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Golomb-Rice coding parameter learning using deep belief network for hyperspectral image compression

机译:使用深度置信网络的Golomb-Rice编码参数学习用于高光谱图像压缩

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While Golomb-Rice codes are optimal for geometrically distributed source, the practically achievable coding efficiency depends on the accuracy of the coding parameter estimated from the input data. Most existing methods are based on the assumption of geometric distribution and thus would suffer from a loss in coding efficiency if the underlying distribution deviates from the geometric distribution, which is usually the case in practice. We proposed a data-driven parameter estimation method without assuming the underlying distribution. We formulated the problem of choosing the best coding parameter for the given input data as a pattern classification problem. To this end, we trained a deep belief network using the data segments to be coded, along with their “labels”, which are the optimal coding parameters that yield the shortest codewords. Simulations on data synthesized using statistical models, as well as data in hyperspectral image coding showed that the proposed deep learning method tended to be more robust than several state-of-the-art parameter estimation methods, with the capability to further improve the accuracies of these methods.
机译:尽管Golomb-Rice码对于几何分布源是最佳的,但实际上可实现的编码效率取决于从输入数据估计的编码参数的准确性。大多数现有方法都是基于几何分布的假设,因此,如果基础分布偏离几何分布,编码效率将受到损失,这在实践中通常是这种情况。我们提出了一种无需假设基础分布的数据驱动参数估计方法。我们提出了为给定的输入数据选择最佳编码参数的问题,作为模式分类问题。为此,我们使用要编码的数据段和它们的“标签”训练了一个深度信任网络,这些数据段是产生最短代码字的最佳编码参数。对使用统计模型合成的数据以及高光谱图像编码中的数据进行的仿真表明,所提出的深度学习方法往往比几种最新的参数估计方法更健壮,并且能够进一步提高精度。这些方法。

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