• Acta Photonica Sinica
  • Vol. 50, Issue 3, 180 (2021)
Xicheng LOU and Xin FENG
Author Affiliations
  • Key Laboratory of Manufacturing Equipment Mechanism Design and Control of Chongqing, College of Mechanical Engineering, Chongqing Technology and Business University, Chongqing400067, China
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    DOI: 10.3788/gzxb20215003.0310004 Cite this Article
    Xicheng LOU, Xin FENG. Infrared and Visible Image Fusion in Latent Low Rank Representation Framework Based on Convolution Neural Network and Guided Filtering[J]. Acta Photonica Sinica, 2021, 50(3): 180 Copy Citation Text show less

    Abstract

    In order to improve the visibility of fused images and solve the problems of missing edge features and fuzzy details in traditional infrared and visible image fusion algorithms, an novel image fusion algorithm in latent low rank representation framework based on convolution neural network and guided filtering was proposed. Firstly, the source images are decomposed to low-rank parts and saliency parts by latend low-rank representation. Secondly, according to the pixel activity information of source images, the weight maps are obtained through the convolution neural network. Thirdly, the weight maps are improved by guided filtering according to the source images and through that the weight maps of low-rank parts and saliency parts can be obtained respectively. Then, the weight maps are fused with low-rank parts and saliency parts of original images to obtain the low-rank part and the saliency part of fused image. Finally, the final fused image can be obtained by adding the fused low-rank part and the fused significant part. Compared with other fusion algorithms, the experimental result shows that the proposed algorithm is superior to the traditional infrared and visible image fusion algorithms in terms of subjective visual effects and objective indexes.
    minZ Z*    s.t.   X=AZ(1)

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    minZ Z*    s.t.   X=XZ(2)

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    minZ Z*    s.t.   XO=XO, XHZ(3)

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    minZ, E Z*+λE1    s.t.   XO=XO, XHZ+E(4)

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    minZ, L, E Z*+L*+λE1   s.t.   X=XZ+LX+E(5)

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    vi+1=0.9vi-0.0005αwi-αLwi(6)

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    softmaxzi=ezic=1Cezc(7)

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    qi=akIi+bk   iωk(8)

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    Eak, bk=iωkakIi+bk-pi2+ϵak2(9)

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    ak=1ωiωkIipi-μkp¯kσk2+ϵ(10)

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    bk=p¯k-akμk(11)

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    ak=σk2σk2+ϵ(12)

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    bk=1-akμk(13)

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    qi=1ωkωiakIi+1ωkωibk(14)

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    qi=1ωkωiσk2σk2+ϵpi+1ωkωi1-akμk(15)

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    qi=pi(16)

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    qi=1ωkωipk(17)

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    Pnk=1if ωnk=maxω1k, ω2k0otherwise     n=1,2(18)

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    W1lrr=Gr1, ε1P1, I1  W2lrr=Gr1, ε1P2, I2(19)

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    W1s=Gr2, ε2P1, I1  W2s=Gr2, ε2P2, I2(20)

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    Ilrr=W1lrrI1lrr+W2lrrI2lrr(21)

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    Is=W1sI1s+W2sI2s(22)

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    I=Ilrr+Is(23)

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    Xicheng LOU, Xin FENG. Infrared and Visible Image Fusion in Latent Low Rank Representation Framework Based on Convolution Neural Network and Guided Filtering[J]. Acta Photonica Sinica, 2021, 50(3): 180
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