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A wavelet based method for image reconstruction from gradient data with applications

机译:基于小波的梯度数据图像重建方法及其应用

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摘要

In this paper, an algorithm for image reconstruction from gradient data based on the Haar wavelet decomposition is proposed. The proposed algorithm has two main stages. First, the Haar decomposition of the image to be reconstructed is obtained from the given gradient data set. Then, the Haar wavelet synthesis is employed to produce the image. The proposed algorithm is based on the relationship between the Haar analysis and synthesis filters and the model for the discretized gradient. The approach presented here is based on the one by Hampton et al. (IEEE J Sel Top Signal Process 2(5):781–792, 2008) for wavefront reconstruction in adaptive optics. The main strength of the proposed algorithm lies in its multiresolution nature, which allows efficient processing in the wavelet domain with complexity ({fancyscript{O}}(N)). In addition, obtaining the wavelet decomposition of the image to be reconstructed provides the possibility for further enhancements of the image, such as denoising or smoothing via iterative Poisson solvers at each resolution during Haar synthesis. To evaluate the performance of the proposed algorithm, it is applied to reconstruct ten standard test images. Experiments demonstrate that the algorithm yields results comparable in terms of solution accuracy to those produced by well-known benchmark algorithms. Further, experiments show that the proposed algorithm is suitable to be employed as a final step to reconstruct an image from a gradient data set, in applications such as image stitching or image morphing.
机译:提出了一种基于Haar小波分解的梯度数据图像重建算法。所提出的算法具有两个主要阶段。首先,从给定的梯度数据集中获得要重建图像的Haar分解。然后,采用Haar小波合成来生成图像。所提出的算法基于Haar分析和合成滤波器与离散梯度模型之间的关系。这里介绍的方法是基于Hampton等人的方法。 (IEEE J Sel顶部信号处理2(5):781–792,2008)用于自适应光学中的波前重建。所提出的算法的主要优势在于其多分辨率性质,它允许在小波域中高效地处理复杂性({fancyscript {O}}(N))。另外,获得要重构图像的小波分解为进一步增强图像提供了可能性,例如在Haar合成过程中通过迭代Poisson求解器以每种分辨率进行降噪或平滑处理。为了评估该算法的性能,将其用于重构十张标准测试图像。实验表明,该算法产生的结果在解决方案准确性方面与由著名基准算法产生的结果相当。此外,实验表明,在诸如图像拼接或图像变形之类的应用中,所提出的算法适合用作从梯度数据集重建图像的最后步骤。

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