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Selective estimation of least squares based predictor and efficient overhead management algorithm for lossless compression of digital mammograms

机译:基于最小二乘的选择性估计预测器和有效的开销管理算法,可对数字乳房X线照片进行无损压缩

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In this paper, we propose selective estimation of least square based predictor algorithm and efficient overhead management scheme for lossless compression of digital mammograms. We exploit the characteristics of mammograms that most of the mammograms contain large number of blocks with constant gray level pixels, so a block based selective least square estimation algorithm is proposed. In our proposed algorithm if all the pixels have same intensity value in any block, then we represents those blocks by a single (‘1‘) bit otherwise the block is decorrelated using the feed forward type of autoregressive modeling. We exploit the relationship between autoregression parameters which saves around 25% overhead burden. We have also empirically found that the AR parameters of the neighboring blocks are highly correlated and to get the best decorrelation among these parameters, median edge detector (MED) is used which gives us around 40% more saving in overhead burden. So, our proposed lossless compression algorithm for digital mammograms gives better entropy and minimum overhead burden then most of the algorithms reported in literature.
机译:本文提出了基于方形最低的预测算法的选择性估计,有效的数字乳房X线图无损压缩的高效架空管理方案。我们利用乳房X线照片的特征,即大多数乳房X线照片包含大量具有恒定灰度级像素的块,因此提出了一种基于块的选择性最小二乘估计算法。在我们所提出的算法中,如果所有像素在任何块中具有相同的强度值,则我们表示单个('1')比特表示这些块,否则块使用前向前类型的自回归模型取消联络。我们利用自动投用参数之间的关系,从而节省了大约25%的开销负担。我们也有经验发现相邻块的AR参数高度相关,并且在这些参数中获得最佳去相关性,使用中值边缘检测器(MED),其使我们在架空负担中节省约40%。因此,我们提出的数字乳房X线照片的无损压缩算法提供了更好的熵和最小的开销负担,然后在文献中报告的大部分算法。

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