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1.
结合Freeman-Durden以散射模型为基础开发的分解算法和基于非高斯的K-Wishart分布,提出了一种无监督算法对全极化合成孔径雷达(fully polarimetric SAR,PolSAR)数据进行地物分类。该算法主要由3大步骤组成:首先通过Freeman-Durden算法把PolSAR数据划分成3种散射:表面散射、体散射和二面角散射,再使用形状参数χ将各种散射分为3类;然后通过每个像元的8个邻域计算先验概率,以改进分类距离和计算聚类中心;最后应用迭代K-Wishart分类器进行精确分类,并对每一类提出颜色填充方案。与复Wishart分布不同,K-wishart分布不但适合均匀区域数据描述,而且对不均匀区域数据的描述能力也很强。实验结果表明,该方法比FreemanDurden分解和复Wishart分布组合具有更好的分类性能。  相似文献   

2.
不同于一般分类算法基于像素统计的分类,忽略了地物的散射特性,文中提出了一种保持地物散射特性的分类方法。这种方法将Singh提出的Singh四分量分解与基于复Wishart分布的最大似然分类器相结合,对高分三号全极化影像进行分类。利用Singh四分量分解获得表面散射、体散射、二次散射和螺旋体散射,然后将前3种基础散射分别划分为多个聚类,根据复Wishart距离进行类间合并,直到获得指定类别数,输入复Wishart分类器进行迭代分类,最后进行类别合并获得最终分类结果。试验表明本文算法具有较好的分类效果且验证了利用高分三号全极化卫星数据进行影像分类的可行性。  相似文献   

3.
提出了一种基于均值漂移和谱图分割的极化SAR(PolSAR)影像分割方法。首先,通过均值漂移算法对PolSAR影像进行过分割处理,并基于Wishart统计分布和假设检验的方法构建边缘检测器,充分利用了PolSAR影像的全极化信息提取边缘信息;然后,在过分割和边缘信息的基础上构建相似性度量矩阵,并采用归一化割准则实现PolSAR影像的分割。该算法充分利用了均值漂移算法过分割的特点,降低了谱图分割算法的运算代价,并结合谱图分割算法全局优化的优点改善了PolSAR影像的分割结果;最后,利用Radar-sat-2全极化影像进行了实验,并采用改进的分割效果评价方法实现了精度评价。实验表明,该算法有效地实现了PolSAR影像的分割,显著提高了谱图分割算法的效率,分割结果优良,分割精度优于eCognition软件中的多尺度分割方法。  相似文献   

4.
张量图像如极化合成孔径雷达(PolSAR)图像,它的每一个像素点都是一个3 阶的正定对称矩阵。对于张量图像的噪声抑制,目前普遍的做法是将它们看作多通道标量图像进行处理,但是,这样可能会破坏矩阵的正定性,从而造成信息的损失。本文主要研究基于扩散方程的张量图像的噪声抑制问题,将现有的基于扩散方程的实张量场去噪模型推广到复张量场,并给出了其数值迭代格式。模拟图像和PolSAR图像上的实验充分验证了本文算法的有效性。与现有算法相比,本文算法具有更好的去噪能力和边缘保持能力。  相似文献   

5.
极化干涉相干矩阵服从复Wishart分布,通过对相关系数的分析可以获得不同的地物类别。在总结极化干涉非监督Wishart ML分类流程的基础上,基于该方法对塔河地区全极化PALSAR数据进行了分类,研究结果表明:基于极化干涉的分类方法能够有效区分不同散射机制对应的地物,该分类方法具有较强的适应性,并且类间边界比较明显,这些分类信息为森林资源的开发和利用提供了参考。  相似文献   

6.
本文提出一种利用Yamaguchi分解保持地物散射特性的极化SAR数据分类方法。该方法利用Yamaguchi分解获得4种散射机理:表面散射、体散射、偶次散射和螺旋体散射,根据4种散射机理的功率大小判断地物的主散射机理和类别之间的Wishart距离,合并到指定个数的初始类别;并结合Wishart距离分类器对初始类进行迭代修正,实现极化SAR图像的非监督分类。最后利用AIRSAR数据与已有分类方法进行对比实验,验证了本方法的优势及适用性。  相似文献   

7.
像素点间相似性度量是非局部均值滤波算法的关键所在。从信息论角度出发,提出了一种改进的多视Pol SAR非局部均值滤波方法。该算法在综合分析各类矩阵测度基础上,选定Kullback-Leibler距离作为最优相似度量,结合多视极化相干矩阵服从复Wishart分布,给出了极化相干矩阵的KL距离,并在预处理中应用了极化旋转。实验结果表明,改进方法能够在保持边缘细节的同时有效抑制相干斑。  相似文献   

