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1.
合成孔径雷达(SAR)海冰图像分割对全球气候研究和保证船舶航行安全具有重要意义。现有的基于区域的马尔可夫随机场(MRF)多极化SAR分割方法,由于受相干斑噪声影响,其区域划分不尽合理,不能有效完成分割。因此,提出一种噪声抑制的多极化SAR海冰图像分割算法,首先在极化总功率图上引入降低噪声的滤波算法,合理划分初始区域,其次考虑区域之间的差异度,从而实现多极化SAR海冰图像的准确分割。以RADARSAT-2和SIR-C获得的全极化海冰图像为实验数据进行验证,结果表明:和其他较先进算法相比,本文算法优势明显,既能高效保持图像连通性,又能增强图像的细节信息,具有更高的分割精度。  相似文献   

2.
赵泉华  郭世波  李晓丽  李玉 《测绘学报》2018,47(12):1609-1620
特征提取及其选择是SAR海冰分类的重要步骤之一。在众多特征中选取有效特征,进而构建表达地物类型的特征空间是提高分类精度的关键。为此,本文提出一种基于目标分解特征的全极化SAR海冰分类算法。首先,对全极化SAR数据进行多视化处理及滤波操作,生成相干矩阵;其次,对相干矩阵进行目标分解,并针对分解结果提取散射特征参数,进而构建特征空间;再次,通过对所提取的特征进行统计相关性分析,并对高相关特征采用PCA降维,以优化特征组合;最后,设计BP神经网络分类器,并将所得的优化特征矢量作为输入,海冰类别为输出,实现海冰分类。本文以格陵兰中部海域作为研究试验区域,采用L波段ALOS PALSAR全极化数据。通过对本文算法与对比算法的分类结果进行定性定量分析,可以得出本文所选取的特征对海冰识别较好。此外,通过对利用各个不同特征海冰分类结果的性能分析,可以得出基于散射模型的目标分解比基于特征值的H/α/A分解更有助于海冰分类。  相似文献   

3.
We present a study of the polarimetric information content of dual-pol imaging modes and dual-pol imaging extended by polarimetric scattering models. We compare Wishart classifications both among the partial polarimetric datasets and against the full quad-pol dataset. Our emphasis is the inter-comparisons between the classification results based on dual-pol modes, compact polarimetric modes and scattering model extensions of the compact polarimetric modes. We primarily consider novel dual-pol modes, e.g. transmitting a circular polarization and receiving horizontal and vertical polarizations, and the pseudo-quad-pol data derived from polarimetric scattering models based on dual-pol data. We show that the overall classification accuracy of the pseudo-quad-pol data is essential the same as the classification accuracy obtained directly employing the underlying dual-pol imagery.  相似文献   

4.
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   

5.
海冰类型是北极海冰监测中的重要变量,详细的海冰类型信息对冰情评估、气候预测和冬季海上交通管理等具有重要意义.CryoSat-2卫星携带先进的合成孔径雷达高度计,具有观测尺度大、能够全天时全天候观测的优势,是研究两极海冰变化的一种方法.本文使用CryoSat-2卫星SAR模式下波形数据识别北极海冰类型,采用阈值法、K-N...  相似文献   

6.
提出了一种新的基于Cloude-Pottier分解和极化白化滤波(PWF)的全极化SAR数据分类算法。该算法利用PWF的结果来代替反熵A对复WishartH/α分类结果进行进一步细化,按PWF的值将复WishartH/α分类结果由8类分为16类,然后再次进行Wishart迭代分类。实验结果表明,该算法能有效地提高分类精度,分类结果明显优于常规的复WishartH/α分类结果和复WishartH/α/A分类结果。  相似文献   

7.
RADARSAT-2全极化SAR数据地表覆盖分类   总被引:1,自引:0,他引:1  
全极化合成孔径雷达(SAR)能够测量每一观测目标的全散射矩阵,但地物分布的复杂性往往造成不同地物具有相似的后向散射信号特征,因而增加了地物信息提取的难度。文中基于北京地区的RADARSAT-2全极化雷达数据,在图像处理的特征分解的基础上,利用PolSARPro软件提取包含地物散射机理信息的各种极化参数,按H-α、A-α、H-A对全极化SAR影像进行基于散射机理的分类,继而将分类结果作为Wishart H/A/α、Wishart H/α的初始类别划分。最后,采用决策树分类算法对基于Wishart分布的监督分类及以上两种分类算法进行融合处理,从而实现地物的分类,并将分类结果与经典的分类算法进行对比分析,验证了文中方法的有效性。  相似文献   

