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Joint Sparse Learning With Nonlocal and Local Image Priors for Image Error Concealment

机译:与非本地图像前视图的联合稀疏学习,用于图像错误隐藏

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摘要

Joint sparse representation (JSR) model has recently emerged as a powerful technique with wide variety of applications. In this paper, the JSR model is extended to error concealment (EC) application, being effective to recover the original image from its corrupted version. This model is based on jointly learning a dictionary pair and two mapping matrices that are trained offline from external training images. Given the trained dictionaries and mappings, the restoration is done by transferring the recovery problem into the sparse representation domain with respect to the trained dictionaries, which is further transformed into a common space using the respective mapping matrices. Then, the reconstructed image is obtained by back projection into the spatial domain. In order to improve the accuracy and stability of the proposed JSR-based EC algorithm and avoid unexpected artifacts, the local and non-local priors are seamlessly integrated into the JSR model. The non-local prior is based on the self-similarity within natural images and helps to find an accurate sparse representation by taking a weighted average of similar areas throughout the image. The local prior is based on learning the local structural regularity of the natural images and helps to regularize the sparse representation, exploiting the strong correlation in the small local areas within the image. Compared with the state-of-the-art EC algorithms, the results show that the proposed method has better reconstruction performance in terms of objective and subjective evaluations.
机译:联合稀疏表示(JSR)模型最近被出现为具有各种应用的强大技术。在本文中,JSR模型扩展到错误隐藏(EC)应用程序,有效地从其损坏的版本中恢复原始图像。该模型基于联合学习字典对和从外部训练图像训练的两个映射矩阵。鉴于训练有素的词典和映射,通过将恢复问题传送到稀疏的字典中,通过将恢复问题传送到稀疏表示域来完成恢复,其使用相应的映射矩阵进一步被转换为公共空间。然后,通过背部投影进入空间域来获得重建的图像。为了提高所提出的基于JSR的EC算法的准确性和稳定性,避免意外的伪像,本地和非本地前沿无缝地集成到JSR模型中。非本地事先基于自然图像内的自相似性,并通过在整个图像中占据相似区域的加权平均值来帮助找到准确的稀疏表示。本地先前基于学习自然图像的局部结构规律,并有助于规范稀疏表示,利用图像内的小型本地区域中的强相关性。与最先进的EC算法相比,结果表明,该方法在客观和主观评估方面具有更好的重建性能。

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