8.
像素点间相似性度量是非局部均值滤波算法的关键所在。从信息论角度出发,提出了一种改进的多视Pol SAR非局部均值滤波方法。该算法在综合分析各类矩阵测度基础上,选定Kullback-Leibler距离作为最优相似度量,结合多视极化相干矩阵服从复Wishart分布,给出了极化相干矩阵的KL距离,并在预处理中应用了极化旋转。实验结果表明,改进方法能够在保持边缘细节的同时有效抑制相干斑。  相似文献   

9.
极化SAR图像分类是SAR图像解译的重要内容,快速、准确的SAR图像分类是实现各种实际应用的前提.现基于极化SAR图像的特点,用H-α、Wishart分布及H-α-FCM三种方法对机载全极化SAR数据和星载全极化SAR数据做了分类实验研究.结果表明,由于H-α平面的划分过于简单,这不可避免的会导致分类结果的不稳定性;Wishart分类方法能够清楚地区分开自然地物的主要类型,更符合散射机制的自然分布,并考虑与后向散射强度有关的信息,以一种自适应的方式改变了H-α平面中的决策边界,改善了H-α分类结果;H-α-FCM分类方法能较好的克服H-α分类结果中地物类别的模糊问题.  相似文献   

10.
采用不同的分类方法对荷兰Flevoland地区全极化数据进行分类,讨论了各分类方法存在的问题,通过比较得出基于复Wishart分布的最大似然监督分类的效果较好。  相似文献   

11.
Region-based classification of PolSAR data can be effectively performed by seeking for the assignment that minimizes a distance between prototypes and segments. Silva et al. [“Classification of segments in PolSAR imagery by minimum stochastic distances between wishart distributions.” IEEE Journal of Selected Topics in Applied Earth Observations and Remote Sensing 6 (3): 1263–1273] used stochastic distances between complex multivariate Wishart models which, differently from other measures, are computationally tractable. In this work we assess the robustness of such approach with respect to errors in the training stage, and propose an extension that alleviates such problems. We introduce robustness in the process by incorporating a combination of radial basis kernel functions and stochastic distances with Support Vector Machines (SVM). We consider several stochastic distances between Wishart: Bhatacharyya, Kullback-Leibler, Chi-Square, Rényi, and Hellinger. We perform two case studies with PolSAR images, both simulated and from actual sensors, and different classification scenarios to compare the performance of Minimum Distance and SVM classification frameworks. With this, we model the situation of imperfect training samples. We show that SVM with the proposed kernel functions achieves better performance with respect to Minimum Distance, at the expense of more computational resources and the need of parameter tuning. Code and data are provided for reproducibility.  相似文献   

12.
This paper presents a supervised polarimetric synthetic aperture radar (PolSAR) change detection method applied to specific land cover types. For each pixel of a PolSAR image, its target scattering vector can be modeled as having a complex multivariate normal distribution. Based on this assumption, the joint distribution of two corresponding vectors in a pair of PolSAR images is derived. Then, a generalized likelihood ratio test statistic for the equality of two likelihood functions of such joint distribution is considered and a maximum likelihood distance measure for specific land cover types is presented. Subsequently, the Kittler and Illingworth minimum error threshold segmentation method is applied to extract the specific changed areas. Experiments on two repeat-pass Radarsat-2 fully polarimetric images of Suzhou, China, demonstrate that the proposed change detection method gives a good performance in determining the specific changed areas in PolSAR images, especially the areas that have changed to water.  相似文献   

13.
针对经典极化分类算法在处理机载X波段SAR数据时将过多地物分为体散射类型,并且容易受噪声影响,分类结果存在大量误分现象的问题,通过对机载X波段SAR数据非监督分类方法的研究,提出将极化干涉信息用于机载X波段极化干涉SAR数据的分类。通过运用极化干涉数据进行目标分解得到参数A1和A2对数据进行初始分类,然后结合改进的Wishart最大似然分类算法来进行地物的自适应分类。实验结果表明,该方法能有效避免平地效应的影响,抗噪性好,能正确区分三种典型散射类型,分类效果明显优于极化分类效果。  相似文献   

14.
提出一种优化的极化SAR图像海面目标检测方法,结合改进的极化SAR四分量分解中的螺旋散射分量与Wishart分类器,充分利用极化散射特性、结构特征、统计特性来进行目标的自动检测。同时通过纹理特征相似性克服了Wishart分类器在无目标海域检测时容易将强度值较高的海杂波误认为目标的缺陷。采用美国无人机UAVSAR在Mexico海域和巴拿马Barro Colorado Island海域获取的两组L波段全极化数据进行实验验证。实验结果表明:文中的优化方法能够较准确检测海面目标,很好地降低虚警率;同时解决了Wishart分类器在无目标海域发生错检的问题。  相似文献   

