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Microscopy image fusion algorithm based on saliency analysis and adaptive m-pulse-coupled neural network in non-subsampled contourlet transform domain

机译:非显着轮廓波变换域中基于显着性分析和自适应m脉冲耦合神经网络的显微图像融合算法

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Microscopy image fusion, as a new item in related research field, has been extensively used in integrated-circuit defect detection and intaglio-plate-microstructure observation. In this article, a novel microscopy image fusion algorithm based on saliency analysis and adaptive m-pulse-coupled neural network in non-subsampled contourlet transform domain is proposed, in which each original image can be decomposed into a low-frequency subband and a series of high-frequency subbands. A new measurement technique based on image variance permutation entropy is designed for fusion of the low-frequency subbands, and a novel sum-modified Laplacian is chosen as external stimulus which motivates the adaptive m-pulse-coupled neural network for the high-frequency subbands. Yet, the linking strength of the m-pulse-coupled neural network is determined by five features of the saliency map. Then, the selection rules of different subbands are worked based on the corresponding weight measures. Finally, the fusion image is reconstructed via inverse non-subsampled contourlet transform. Experimental results reveal that the proposed algorithm achieves better fused image quality than other traditional representative ones in the aspects of objective evaluation and subjective visual.
机译:显微镜图像融合作为相关研究领域中的一个新项目,已被广泛用于集成电路缺陷检测和凹版微结构观察。本文提出了一种基于显着性分析和自适应m脉冲耦合神经网络的非下采样轮廓波变换域显微图像融合算法,该算法可以将每个原始图像分解为一个低频子带和一系列高频子带。设计了一种基于图像方差置换熵的新测量技术,用于低频子带的融合,并选择了一种新颖的总和修正的拉普拉斯算子作为外部激励,从而激励了高频子带的自适应m脉冲耦合神经网络。 。然而,m脉冲耦合神经网络的链接强度由显着图的五个特征确定。然后,基于相应的权重度量来工作不同子带的选择规则。最终,融合图像通过逆非二次采样contourlet变换重建。实验结果表明,该算法在客观评价和主观视觉方面比传统的代表性算法具有更好的融合图像质量。

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