8.
采用MODIS可见光反射率、热红外亮温和RadarSat-2双极化后向散射等多源数据,通过建立决策树综合判断来识别波弗特海域冬季的冰间水道及其内部冰型,并进行精度评价。研究发现,MODIS热红外只能粗略提取冰间水道轮廓;而高分辨率的RadarSat-2影像可以提供更多海冰类型信息,但是不同冰型的后向散射信号有重叠,影响水道提取的精度。研究结合多源数据建立决策树,综合极化后向散射和表面温度等参数来判断海冰类型,从而识别不同发育阶段的冰间水道。该方法的识别精度优于单变量方法。高分辨率Sentinel-2光学影像验证了不同阶段冰间水道的顺序分布。多源数据的应用有助于更准确地计算水道区域的海-气热通量和产冰量,同时为船只导航提供更详细的冰情信息。  相似文献   

9.
This paper presents a novel method for supervised water-body extraction and water-body types identification from Radarsat-2 fully polarimetric (FP) synthetic aperture radar (SAR) data in complex urban areas. First, supervised water-body extraction using the Wishart classifier is performed, and the false alarms that are formed in built-up areas are removed using morphological processing methods and spatial contextual information. Then, the support vector machine (SVM), the classification and regression tree (CART), TreeBagger (TB), and random forest (RF) classifiers are introduced for water-body types (rivers, lakes, ponds) identification. In SAR images, certain other objects that are misclassified as water are also considered in water-body types identification. Several shape and polarimetric features of each candidate water-body are used for identification. Radarsat-2 PolSAR data that were acquired over Suzhou city and Dongguan city in China are used to validate the effectiveness of the proposed method, and the experimental results are evaluated at both the object and pixel levels. We compared the water-body types classification results using only shape features and the combination of shape and polarimetric features, the experimental results show that the polarimetric features can eliminate the misclassifications from certain other objects like roads to water areas, and the increasement of classification accuracy embodies at both the object and pixel levels. The experimental results show that the proposed methods can achieve satisfactory accuracies at the object level [89.4% (Suzhou), 95.53% (Dongguan)] and the pixel level [96.22% (Suzhou), 97.95% (Dongguan)] for water-body types classification, respectively.  相似文献   

10.
ABSTRACT

Surface roughness of sea ice is primary information for understanding sea ice dynamics and air–ice–ocean interactions. Synthetic aperture radar (SAR) is a powerful tool for investigating sea ice surface roughness owing to the high sensitivity of its signal to surface structures. In this study, we explored the surface roughness signatures of the summer Arctic snow-covered first-year sea ice in X-band dual-polarimetric SAR in terms of the root mean square (RMS) height. Two ice campaigns were conducted for the first-year sea ice with dry snow cover in the marginal ice zone of the Chukchi Sea in August 2017 and August 2018, from which high-resolution (4 cm) digital surface models (DSMs) of the sea ice were derived with the help of a terrestrial laser scanner to obtain the in situ RMS height. X-band dual-polarimetric (HH and VV) SAR data (3 m spatial resolution) were obtained for the 2017 campaign, at a high incidence angle (49.5°) of TerraSAR-X, and for the 2018 campaign, at a mid-incidence angle (36.1°) of TanDEM-X 1–2 days after the acquisition of the DSMs. The sea ice drifted during the time between the SAR and DSM acquisitions. As it is difficult to directly co-register the DSM to SAR owing to the difference in spatial resolution, the two datasets were geometrically matched using unmanned aerial vehicle (4 cm resolution) and helicopter-borne (30 cm resolution) photographs acquired as part of the ice campaigns. A total of five dual-polarimetric SAR features―backscattering coefficients at HH and VV polarizations, co-polarization ratio, co-polarization phase difference, and co-polarization correlation coefficient ―were computed from the dual-polarimetric SAR data and compared to the RMS height of the sea ice, which showed macroscale surface roughness. All the SAR features obtained at the high incidence angle were statistically weakly correlated with the RMS height of the sea ice, possibly influenced by the low backscattering close to the noise level that is attributed to the high incidence angle. The SAR features at the mid-incidence angle showed a statistically significant correlation with the RMS height of the sea ice, with Spearman’s correlation coefficient being higher than 0.7, except for the co-polarization ratio. Among the intensity-based and polarimetry-based SAR features, HH-polarized backscattering and co-polarization phase difference were analyzed to be the most sensitive to the macroscale RMS height of the sea ice. Our results show that the X-band dual-polarimetric SAR at mid-incidence angle exhibits potential for estimation of the macroscale surface roughness of the first-year sea ice with dry snow cover in summer.  相似文献   

11.
The main research goal of this study is to investigate the complementarity and fusion of different frequencies (L- and P-band), polarimetric SAR (PolSAR) and polarimetric interferometric (PolInSAR) data for land cover classification. A large feature set was derived from each of these four modalities and a two-level fusion method was developed: Logistic regression (LR) as ‘feature-level fusion’ and the neural-network (NN) method for higher level fusion. For comparison, a support vector machine (SVM) was also applied. NN and SVM were applied on various combinations of the feature sets.  相似文献   

