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Contrast-Enhanced Fusion of Multisensor Images Using Subband-Decomposed Multiscale Retinex

机译:使用子带分解的多尺度Retinex增强多传感器图像的对比度融合

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In this paper, we propose a novel pixel-level multisensor image fusion algorithm with simultaneous contrast enhancement. In order to accomplish both image fusion and contrast enhancement simultaneously, we suggest a modified framework of the subband-decomposed multiscale retinex (SDMSR), our previous contrast enhancement algorithm. This framework is based on a fusion strategy that reflects the multiscale characteristics of the SDMSR well. We first apply two complementary intensity transfer functions to source images in order to effectively utilize hidden information in both shadows and highlights in the fusion process. We then decompose retinex outputs into nearly nonoverlapping spectral subbands. The decomposed retinex outputs are then fused subband-by-subband, by using global weighting as well as local weighting to overcome the limitations of the pixel-based fusion approach. After the fusion process, we apply a space-varying subband gain to each fused SD retinex output according to the subband characteristic so that the contrast of the fused image can be effectively enhanced. In addition, in order to effectively manage artifacts and noise, we make the degree of enhancement of fused details adjustable by improving a detail adjustment function. From experiments with various multisensor image pairs, the results clearly demonstrate that even if source images have poor contrast, the proposed algorithm makes it possible to generate a fused image with highly enhanced contrast while preserving visually salient information contained in the source images.
机译:在本文中,我们提出了一种同时增强对比度的新型像素级多传感器图像融合算法。为了同时完成图像融合和对比度增强,我们建议对子带分解多尺度retinex(SDMSR)(我们以前的对比度增强算法)进行改进。该框架基于融合策略,该策略反映了SDMSR井的多尺度特征。我们首先对源图像应用两个互补的强度传递函数,以便在融合过程中有效利用阴影和高光中的隐藏信息。然后,我们将retinex输出分解为几乎不重叠的频谱子带。然后,通过使用全局加权和局部加权来克服子像素融合方法的局限性,将分解后的retinex输出逐个子带地融合。在融合过程之后,我们根据子带特征对每个融合的SD retinex输出应用一个时空变化的子带增益,从而可以有效地增强融合图像的对比度。另外,为了有效地处理伪影和噪声,我们通过改进细节调整功能来调整融合细节的增强程度。从使用各种多传感器图像对进行的实验中,结果清楚地表明,即使源图像具有较差的对比度,所提出的算法也可以生成对比度大大增强的融合图像,同时保留源图像中包含的视觉显着信息。

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