DTCWT分解与偏微分方程去噪方法在遥感图像大数据去噪与重构中的应用

W. Zeng
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引用次数: 0

摘要

传统的卫星遥感图像去噪模型的精度不能很好地处理一些精确的生产场景。针对这一问题,本研究提出了一种改进的遥感图像处理模型,该模型采用对双树复小波变换(DTCWT)方法对冲击进行多尺度分解,并利用四阶微分方程对分解后的复高频子带信息进行去噪,然后将去噪后的子带重构为去噪后的图像。通过这两种先进的信号处理方法,提高了重构信号的质量,大大降低了各种类型的噪声含量。实验结果表明,本研究设计的去噪模型经过训练收敛后的归一化均方根误差为0.02。当噪声方差为0.030时,结构相似度、峰值信噪比和归一化信噪比分别为0.74、25.3和0.76,优于其他所有比较模型。实验数据证明,本研究设计的卫星遥感图像数据去噪模型具有较好的去噪性能,在高精度卫星遥感图像大数据处理中具有一定的应用潜力。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Application of DTCWT Decomposition and Partial Differential Equation Denoising Methods in Remote Sensing Image Big Data Denoising and Reconstruction
The precision of the traditional satellite remote sensing image denoising model cannot deal well with some precise production scenes. To solve this problem, this research proposes an improved remote sensing image processing model, in which the dual tree complex wavelet transform (DTCWT) method is used to conduct multiscale decomposition of the impact, and the fourth-order differential equation is used to denoise the decomposed complex high-frequency subband information, and then the denoised subbands are reconstructed into the denoised image. Through these two advanced signal-processing methods, the quality of reconstructed signals is improved and the noise content of various types is greatly reduced. The experimental results show that the normalized root mean square error of the denoising model designed in this study after training convergence is 0.02. When the noise variance is 0.030, the structure similarity, peak signal to noise ratio, and normalized signal to noise ratio are 0.74, 25.3, and 0.76, respectively, which are better than all other comparison models. The experimental data prove that the satellite remote sensing image data denoising model designed in this study has better denoising performance, and has certain application potential in high-precision satellite remote sensing image big data processing.
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