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首页> 外文期刊>Infrared physics and technology >Multiscale top-hat selection transform based infrared and visual image fusion with emphasis on extracting regions of interest
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Multiscale top-hat selection transform based infrared and visual image fusion with emphasis on extracting regions of interest

机译:基于多尺度礼帽选择变换的红外和视觉图像融合,重点在于提取感兴趣区域

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摘要

To effectively combine regions of interest in original infrared and visual images, an adaptively weighted infrared and visual image fusion algorithm is developed based on the multiscale top-hat selection transform. First, the multiscale top-hat selection transform using multiscale structuring elements with increasing sizes is discussed. Second, the image regions of the original infrared and visual images at each scale are extracted by using the multiscale top-hat selection transform. Third, the final fusion regions are constructed from the extracted multiscale image regions. Finally, the final fusion regions are combined into a base image calculated from the original images to form the final fusion result. The combination of the final fusion regions uses the adaptive weight strategy, and the weights are adaptively obtained based on the importance of the extracted features. In the paper, we compare seven image fusion methods: wavelet pyramid algorithm (WP), shift invariant discrete wavelet transform algorithm (SIDWT), Laplacian pyramid algorithm (LP), morphological pyramid algorithm (MP), multiscale morphology based algorithm (MSM), center-surround top-hat transform based algorithm (CSTHT), and the proposed multiscale top-hat selection transform based algorithm. These seven methods are compared over five different publicly available image sets using three metrics of spatial frequency, mean gradient, and Q. The results show that the proposed algorithm is effective and may be useful for the applications related to the infrared and visual image fusion
机译:为了有效地结合原始红外图像和视觉图像中的感兴趣区域,基于多尺度礼帽选择变换,开发了自适应加权的红外图像和视觉图像融合算法。首先,讨论了使用大小增加的多尺度结构元素的多尺度礼帽选择变换。其次,通过使用多尺度礼帽选择变换来提取每个尺度的原始红外图像和视觉图像的图像区域。第三,从提取的多尺度图像区域构造最终融合区域。最终,将最终融合区域组合成根据原始图像计算的基础图像,以形成最终融合结果。最终融合区域的组合使用自适应权重策略,并根据提取特征的重要性自适应地获得权重。在本文中,我们比较了7种图像融合方法:小波金字塔算法(WP),不变位移离散小波变换算法(SIDWT),拉普拉斯金字塔算法(LP),形态金字塔算法(MP),基于多尺度形态学的算法(MSM),中心周围基于顶帽变换的算法(CSTHT),以及所提出的基于多尺度顶帽选择变换的算法。使用空间频率,平均梯度和Q的三个指标,在五个不同的公开可用图像集上比较了这七个方法。结果表明,该算法是有效的,可能对与红外和视觉图像融合有关的应用有用

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