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Fusion technique for multi-focus images based on NSCT-ISCM

机译:基于NSCT-ISCM的多焦点图像融合技术

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摘要

The issue of fusing multi-focus images is meaningful and undoubtedly suitable for visual effects and further image processing tasks. In this study, a novel multi-focus image fusion technique based on non-subsampled contourlet transform (NSCT) and improved spiking cortical model (ISCM) is presented. Compared with the current multi-resolution geometric analysis (MRGA) tools, NSCT not only has much better competences of information capturing and feature extracting, but also overcomes the drawback of shift-invariance lacking from which the contourlet transform suffers. As a recently developed biological model, SCM combines the advantages of both pulse coupled neural network (PCNN) and intersecting cortical model (ICM), and has been considered to be an optimal neuron network model recently. The proposed technique is composed of three main phases. Firstly, by using NSCT, each source image is decomposed into a low-frequency sub-image and a series of high-frequency sub-images in different directions. Then, the classic SCM is improved to be ISCM with a less complex structure and much more effective function mechanism, which is responsible for obtaining the fused sub-images. Finally, inverse NSCf is utilized to reconstruct the final fused image. The NSCT-ISCM based fusion algorithm is devised. Experimental results indicate that the proposed technique is superior to other current popular ones in both aspects of subjective visual and objective performance. (C) 2015 Elsevier GmbH. All rights reserved.
机译:融合多焦点图像的问题是有意义的,并且无疑适合于视觉效果和进一步的图像处理任务。在这项研究中,提出了一种基于非下采样轮廓波变换(NSCT)和改进的峰值皮质模型(ISCM)的新型多焦点图像融合技术。与当前的多分辨率几何分析(MRGA)工具相比,NSCT不仅具有更好的信息捕获和特征提取能力,而且还克服了轮廓波变换缺乏位移不变性的缺点。作为最近开发的生物学模型,SCM结合了脉冲耦合神经网络(PCNN)和相交皮质模型(ICM)的优点,并且最近被认为是一种最佳的神经元网络模型。所提出的技术包括三个主要阶段。首先,通过使用NSCT,将每个源图像分解为不同方向上的低频子图像和一系列高频子图像。然后,经典的SCM被改进为ISCM,具有较少的复杂结构和更有效的功能机制,负责获得融合的子图像。最后,逆NSCf用于重建最终的融合图像。设计了基于NSCT-ISCM的融合算法。实验结果表明,所提出的技术在主观视觉和客观表现两个方面均优于其他当前流行的技术。 (C)2015 Elsevier GmbH。版权所有。

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