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Improved compression ratio prediction in DCT-based lossy compression of remote sensing images

机译:改进的压缩比预测在遥感图像的DCT基有损压缩中的预测

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This paper deals with prediction of compression ratio (CR) in lossy compression of noisy remote sensing images using techniques based on discrete cosine transform (DCT). Properties of noise assumed additive (in original data or after proper variance stabilizing transform) are taken into account by setting quantization step (QS) proportional to noise standard deviation. It is shown that simple statistics of DCT coefficients in 8×8 blocks can be used for rather accurate prediction of CR. Functions employed in prediction are obtained in advance using curve regression into scatter-plots. The factors that have impact on prediction accuracy are studied. It is demonstrated that percentage of DCT coefficients that become zeroes after quantization can be a good input parameter for prediction. Applicability of the proposed CR prediction approach is confirmed by experiments with real-life multi- and hyperspectral data.
机译:本文使用基于离散余弦变换(DCT)的技术,涉及使用技术的噪声遥感图像的有损压缩中的压缩比(CR)的预测。通过设定与噪声标准偏差成比例的量化步骤(QS),考虑噪声的性质假定添加剂(在原始数据或适当的方差稳定变换之后)。结果表明,8×8个块中的DCT系数的简单统计可以用于Cr的相当准确的预测。预测中使用的功能预先使用曲线回归到散射图中获得。研究了对预测准确性产生影响的因素。结果证明,在量化之后成为零的DCT系数的百分比可以是预测的良好输入参数。所提出的CR预测方法的适用性是通过实验的实验和高光谱数据的实验确认。

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