图像中的互补信息合并为单个融合图像的方法。图像融合在当前场景中有许多应用,如遥感、医学诊断、机器视觉系统、天文学、机器人、军事单位、生物识别和监视。在这种情况下,多传感器或多焦点设备捕获特定场景的图像,这些图像在信息内容的上下文中彼此互补。通过应用算法公式,通过融合过程将互补图像的细节组合成单个图像。图像融合的主要目标是通过最小化图像细节的损失并通过这样做来减少最终图像中的伪影,从主图像或源图像向融合图像获取更多和适当的信息。在本文中,我们提出了一种新的方法来融合图像,通过应用交叉双边滤波器来处理相邻像素的灰度相似性和几何接近性,而不平滑边缘。然后,通过滚动引导滤波器对通过从原始图像中减去交叉双边滤波器图像输出而获得的详细图像进行滤波,以进行比例感知操作。特别地,它去除了小规模的结构,同时保留了图像的其他内容,并成功地恢复了详细图像的边缘。最后,使用加权计算算法和权重归一化对图像进行了融合。这些结果已经得到了主观和定量的验证,并与现有的各种最先进的方法进行了比较。结果表明,该方法优于现有的图像融合方法。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Image Fusion based on Cross Bilateral and Rolling Guidance Filter through Weight Normalization
Image Fusion is the method which conglomerates complimentary information from the source images to a single fused image . There are numerous applications of image fusion in the current scenario such as in remote sensing, medical diagnosis, machine vision system, astronomy, robotics, military units, biometrics, and surveillance. In this case multi-sensor or multi-focus devices capture images of the particular scene which are complementary in the context of information content to each other. The details from complementary images are combined through the process of fusion into a single image by applying the algorithmic formulas. The main goal of image fusion is to fetch more and proper information from the primary or source images to the fused image by minimizing the loss of details of the images and by doing so to decrease the artifacts in the final image. In this paper, we proposed a new method to fuse the images by applying a cross bilateral filter for gray level similarities and geometric closeness of the neighboring pixels without smoothing edges. Then, the detailed images obtained by subtracting the cross bilateral filter image output from original images are being filtered through the rolling guidance filter for scale aware operation. In particular, it removes the small-scale structures while preserving the other contents of the image and successfully recovers the edges of the detailed images. Finally, the images have been fused using a weighted computed algorithm and weight normalization. The results have been validated and compared with various existing state-of-the-art methods both subjectively and quantitatively. It was observed that the proposed method outperforms the existing methods of image fusion.
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来源期刊
Open Neuroimaging Journal
Open Neuroimaging Journal Medicine-Radiology, Nuclear Medicine and Imaging
CiteScore
0.70
自引率
0.00%
发文量
3
期刊介绍: The Open Neuroimaging Journal is an Open Access online journal, which publishes research articles, reviews/mini-reviews, and letters in all important areas of brain function, structure and organization including neuroimaging, neuroradiology, analysis methods, functional MRI acquisition and physics, brain mapping, macroscopic level of brain organization, computational modeling and analysis, structure-function and brain-behavior relationships, anatomy and physiology, psychiatric diseases and disorders of the nervous system, use of imaging to the understanding of brain pathology and brain abnormalities, cognition and aging, social neuroscience, sensorimotor processing, communication and learning.
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