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Multi-exposure image fusion based on tensor decomposition

机译:基于张量分解的多曝光图像融合

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In this paper, a multi-exposure image fusion (MEF) method is proposed based on tensor decomposition and saliency model. The main innovation of the proposed method is to explore a tensor domain for MEF and define the fusion rules based on tensor feature of higher order singular value decomposition (HOSVD) and saliency. Specifically, RGB images are converted to YCbCr images to maintain the stability of color information. For luminance channels, luminance patches of luminance images are constructed 3-order sub-tensors, and HOSVD is used to extract features of sub-tensors. Then, the sum of absolute coefficients (SAC) of weight coefficients are defined. Meanwhile, considering the impact of saliency on visual perception, visual saliency maps (VSMs) is used to evaluate luminance patches quality and guide the fusion rules to define the rule of fusion. For chrominance channels, VSMs of the chrominance channels is used to define fused rule. The experimental results show that the fused image with more texture details and saturated color is successfully generated by proposed method.
机译:本文基于张量分解和显着模型提出了一种多曝光图像融合(MEF)方法。所提出的方法的主要创新是探索MEF的张量域,并根据高阶奇异值分解(HOSVD)和显着性的张量特征来定义融合规则。具体地,RGB图像被转换为​​YCBCR图像以保持颜色信息的稳定性。对于亮度通道,亮度图像的亮度贴片构造了3阶子张量,HosVD用于提取子张力的特征。然后,定义了重量系数的绝对系数(SAC)的总和。同时,考虑到显着性对视觉感知的影响,视觉显着性图(VSM)用于评估亮度补丁质量并指导融合规则来定义融合规则。对于色度通道,色度通道的VSM用于定义融合规则。实验结果表明,通过提出的方法成功地生成了具有更多质地细节和饱和颜色的熔融图像。

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