A NSST-based infrared and visible image fusion method focusing on luminance effect

Meng Cai, Xinlong Liu
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Abstract

Generally, the fused image shows fully the actual situation of the scene and contains more detailed information. However, most fusion methods miss the details of the fusion image and confuses the contrast of the raw scene. To solve this problem, we propose a fusion algorithm based on non-subsampled shearlet transform (NSST) that particularly pays attention to the influence of light intensity when calculating the fusion coefficient. The method first decomposes the input images into high- and low-frequency coefficients through NSST. Then regarding the high-frequency coefficients, we calculate the phase consistency (PC) of the decomposed images, and the results are combined with the adaptive simplified pulse coupled neural network (SPCNN) to compose parameter. Meanwhile, for the low-frequency coefficient, the optimal brightness entropy (OBE) of the input images is obtained as the fusion basis. The next step is to fuse the high- and low-frequency sub-band coefficients by the designed fusion rule, and obtain final image through NSST inverse transformation. Experiments show that our method not only keeps well the image details and maintains the overall image luminance while taking care of the overall effect of the image, but also gets a leading position in some evaluation indicators.
一种基于nst的聚焦亮度效应的红外与可见光图像融合方法
一般来说,融合后的图像能更充分地显示场景的实际情况,包含更详细的信息。然而,大多数融合方法忽略了融合图像的细节,混淆了原始场景的对比度。为了解决这一问题,我们提出了一种基于非下采样shearlet变换(NSST)的融合算法,该算法在计算融合系数时特别注意光强的影响。该方法首先通过NSST将输入图像分解为高频系数和低频系数。然后针对高频系数,计算分解后图像的相位一致性(PC),并结合自适应简化脉冲耦合神经网络(SPCNN)组成参数。同时,对于低频系数,获得输入图像的最优亮度熵(OBE)作为融合基础。下一步,根据设计的融合规则对高低频子带系数进行融合,通过NSST逆变换得到最终图像。实验表明,该方法在兼顾图像整体效果的同时,很好地保留了图像的细节,保持了图像的整体亮度,在一些评价指标上也取得了领先地位。
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