15.
In this paper, the linear discriminative Laplacian eigenmaps (LDLE) dimensionality reduction (DR) algorithm is introduced to C-band polarimetric synthetic aperture radar (PolSAR) agricultural classification. A collection of homogenous areas of the same crop class usually presents physical parameter variation, such as the biomass and soil moisture. Furthermore, the local incidence angle also impacts a lot on the same crop category when the vegetation layer is penetrable with C-band radar. We name this phenomenon as the “observed variation of the same category” (OVSC). The most common PolSAR features, e.g., the Freeman–Durden and Cloude–Pottier decompositions, show an inadequate performance with OVSC. In our research, more than 40 coherent and incoherent PolSAR decomposition models are stacked into the high-dimensionality feature cube to describe the various physical parameters. The LDLE algorithm is then performed on the observed feature cube, with the aim of simultaneously pushing the local samples of the same category closer to each other, as well as maximizing the distance between local samples of different categories in the learnt subspace. Finally, the classification result is obtained by nearest neighbor (NN) or Wishart classification in the reduced feature space. In the simulation experiment, eight crop blocks are picked to generate a test patch from the 1991 Airborne Synthetic Aperture Radar (AIRSAR) C-band fully polarimetric data from of Flevoland test site. Locality preserving projections (LPP) and principal component analysis (PCA) are then utilized to evaluate the DR results of the proposed method. The classification results show that LDLE can distinguish the influence of the physical parameters and achieve a 99% overall accuracy, which is better than LPP (97%), PCA (88%), NN (89%), and Wishart (88%). In the real data experiment, the Chinese Hailaer nationalized farm RadarSat2 PolSAR test set is used, and the classification accuracy is around 94%, which is again better than LPP (90%), PCA (88%), NN (89%), and Wishart (85%). Both experiments suggest that the LDLE algorithm is an effective way of relieving the OVSC phenomenon.  相似文献   

16.
刘留  杨学志  周芳  郎文辉 《遥感学报》2017,21(2):218-227
极化合成孔径雷达(SAR)图像受相干斑噪声的影响,难以很好地保持结构特性,针对这个问题提出了一种采用3维块匹配小波变换的非局部均值滤波算法NL-3DWT(Nonlocal Filter based on 3-D Patch Matching Wavelet Transform)。该算法使用块匹配的3维非抽样小波变换对极化总功率图进行预滤波,在此基础上使用边界对齐窗提取结构相似像素,同时使用Sigma范围选择极化SAR数据的散射相似像素,共同构成相似像素集合;构建结构保持权重函数增大图像结构信息在块相似性度量时的权重,最终实现极化SAR图像结构保持的相干斑抑制。该算法增强了图像结构特征的表达,提高了结构相似像素选择的准确性,机载极化SAR数据实验结果表明,NL-3DWT算法能够在抑制相干斑噪声的同时,更有效地保持极化SAR图像的结构特性和极化散射特性。  相似文献   

17.
Reliability of the scattering model based polarimetric SAR (PolSAR) speckle filter depends upon the accurate decomposition and classification of the scattering mechanisms. This paper presents an improved scattering property based contextual speckle filter based upon an iterative classification of the scattering mechanisms. It applies a Cloude-Pottier eigenvalue-eigenvector decomposition and a fuzzy H/α classification to determine the scattering mechanisms on a pre-estimate of the coherency matrix. The H/α classification identifies pixels with homogeneous scattering properties. A coarse pixel selection rule groups pixels that are either single bounce, double bounce or volume scatterers. A fine pixel selection rule is applied to pixels within each canonical scattering mechanism. We filter the PolSAR data and depending on the type of image scene (urban or rural) use either the coarse or fine pixel selection rule. Iterative refinement of the Wishart H/α classification reduces the speckle in the PolSAR data. Effectiveness of this new filter is demonstrated by using both simulated and real PolSAR data. It is compared with the refined Lee filter, the scattering model based filter and the non-local means filter. The study concludes that the proposed filter compares favorably with other polarimetric speckle filters in preserving polarimetric information, point scatterers and subtle features in PolSAR data.  相似文献   

18.
本文在经典的极化分类Wishart距离基础上提出了一种对变化敏感的极化距离测度,发展了相应的多时相极化SAR变化检测方法。以北京地区的多时相全极化RADARSAT-2影像进行了实验,对比分析了提出的极化距离测度与各个极化通道后向散射系数对数比值对不同类型地物变化的区分能力,结果表明,提出的极化距离测度不仅对所有的变化类型均有良好的检测作用,而且对变化区域有更高的区分力。这说明本文提出的极化SAR变化检测方法具有广泛的应用价值。  相似文献   

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