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An adaptive Markov random field based error concealment method for video communication in an error prone environment

机译:易错环境下基于自适应马尔可夫随机场的视频通信错误隐藏方法

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Loss of coded data during its transmission can affect a decoded video sequence to a large extent, making concealment of errors caused by data loss a serious issue. Previous work in spatial error concealment exploiting MRF models used a single pixel wide region around the erroneous area to achieve a reconstruction based on an optimality measure. This practically restricts the amount of available information that is used in a concealment procedure to a small region around the missing area. Incorporating more pixels usually means a higher order model and this is expensive as the complexity grows exponentially with the order of the MRF model. Using previously proposed approaches, the damaged area is reconstructed fairly well in very low frequency portions of the image. However, the reconstruction process yields blurry results with a significant loss of details in high frequency, or edge portions of the image. In our proposed approach, a MRF is used as the image a priori model. More available information is incorporated in the reconstruction procedure not by increasing the order of the model but instead by adaptively adjusting the model parameters. Adaptation is done based on the image characteristics determined in a large region around the damaged area. Thus, the reconstruction procedure can make use of information embedded in not only immediate neighborhood pixels but also in a wider neighborhood without a dramatic increase in computational complexity. The proposed method outperforms the previous methods in the reconstruction of missing edges.
机译:编码数据在传输过程中的丢失会在很大程度上影响解码后的视频序列,因此隐藏由数据丢失引起的错误成为一个严重的问题。利用MRF模型进行空间错误隐藏的先前工作是使用围绕错误区域的单个像素宽区域来实现基于最佳性度量的重构。这实际上将隐藏过程中使用的可用信息量限制在丢失区域周围的一小部分区域。合并更多的像素通常意味着更高阶的模型,这是昂贵的,因为复杂度会随着MRF模型的阶数呈指数增长。使用先前提出的方法,在图像的非常低频部分中相当好地重建了受损区域。但是,重建过程会产生模糊的结果,导致高频或图像边缘部分的细节明显丢失。在我们提出的方法中,MRF被用作先验模型的图像。更多的可用信息不是通过增加模型的阶数而是通过自适应地调整模型参数而包含在重建过程中。根据在损坏区域周围的较大区域中确定的图像特征进行调整。因此,重建过程不仅可以利用嵌入紧邻邻域像素中的信息,还可以利用嵌入较宽邻域中的信息,而不会显着增加计算复杂度。所提出的方法在缺失边缘的重建方面优于先前的方法。

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