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Remote Sensing Image Compression Evaluation Method Based on Neural Network Prediction and Fusion Quality Fidelity

机译:基于神经网络预测和融合质量保真度的遥感图像压缩评估方法

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Lossy compression can produce false information, such as blockiness, noise, ringing, ghosting, aliasing, and blurring. This paper provides a comprehensive model for optical remote sensing image characteristics based on the block standard deviation’s retention rate (BSV). We first propose a compression evaluation method, CR_CI, that combines neural network prediction and remote sensing image quality fidelity. Through the compression evaluation and improved experimental verification of multiple satellites (CBERS-02B satellite, ZY-1-02C satellite, CBERS-04 satellite, GF-1, GF-2, etc.), CR_CI can be stable, cleverly test changes in the information extraction performance of optical remote sensing images, and provide strong support for optimizing the design of compression schemes. In addition, a predictor of remote sensing image number compression is constructed based on deep neural networks, which combines compression efficiency (compression ratio), image quality, and protection. Empirical results demonstrate the image’s highest compression efficiency under the premise of satisfying visual interpretation and quantitative application.
机译:有损压缩可以产生虚假信息,例如障碍,噪音,振铃,重影,锯齿和模糊。本文提供了一种基于块标准偏差保留速率(BSV)的光学遥感图像特性的综合模型。我们首先提出了一种压缩评估方法CR_CI,它结合了神经网络预测和遥感图像质量保真度。通过压缩评估和改进的多卫星的实验验证(CBERS-02B卫星,ZY-1-02C卫星,CBERS-04卫星,GF-1,GF-2等),CR_CI可以稳定,测试变化巧妙光学遥感图像的信息提取性能,为优化压缩方案设计提供了强大的支持。另外,基于深神经网络构建遥感图像编号压缩的预测器,其将压缩效率(压缩比),图像质量和保护组合。经验结果证明了在满足视觉解释和定量应用的前提下的图像的最高压缩效率。

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