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Clustered DPCM with Removing Noise Spectra for the Lossless Compression of Hyperspectral Images

机译:聚集的DPCM,用于消除噪声光谱,用于高光谱图像的无损压缩

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The clustered DPCM (C-DPCM) lossless compression method by Jarno et al. for hyperspectral images achieved a good compression effect. It can be divided into three components: clustering, prediction, and coding. In the prediction part, it solves a multiple linear regression model for each of the clusters in every band. Without considering the effect of noise spectra, there is still room for improvement. This paper proposes a C-DPCM method with Removing Noise Spectra (C-DPCM-RNS) for the lossless compression of hyperspectral images. C-DPCM-RNS's prediction part consists of two-times trainings. The prediction coefficients obtained from the first training will be used in the linear predictor to compute all the predicted values and then the difference between original and predicted values in current band of current class. Only the non-noise spectra are used in the second training. The resulting prediction coefficients from the second training will be used for prediction and sent to the decoder. The two-times trainings remove part of the interference of noise spectra, and reaches a better compression effect than other methods based on regression prediction.
机译:Jarno等人的聚类DPCM(C-DPCM)无损压缩方法。对于高光谱图像实现了良好的压缩效果。它可以分为三个组件:聚类,预测和编码。在预测部分中,它为每个频带中的每个集群解决了多元线性回归模型。在不考虑噪声光谱的影响,仍有改进的余地。本文提出了一种C-DPCM方法,用于去除噪声光谱(C-DPCM-RNS),用于高光谱图像的无损压缩。 C-DPCM-RNS的预测部分由两次培训组成。从第一训练获得的预测系数将用于线性预测器以计算所有预测值,然后在当前类的当前频带中计算所有预测值,然后在原始频带中的差异。仅在第二次训练中使用非噪声光谱。来自第二训练的产生的预测系数将用于预测并发送到解码器。两次培训消除了部分噪声光谱干扰,并且达到了比基于回归预测的其他方法更好的压缩效果。

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