基于改进模糊C均值聚类的图像融合算法

Image Fusion Algorithm Based on Improved Fuzzy C-means Clustering

  • 摘要: 为了更好地突出红外与可见光融合图像中的目标信息,保留更多的纹理细节信息,提出了一种基于非下采样剪切波变换(non-subsample shearlet transform,NSST)域结合脉冲发放皮层模型(spiking cortical model,SCM)与改进的模糊C均值聚类(fuzzy C-means clustering,FCM)的红外与可见光图像融合算法。首先,用改进的FCM提取源红外图像中的红外目标信息;然后,将得到的红外图像与可见光图像的目标区域和背景区域进行NSST分解,得到各自的高低频子带图像;接着,对得到的不同区域采用不同的融合策略,其中,对于高频背景区域采用SCM模型与改进赋时矩阵进行融合;最后,使用NSST逆变换,得到最终的融合图像。仿真实验证明,与其他方法相比,本文算法得到的融合图像在主观视觉上红外目标信息突出,纹理细节信息丰富,在客观评价上,其信息熵和边缘保留因子达到最优。

     

    Abstract: To obtain more prominent target information and retain more textural details in infrared and visible light fusion images, an infrared and visible light image fusion algorithm based on the non-subsample shearlet transform (NSST) domain combined with a spiking cortical model (SCM) and improved fuzzy C-means clustering model (FCM) is proposed. First, the infrared target information in the source infrared image is extracted by the FCM. Subsequently, the NSST is used to decompose the target and background areas of the infrared and visible images to obtain their own high- and low-frequency sub-band images. Subsequently, different fusion strategies are adopted for different regions, and the SCM and improved time matrix are adopted for high-frequency background regions. The final fused image is obtained by using the NSST inverse transform. Simulation experiments show that, compared with other methods, the fusion image obtained by this algorithm has a prominent infrared target and intricate texture details in subjective vision, and its information entropy and edge retention factor are optimal for objective evaluation.

     

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