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Fractal Analysis and Texture Classification of High-Frequency Multiplicative Noise in SAR Sea-Ice Images Based on a Transform- Domain Image Decomposition Method

机译:基于变换域图像分解方法的SAR海冰图像高频乘法噪声分形分析及纹理分类

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摘要

Texture in synthetic aperture radar (SAR) images is a combination of the intrinsic texture of scene backscattering and the texture due to noncoherent high-frequency multiplicative noise (HMN) interactions that reflect erroneous information and lead to observation misinterpretation. The focus of this paper is the fractal analysis of KOMPSAT-5 SAR images of noncoherent sea-ice textures while being decomposed by discrete wavelet transform (DWT) processing. As a novel approach, fractal analysis relies on SAR sea-ice spatial backscattering data generation and time-frequency domain (TFD) formulations from the perspective of uncorrelated HMN. To the best of our knowledge, this is the first time that the extraction of the resolution profile and raw data for the reference KOMPSAT-5 SAR sea-ice image have been derived, evaluated and compared both qualitatively and quantitatively at each scale of DWT decomposition on the basis of the presence of HMN. This paper also presents a novel detailed modeling of the multiresolution probability distribution function of the HMN and its power spectral density function modeling at each scale of the decomposition. Other quality assessment techniques, such as two K-means clustering algorithms and several visualized verification methods, such as gradient vector field, advection mapping and tensor field mapping, have been implemented in this regard to investigate embedded HMN suppression and its adverse effects on the presence of pixel anomalies. As a result, as the decomposition continues, the HMN at each scale of decomposition is constantly altering from high-frequency uncorrelated anomalies to low-frequency joint spatial information within the observed 2-D data. In other words, excessive multiscale HMN suppression will result in spatial information loss that makes the DWT scale selection quite important for texture classification. The results also show that the importance of HMN suppression in SAR sea-ice images in the form of pixel anomaly decomposition for the purpose of further texture investigation should be in accordance with the spectral behavior of the HMN. The results are helpful for SAR remote sensing image restoration and data preservation when dealing with high-resolution SAR images, such as in time series analysis, sea-ice texture change detection, and polar structural mapping. The proposed approach is implemented on real KOMPSAT-5 SAR satellite sea-ice images, while fractal spatial resolution profile simulations are carried out based on the inversed equalized hybrid domain image formation algorithm.
机译:合成孔径雷达(SAR)图像中的纹理是场景纹理的组合反向散射和由于非体力的高频乘法噪声(HMN)相互作用而导致错误信息并导致观察误解。本文的重点是非组织海冰纹理Kompsat-5 SAR图像的分形分析,同时通过离散小波变换(DWT)处理分解。作为一种新方法,从不相关HMN的角度依赖于SAR Sea-Ice-Ice-Backsmattering数据生成和时频域(TFD)制剂的分形分析。据我们所知,这是首次推出了关于参考Kompsat-5 SAR海冰图像的分辨率简介和原始数据的提取,评估和比较在每种规模的DWT分解时进行定性和定量基于HMN的存在。本文还提出了一种新颖的分解在每个规模处的HMN的多分辨率概率分布函数的详细建模。其他质量评估技术,例如两个K-Means聚类算法和几种可视化验证方法,例如梯度向量场,前进映射和张力场映射,已经在这方面实施了对嵌入的HMN抑制及其对存在的不利影响像素异常。结果,随着分解的继续,每个分解规模的HMN不断从观察到的2-D数据内的高频不相关的异常从高频不相关的异常改变为低频关节空间信息。换句话说,过度的多尺度HMN抑制将导致空间信息丢失,使DWT比例选择对于纹理分类非常重要。结果还表明,对于进一步质地研究的目的,以像素异常分解形式的SAR海冰图像中HMN抑制的重要性应根据HMN的光谱行为。在处理高分辨率SAR图像时,结果对SAR遥感图像恢复和数据保存有所帮助,例如在时间序列分析,海冰纹理变化检测和极性结构映射。所提出的方法是在Real Kompsat-5 SAR卫星海冰图像上实施,而基于反向均等的混合域图像形成算法进行分形空间分辨率简档仿真。

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