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Lossless compression for hyperspectral image using deep recurrent neural networks

机译:使用深度递归神经网络对高光谱图像进行无损压缩

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With the rapid development of hyperspectral remote sensing technology, the spatial resolution and spectral resolution of hyperspectral images are continually increasing, resulting in a continual increase in the scale of hyperspectral data. At present, hyperspectral lossless compression technology has reached a bottleneck. Simultaneously, the rise of deep learning has provided us with new ideas. Therefore, this paper examines the use of deep learning for the lossless compression of hyperspectral images. In view of the differential pulse code modulation (DPCM) method being insufficient for predicting spectral band information, the proposed method, called C-DPCM-RNN, uses a deep recurrent neural network (RNN) to improve the traditional DPCM method and improve the generalization ability and prediction accuracy of the model. The final experimental result shows that C-DPCM-RNN achieves better compression on a set of calibrated AVIRIS test images provided by the Multispectral and Hyperspectral Data Compression Working Group of the Consultative Committee for Space Data Systems in 2006. C-DPCM-RNN overcomes the limits of traditional methods in its performance on uncalibrated AVIRIS test images.
机译:随着高光谱遥感技术的飞速发展,高光谱图像的空间分辨率和光谱分辨率不断提高,导致高光谱数据规模的不断增加。目前,高光谱无损压缩技术已成为瓶颈。同时,深度学习的兴起为我们提供了新的思路。因此,本文研究了深度学习在高光谱图像无损压缩中的应用。鉴于差分脉冲编码调制(DPCM)方法不足以预测光谱带信息,该方法称为C-DPCM-RNN,它使用深度递归神经网络(RNN)改进了传统DPCM方法并提高了泛化能力模型的能力和预测准确性。最终的实验结果表明,C-DPCM-RNN在2006年空间数据系统咨询委员会的多光谱和高光谱数据压缩工作组提供的一组校准AVIRIS测试图像上实现了更好的压缩。C-DPCM-RNN克服了传统方法在未校准AVIRIS测试图像上的性能局限性。

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