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Infrared and Visible Image Fusion through Details Preservation

机译:通过细节保留实现红外和可见图像融合

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摘要

In many actual applications, fused image is essential to contain high-quality details for achieving a comprehensive representation of the real scene. However, existing image fusion methods suffer from loss of details because of the error accumulations of sequential tasks. This paper proposes a novel fusion method to preserve details of infrared and visible images by combining new decomposition, feature extraction, and fusion scheme. For decomposition, different from the most decomposition methods by guided filter, the guidance image contains only the strong edge of the source image but no other interference information so that rich tiny details can be decomposed into the detailed part. Then, according to the different characteristics of infrared and visible detail parts, a rough convolutional neural network (CNN) and a sophisticated CNN are designed so that various features can be fully extracted. To integrate the extracted features, we also present a multi-layer features fusion strategy through discrete cosine transform (DCT), which not only highlights significant features but also enhances details. Moreover, the base parts are fused by weighting method. Finally, the fused image is obtained by adding the fused detail and base part. Different from the general image fusion methods, our method not only retains the target region of source image but also enhances background in the fused image. In addition, compared with state-of-the-art fusion methods, our proposed fusion method has many advantages, including (i) better visual quality of fused-image subjective evaluation, and (ii) better objective assessment for those images.
机译:在许多实际应用中,融合图像对于包含高质量细节以实现真实场景的全面表示至关重要。然而,由于顺序任务的错误累积,现有的图像融合方法遭受细节损失。本文提出了一种新的融合方法,通过结合新的分解,特征提取和融合方案来保留红外和可见图像的细节。对于分解,与大多数使用引导滤波器的分解方法不同,引导图像仅包含源图像的强边缘,而没有其他干扰信息,因此可以将丰富的微小细节分解为详细部分。然后,根据红外和可见细节部分的不同特性,设计了粗糙的卷积神经网络(CNN)和复杂的CNN,以便可以充分提取各种特征。为了集成提取的特征,我们还提出了通过离散余弦变换(DCT)的多层特征融合策略,该策略不仅突出了重要特征,而且增强了细节。此外,通过加权方法将基础部分融合。最后,通过添加融合的细节和基础部分获得融合的图像。与一般的图像融合方法不同,我们的方法不仅保留了源图像的目标区域,而且增强了融合图像的背景。此外,与最新的融合方法相比,我们提出的融合方法具有许多优势,包括(i)更好的融合图像主观评价的视觉质量,以及(ii)对这些图像的更好的客观评价。

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