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A novel multimodal image fusion method using hybrid wavelet-based contourlet transform.

机译:一种新的基于混合小波的Contourlet变换的多峰图像融合方法。

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摘要

Various image fusion techniques have been studied to meet the requirements of different applications such as concealed weapon detection, remote sensing, urban mapping, surveillance and medical imaging. Combining two or more images of the same scene or object produces a better application-wise visible image. The conventional wavelet transform (WT) has been widely used in the field of image fusion due to its advantages, including multi-scale framework and capability of isolating discontinuities at object edges. However, the contourlet transform (CT) has been recently adopted and applied to the image fusion process to overcome the drawbacks of WT with its own advantages. Based on the experimental studies in this dissertation, it is proven that the contourlet transform is more suitable than the conventional wavelet transform in performing the image fusion. However, it is important to know that the contourlet transform also has major drawbacks. First, the contourlet transform framework does not provide shift-invariance and structural information of the source images that are necessary to enhance the fusion performance. Second, unwanted artifacts are produced during the image decomposition process via contourlet transform framework, which are caused by setting some transform coefficients to zero for nonlinear approximation. In this dissertation, a novel fusion method using hybrid wavelet-based contourlet transform (HWCT) is proposed to overcome the drawbacks of both conventional wavelet and contourlet transforms, and enhance the fusion performance. In the proposed method, Daubechies Complex Wavelet Transform (DCxWT) is employed to provide both shift-invariance and structural information, and Hybrid Directional Filter Bank (HDFB) is used to achieve less artifacts and more directional information. DCxWT provides shift-invariance which is desired during the fusion process to avoid mis-registration problem. Without the shift-invariance, source images are mis-registered and non-aligned to each other; therefore, the fusion results are significantly degraded. DCxWT also provides structural information through its imaginary part of wavelet coefficients; hence, it is possible to preserve more relevant information during the fusion process and this gives better representation of the fused image. Moreover, HDFB is applied to the fusion framework where the source images are decomposed to provide abundant directional information, less complexity, and reduced artifacts.;The proposed method is applied to five different categories of the multimodal image fusion, and experimental study is conducted to evaluate the performance of the proposed method in each multimodal fusion category using suitable quality metrics. Various datasets, fusion algorithms, pre-processing techniques and quality metrics are used for each fusion category. From every experimental study and analysis in each fusion category, the proposed method produced better fusion results than the conventional wavelet and contourlet transforms; therefore, its usefulness as a fusion method has been validated and its high performance has been verified.
机译:已经研究了各种图像融合技术来满足不同应用的需求,例如隐藏武器检测,遥感,城市制图,监视和医学成像。组合相同场景或对象的两个或更多图像会产生更好的按应用程序可见的图像。常规小波变换(WT)的优点包括多尺度框架和隔离对象边缘不连续点的能力,因此已广泛应用于图像融合领域。然而,轮廓波变换(CT)最近已被采用并应用于图像融合过程,以克服WT自身的缺点。通过本文的实验研究,证明轮廓波变换比传统的小波变换更适合进行图像融合。但是,重要的是要知道轮廓波变换也有主要的缺点。首先,contourlet变换框架未提供增强融合性能所需的源不变图像的平移不变性和结构信息。其次,在图像分解过程中,通过轮廓波变换框架会产生不需要的伪影,这是由于将一些变换系数设置为零以进行非线性逼近而引起的。本文提出了一种基于混合小波的轮廓波变换(HWCT)的融合方法,克服了传统的小波变换和轮廓波变换的弊端,提高了融合性能。在提出的方法中,采用Daubechies复数小波变换(DCxWT)提供位移不变性和结构信息,并使用混合方向滤波器组(HDFB)实现更少的伪像和更多的方向信息。 DCxWT提供了融合过程中需要的移位不变性,以避免重合失调问题。如果没有平移不变,则源图像将被错误配准且彼此不对齐;因此,融合结果显着降低。 DCxWT还通过其小波系数的虚部提供结构信息。因此,可以在融合过程中保留更多相关信息,这可以更好地表示融合图像。此外,将HDFB应用于融合框架中,其中分解源图像以提供丰富的方向信息,更少的复杂性和减少的伪像。所提出的方法应用于五种不同类别的多峰图像融合,并进行了实验研究使用合适的质量指标评估在每个多峰融合类别中提出的方法的性能。每个融合类别使用各种数据集,融合算法,预处理技术和质量指标。从每个融合类别的每项实验研究和分析来看,与传统的小波和Contourlet变换相比,该方法产生的融合效果更好。因此,已经验证了其作为融合方法的有用性,并已验证了其高性能。

著录项

  • 作者

    Choi, Yoonsuk.;

  • 作者单位

    University of Nevada, Las Vegas.;

  • 授予单位 University of Nevada, Las Vegas.;
  • 学科 Engineering Computer.;Engineering Electronics and Electrical.
  • 学位 Ph.D.
  • 年度 2014
  • 页码 142 p.
  • 总页数 142
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类
  • 关键词

  • 入库时间 2022-08-17 11:54:00

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