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An Effective Optimization of Reference Pixel Arrangement in the Lossless Coding for HDTV image

机译:HDTV图像无损编码中参考像素排列的有效优化

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This paper presents a lossless image compression method for one frame of High-definition television (HDTV). We apply classified adaptive prediction, and then the prediction error is encoded by entropy coding of arithmetic coding. Then an image is divided into small blocks, and they are classified into some classes each of which correspond to one minimum mean square error (MMSE) linear predictor. In this paper, we consider the influence of the reference pixel of context and the number of the linear predictors for the compression ratio and encoding time. After the fast optimization of block classification with a small number of reference pixels of context, we optimize the number, and the arrangement of reference pixels based on variable selection technique which uses F-statistic (test statistic of partial regression coefficient) in multiple linear regression analysis. In this paper, we propose an effective optimization method of reference pixel arrangement in the lossless coding for HDTV still image. As a result of experiments, it is confirmed that our method achieves higher compression ratios and faster processing speed, than conventional one. It should be noted that the decoding speed of the proposed method is very fast.
机译:本文提出了一种用于高清电视(HDTV)的无损图像压缩方法。我们应用分类自适应预测,然后通过算术编码的熵编码对预测误差进行编码。然后将图像分成小块,然后将它们分类为一些类别,每个类别对应一个最小均方误差(MMSE)线性预测器。在本文中,我们考虑上下文的​​参考像素和线性预测变量的数量对压缩率和编码时间的影响。在使用少量上下文参考像素快速优化块分类之后,我们基于变量选择技术优化了参考像素的数量和排列,该变量选择技术在多元线性回归中使用F统计量(偏回归系数的检验统计量)分析。在本文中,我们提出了一种有效的优化方法,用于HDTV静止图像的无损编码中参考像素的排列。实验结果表明,与传统方法相比,我们的方法具有更高的压缩率和更快的处理速度。应当注意,所提出的方法的解码速度非常快。

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