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Wavelet-based enhancement technique for visibility improvement of digital images.

机译:基于小波的增强技术,可改善数字图像的可见性。

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摘要

Image enhancement techniques for visibility improvement of color digital images based on wavelet transform domain are investigated in this dissertation research.;In this research, a novel, fast and robust wavelet-based dynamic range compression and local contrast enhancement (WDRC) algorithm to improve the visibility of digital images captured under non-uniform lighting conditions has been developed. A wavelet transform is mainly used for dimensionality reduction such that a dynamic range compression with local contrast enhancement algorithm is applied only to the approximation coefficients which are obtained by low-pass filtering and down-sampling the original intensity image. The normalized approximation coefficients are transformed using a hyperbolic sine curve and the contrast enhancement is realized by tuning the magnitude of the each coefficient with respect to surrounding coefficients. The transformed coefficients are then de-normalized to their original range. The detail coefficients are also modified to prevent edge deformation. The inverse wavelet transform is carried out resulting in a lower dynamic range and contrast enhanced intensity image. A color restoration process based on the relationship between spectral bands and the luminance of the original image is applied to convert the enhanced intensity image back to a color image. Although the colors of the enhanced images produced by the proposed algorithm are consistent with the colors of the original image, the proposed algorithm fails to produce color constant results for some "pathological" scenes that have very strong spectral characteristics in a single band. The linear color restoration process is the main reason for this drawback. Hence, a different approach is required for tackling the color constancy problem. The illuminant is modeled having an effect on the image histogram as a linear shift and adjust the image histogram to discount the illuminant. The WDRC algorithm is then applied with a slight modification, i.e. instead of using a linear color restoration, a non-linear color restoration process employing the spectral context relationships of the original image is applied. The proposed technique solves the color constancy issue and the overall enhancement algorithm provides attractive results improving visibility even for scenes with near-zero visibility conditions.;In this research, a new wavelet-based image interpolation technique that can be used for improving the visibility of tiny features in an image is presented. In wavelet domain interpolation techniques, the input image is usually treated as the low-pass filtered subbands of an unknown wavelet-transformed high-resolution (HR) image, and then the unknown high-resolution image is produced by estimating the wavelet coefficients of the high-pass filtered subbands. The same approach is used to obtain an initial estimate of the high-resolution image by zero filling the high-pass filtered subbands. Detail coefficients are estimated via feeding this initial estimate to an undecimated wavelet transform (UWT). Taking an inverse transform after replacing the approximation coefficients of the UWT with initially estimated HR image, results in the final interpolated image.;Experimental results of the proposed algorithms proved their superiority over the state-of-the-art enhancement and interpolation techniques.;Keywords: Image enhancement, visibility improvement, wavelet domain enhancement, interpolation.
机译:本论文研究了基于小波变换域的彩色数字图像能见度增强的图像增强技术。本研究提出了一种基于小波的快速,鲁棒的动态范围压缩和局部对比度增强(WDRC)算法。已经开发了在不均匀照明条件下捕获的数字图像的可视性。小波变换主要用于降维,使得具有局部对比度增强算法的动态范围压缩仅应用于通过低通滤波和下采样原始强度图像而获得的近似系数。使用双曲正弦曲线对归一化的近似系数进行变换,并且通过相对于周围系数调整每个系数的大小来实现对比度增强。然后将变换后的系数反归一化为其原始范围。还修改了细节系数以防止边缘变形。进行小波逆变换导致较低的动态范围和对比度增强的强度图像。应用基于光谱带和原始图像的亮度之间的关系的颜色恢复处理,以将增强强度图像转换回彩色图像。尽管所提出的算法产生的增​​强图像的颜色与原始图像的颜色一致,但是对于某些在单个频带中具有非常强的光谱特性的“病理”场景,所提出的算法无法产生颜色恒定的结果。线性颜色恢复过程是此缺点的主要原因。因此,需要不同的方法来解决颜色恒定性问题。对发光体进行建模,使其对图像直方图具有线性移位的影响,并调整图像直方图以减少发光体。然后应用WDRC算法进行少量修改,即代替使用线性颜色恢复,而应用采用原始图像的光谱上下文关系的非线性颜色恢复过程。所提出的技术解决了色彩恒定性问题,并且整体增强算法提供了引人注目的结果,即使对于可见性条件接近零的场景也可以提高可见性。在本研究中,一种基于小波的新图像插值技术可用于改善可见性。呈现图像中的微小特征。在小波域插值技术中,通常将输入图像视为未知小波变换的高分辨率(HR)图像的低通滤波子带,然后通过估计图像的小波系数来生成未知的高分辨率图像。高通滤波后的子带。通过零填充高通滤波后的子带,使用相同的方法来获得高分辨率图像的初始估计。细节系数是通过将该初始估计值馈入未抽取的小波变换(UWT)来估计的。用初始估计的HR图像替换UWT的逼近系数后进行逆变换,得到最终的插值图像。所提出算法的实验结果证明了它们优于最新的增强和插值技术。关键字:图像增强,可见度增强,小波域增强,插值。

著录项

  • 作者

    Unaldi, Numan.;

  • 作者单位

    Old Dominion University.;

  • 授予单位 Old Dominion University.;
  • 学科 Engineering Computer.;Engineering Electronics and Electrical.
  • 学位 Ph.D.
  • 年度 2010
  • 页码 96 p.
  • 总页数 96
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类 古生物学;
  • 关键词

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