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A Novel Adaptive Multi-focus Image Fusion Algorithm Based on PCNN and Sharpness

机译:基于PCNN和清晰度的新型自适应多焦点图像融合算法

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摘要

A novel adaptive multi-focus image fusion algorithm is given in this paper, which is based on the improved pulse coupled neural network(PCNN) model, the fundamental characteristics of the multi-focus image and the properties of visual imaging. Compared with the traditional algorithm where the linking strength, β_(ij), of each neuron in the PCNN model is the same and its value is chosen through experimentation, this algorithm uses the clarity of each pixel of the image as its value, so that the linking strength of each pixel can be chosen adaptively. A fused image is produced by processing through the compare-select operator the objects of each firing mapping image taking part in image fusion, deciding in which image the clear parts is and choosing the clear parts in the image fusion process. By this algorithm, other parameters, for example, Δ, the threshold adjusting constant, only have a slight effect on the new fused image. It therefore overcomes the difficulty in adjusting parameters in the PCNN. Experiments show that the proposed algorithm works better in preserving the edge and texture information than the wavelet transform method and the Laplacian pyramid method do in multi-focus image fusion.
机译:基于改进的脉冲耦合神经网络(PCNN)模型,多焦点图像的基本特征和视觉成像特性,提出了一种新颖的自适应多焦点图像融合算法。与PCNN模型中每个神经元的链接强度β_(ij)相同并且通过实验选择其值的传统算法相比,该算法使用图像每个像素的清晰度作为其值,因此每个像素的链接强度可以自适应选择。通过比较选择算子处理参与图像融合的每个发射映射图像的对象,确定清晰部分在哪个图像中并在图像融合过程中选择清晰部分,从而产生融合图像。通过该算法,其他参数(例如,阈值调整常数Δ)仅对新的融合图像产生轻微影响。因此,它克服了在PCNN中调整参数的困难。实验表明,与小波变换和拉普拉斯金字塔方法相比,该算法在保留边缘和纹理信息方面效果更好。

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