用于视网膜血管造影图像锐化的bemd -非锐化掩蔽

B. Bouledjfane, L. Bennacer, M. Kahli
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引用次数: 2

摘要

图像锐化是提高血管造影视网膜图像质量必不可少的预处理步骤。这有助于血管视网膜分析,提高血管视网膜分析的质量。为此,我们提出了一种基于非锐化掩蔽(UM)和二维经验模态分解(BEMD)的图像锐化新技术。首先将图像分解为一组二维本征模态函数(bimf)和残差图像;然后,从边缘映射乘以补偿因子获得加权掩码。然后,我们将权重蒙版应用于第一模式。最后,我们通过将补偿后的BIMF1与剩余的其他模式和残差图像相加来重建锐化后的图像。该方案通过dering的步骤来克服图像锐化过程中引入的过调。实验结果表明,该方法能有效地锐化视网膜图像。
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BEMD-Unsharp Masking for retinal angiography image sharpening
Image sharpening is the essential preprocessing step when improving the angiographies retinal image quality. It is helpful for the vessel retinal analysis and for improving the quality of their. For this reason, we propose a new technique for image sharpening based on Unsharp Masking (UM), and Bidimensional Empirical Mode Decomposition (BEMD). Firstly, the image is decomposed into a set of bidimensional intrinsic mode functions (BIMFs) and the residual image. Afterward, a weighting mask is achieved from an edge map multiplied by a compensation factor. Then, we apply the weighting mask to the first mode. Finally, we perform the reconstruction of the sharpened image by summing the compensated BIMF1 with the rest of the other modes and the residual image. The proposed scheme is enhanced by means of deringing's step to overcome the overshooting introduced during image sharpening. The obtained results proved that the proposed approach is effective to sharpen retinal images.
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