Jamwal Anupama, Jain Shruti
Department of Electronics and Communication Engineering, Jaypee University of Information Technology, Solan, Himachal Pradesh, India.
Curr Med Imaging. 2024 Jan 26. doi: 10.2174/0115734056269529231205101519.
Empirical curvelet and ridgelet image fusion is an emerging technique in the field of image processing that aims to combine the benefits of both transforms.
The proposed method begins by decomposing the input images into curvelet and ridgelet coefficients using respective transform algorithms for Computerized Tomography (CT) and magnetic Resonance Imaging (MR) brain images.
An empirical coefficient selection strategy is then employed to identify the most significant coefficients from both domains based on their magnitude and directionality. These selected coefficients are coalesced using a fusion rule to generate a fused coefficient map. To reconstruct the image, an inverse curvelet and ridgelet transform was applied to the fused coefficient map, resulting in a high-resolution fused image that incorporates the salient features from both input images.
The experimental outcomes on real-world datasets show how the suggested strategy preserves crucial information, improves image quality, and outperforms more conventional fusion techniques. For CT Ridgelet-MR Curvelet and CT Curvelet-MR Ridgelet, the authors' maximum PSNRs were 58.97 dB and 55.03 dB, respectively. Other datasets are compared with the suggested methodology.
The proposed method's ability to capture fine details, handle complex geometries, and provide an improved trade-off between spatial and spectral information makes it a valuable tool for image fusion tasks.
经验性曲波和脊波图像融合是图像处理领域中一种新兴技术,旨在结合这两种变换的优势。
所提出的方法首先使用针对计算机断层扫描(CT)和磁共振成像(MR)脑图像的各自变换算法,将输入图像分解为曲波和脊波系数。
然后采用一种经验系数选择策略,根据其幅度和方向性从两个域中识别出最重要的系数。使用融合规则将这些选定的系数合并,以生成融合系数图。为了重建图像,对融合系数图应用逆曲波和脊波变换,从而得到一个包含来自两个输入图像显著特征的高分辨率融合图像。
在真实世界数据集上的实验结果表明了所建议的策略如何保留关键信息、提高图像质量,并优于更传统的融合技术。对于CT脊波 - MR曲波和CT曲波 - MR脊波,作者的最大峰值信噪比分别为58.97 dB和55.03 dB。其他数据集也与所建议的方法进行了比较。
所提出方法捕捉精细细节、处理复杂几何形状以及在空间和光谱信息之间提供更好权衡的能力,使其成为图像融合任务的一个有价值工具。