The purpose of signal extrapolation is to estimate unknown signal parts from known samples. This task is especially important for error concealment in image and video communication. For obtaining a high quality reconstruction, assumptions have to be made about the underlying signal in order to solve this underdetermined problem. Among existent reconstruction algorithms, frequency selective extrapolation (FSE) achieves high performance by assuming that image signals can be sparsely represented in the frequency domain. However, FSE does not take into account the low-pass behaviour of natural images. In this paper, we propose a modified FSE that takes this prior knowledge into account for the modelling, yielding significant PSNR gains.
翻译:信号外推法的目的是估计已知样本中未知的信号部件。 这项任务对于图像和视频通信中的错误隐藏特别重要。 为了进行高质量的重建,必须假设基本信号,以便解决这一未确定的问题。 在现有的重建算法中,频率选择性外推法(FSE)通过假设图像信号在频率域内代表很少而取得很高的性能。然而, FSE没有考虑到自然图像的低传行为。我们在本文件中建议修改FSE,在建模时将这一先前的知识考虑在内,从而产生重大PSNR收益。