基于卷积的图像亮度处理优化

IF 2.7 Q3 IMAGING SCIENCE & PHOTOGRAPHIC TECHNOLOGY Journal of Imaging Pub Date : 2024-08-22 DOI:10.3390/jimaging10080204
D Andrew Rowlands, Graham D Finlayson
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引用次数: 0

摘要

在图像亮度处理的卷积视网膜方法中,图像通过中心/环绕算子进行过滤,以减轻阴影(光照梯度)的影响,进而压缩动态范围。通常情况下,对定义滤波器形状和范围的参数进行调整,以提供视觉上令人愉悦的结果,并加入对数等映射函数以进一步增强图像。与此相反,最近推出了一种卷积视网膜统计方法,该方法基于已知或估计的图像反照率和阴影成分的自相关统计。通过引入自相关矩阵模型和线性回归求解,以封闭形式获得最佳滤波器。与现有方法不同的是,该方法的目的只是客观地减轻阴影,因此不包括对数映射函数等图像增强组件。这里提供了该方法的全部数学细节以及实施细节。值得注意的是,自相关矩阵的形状会直接影响最佳滤波器的形状。为了研究该方法的性能,我们解决了从文本文档中去除阴影的问题。在一个具有挑战性的图像数据集上的进一步实验验证了该方法。
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Optimisation of Convolution-Based Image Lightness Processing.

In the convolutional retinex approach to image lightness processing, an image is filtered by a centre/surround operator that is designed to mitigate the effects of shading (illumination gradients), which in turn compresses the dynamic range. Typically, the parameters that define the shape and extent of the filter are tuned to provide visually pleasing results, and a mapping function such as a logarithm is included for further image enhancement. In contrast, a statistical approach to convolutional retinex has recently been introduced, which is based upon known or estimated autocorrelation statistics of the image albedo and shading components. By introducing models for the autocorrelation matrices and solving a linear regression, the optimal filter is obtained in closed form. Unlike existing methods, the aim is simply to objectively mitigate shading, and so image enhancement components such as a logarithmic mapping function are not included. Here, the full mathematical details of the method are provided, along with implementation details. Significantly, it is shown that the shapes of the autocorrelation matrices directly impact the shape of the optimal filter. To investigate the performance of the method, we address the problem of shading removal from text documents. Further experiments on a challenging image dataset validate the method.

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来源期刊
Journal of Imaging
Journal of Imaging Medicine-Radiology, Nuclear Medicine and Imaging
CiteScore
5.90
自引率
6.20%
发文量
303
审稿时长
7 weeks
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