基于小波变换的高光谱遥感图像去噪方法

Ningxin Fan, Songlin Zhang, Yali Li, Jie Han
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引用次数: 0

摘要

由于在图像的形成和传输过程中不可避免地会引入不同类型的噪声,因此图像去噪是各种图像应用前必要的预处理过程。提出了一种基于椭圆方向窗和边缘检测的局部自适应小波去噪方法。该方法首先对图像进行小波分解,并对小波系数进行边缘检测。然后,利用椭圆方向窗对图像的小波系数进行采样,并计算其局部阈值;其次,采用软阈值函数对小波系数进行量化。最后,通过小波反变换得到去噪后的图像。另外,需要注意的是,将小于1的权值相乘,尽可能地减小阈值幅度,以保持图像的边缘特征。为了验证所提去噪方法的性能,采用4幅标准灰度测试图像和高光谱遥感图像,并将去噪结果与带有方向窗的局部维纳滤波(LWFDW)进行了比较。实验结果表明,本文提出的方法在高光谱图像分类的数值指标上具有更好的性能,并且在视觉上比LWFDW具有更少的伪吉布斯现象。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A Denoising Method of Hyperspectral Remote Sensing Image Based on Wavelet Transform
Since different types of noise are inevitably introduced in the processes of image formation and transmission, image denoising is a necessary pre-processing process before various image applications. In this paper, a local adaptive wavelet denoising method based on elliptic direction window and edge detection is proposed. The method first performs wavelet decomposition for the image and performs edge detection on the wavelet coefficients. Then, the wavelet coefficients of the image are sampled by the elliptic directional window, and the local threshold of it is calculated. Next, the wavelet coefficients are quantized by the soft threshold function. Finally, the denoised image is obtained by inverse wavelet transformation. In addition, it is noted that weight less than 1 is multiplied to reduce the threshold amplitude as much as possible to preserve the edge features of the image. To validate the performance of the proposed denoising method, four standard gray-scale test images and hyperspectral remote sensing images are employed and the denoising results are compared with the Local Wiener Filtering with Directional Windows (LWFDW). The experimental results show that the method proposed in this paper performs better in the numerical indicators of classification of the hyperspectral image, and has fewer pseudo-Gibbs phenomena in visual than the LWFDW.
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