Digital Image Progressive Fusion Method Based on Discrete Cosine Transform

IF 0.7 Q2 MATHEMATICS Muenster Journal of Mathematics Pub Date : 2023-07-01 DOI:10.1155/2023/9905604
Jie Chen
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Abstract

The current progressive fusion methods for digital images have poor denoising performance, which leads to a decrease in image quality after progressive fusion. Therefore, a new method for digital image progressive fusion was proposed based on discrete cosine transform, and its effectiveness was verified through experiments. The experimental results show that the proposed method has a PSNR value higher than 42.13 db in image fusion, both of which are higher than the comparison method, and the fusion effect comparison also has higher image quality. In terms of fusion time, the time of the research method is lower than that of the comparison method when the data volume is between 10 and 100, while in the comparison of structural similarity, the structural similarity of the image fused by the research method is always higher than 0.83. Overall, the fusion method proposed in the study results in higher image quality and is effective in progressive digital image fusion, which is of great significance for practical digital image fusion.
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基于离散余弦变换的数字图像渐进融合方法
目前数字图像的逐行融合方法去噪性能差,导致逐行融合后图像质量下降。为此,提出了一种基于离散余弦变换的数字图像渐进融合新方法,并通过实验验证了该方法的有效性。实验结果表明,该方法在图像融合中的PSNR值均高于42.13 db,两者均高于对比方法,融合效果对比也具有更高的图像质量。在融合时间方面,当数据量在10 ~ 100之间时,研究方法的融合时间低于对比方法,而在结构相似度的比较中,研究方法融合的图像结构相似度始终高于0.83。总体而言,本文提出的融合方法具有较高的图像质量,能够有效地进行渐进式数字图像融合,对实际数字图像融合具有重要意义。
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