12.
Single, interferometric dual, and quad-polarization mode data were evaluated for the characterization and classification of seven land use classes in an area with shifting cultivation practices located in the Eastern Amazon (Brazil). The Advanced Land-Observing Satellite (ALOS) Phased Array L-band Synthetic Aperture Radar (PALSAR) data were acquired during a six month interval. A clear-sky Landsat-5/TM image acquired at the same period was used as additional ground reference and as ancillary input data in the classification scheme. We evaluated backscattering intensity, polarimetric features, interferometric coherence and texture parameters for classification purposes using support vector machines (SVM) and feature selection. Results showed that the forest classes were characterized by low temporal backscattering intensity variability, low coherence and high entropy. Quad polarization mode performed better than dual and single polarizations but overall accuracies remain low and were affected by precipitation events on the date and prior SAR date acquisition. Misclassifications were reduced by integrating Landsat data and an overall accuracy of 85% was attained. The integration of Landsat to both quad and dual polarization modes showed similarity at the 5% significance level. SVM was not affected by SAR dimensionality and feature selection technique reveals that co-polarized channels as well as SAR derived parameters such as Alpha-Entropy decomposition were important ranked features after Landsat’ near-infrared and green bands. We show that in absence of Landsat data, polarimetric features extracted from quad-polarization L-band increase classification accuracies when compared to single and dual polarization alone. We argue that the joint analysis of SAR and their derived parameters with optical data performs even better and thus encourage the further development of joint techniques under the Reducing Emissions from Deforestation and Degradation (REDD) mechanism.  相似文献   

13.
极化SAR影像中阴影、水体和裸露的耕地3种地物类型有非常相似的极化散射特性,常规基于非相干分解的分类方法难以将其有效地区分。对此,本文引入基于Freeman分解的散射熵Hf和各向异性度Af两个特征参数,并将其用于极化SAR影像分类。首先利用Hf和Af参数将阴影和水体提取出来,然后将其他地物按散射机制分为3大类,并对每一类再次利用Hf和Af参数进行细分,最后通过基于Wishart分布的聚类和迭代分类,得到最终的分类结果。通过利用Radarsat-2在河南登封获取的全极化SAR数据进行试验,表明该算法执行效率高,能够有效地区分阴影、水体和裸露的耕地,并且对其他地物类型也有很好的分类效果。  相似文献   

14.
刘修国  姜萍  陈启浩  陈奇 《测绘学报》2015,44(2):206-213
本文针对基于Freeman分解的建筑提取方法存在的问题, 提出采用圆极化相关系数实现选择性去取向, 同时引入广义体散射模型, 构建面向建筑提取的改进三分量分解模型, 以准确分析地物的散射特性。在此基础上, 发展了一种综合利用改进三分量分解与Wishart迭代分类算法的极化SAR图像建筑提取方法。使用E-SAR全极化数据的试验结果表明, 本文方法能够有效减少建筑与植被的误分, 并提高建筑信息提取的准确性。  相似文献   

15.
受海冰自身特性、成像系统特性和环境因素的影响,合成孔径雷达SAR海冰图像具有非平稳、尺度依赖的空间结构,现有的单马尔可夫随机场MRF模型分割方法只能较好地适应非平稳性,对海冰场景的多尺度结构考虑仍然是全局的。为此,本文提出了一种区域分裂过程与二叉树分层结构自适应更新相结合的单MRF图像分割方法。首先利用单MRF模型的全局迭代权值完成初始区域合并,同时以二叉树形式保护合并过程的记录。所设计的分层合并算法可保证二叉树结构的节点数与场景中的对象尺度具有正相关性。随后的细化分裂并不产生新的区域,只是返回到初始配置。依据场景中不同区域对象的尺度,自适应地调整空间语境模型中的尺度权值,实现区域更新。实验表明,该方法有效提高了带有多尺度结构SAR海冰场景的分割精度。  相似文献   

16.
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   

17.
施骞  苏洁 《遥感学报》2020,24(7):867-882
冰速是海冰的重要参数,但是受资料长度限制,对卫星遥感冰速产品进行系统比较和评估的研究还较少。利用2009年—2017年国际北极浮标计划(IABP)浮标冰速数据,较系统地评估了不同时间间隔的遥感反演冰速产品在北冰洋内区和弗拉姆海峡附近海区的表现。结果显示,对北冰洋内区而言,1 d间隔的美国国家雪冰数据中心(NSIDC)遥感冰速冬季误差整体大于夏季,冬季高估了波弗特海南部海冰向西的运动,低估了从喀拉海流向格陵兰岛北部的穿极流。对于5种2 d间隔冰速产品而言,产品精度不完全取决于源数据空间分辨率的高低,反演算法的改进和数据融合均能提高冰速的精度,均方根误差大小的顺序是OSISAF-Merged <OSISAF-AMSR <Ifremer-AMSR <OSISAF-SSM < OSISAF-ASCAT。对于4种使用相同反演算法的3 d间隔的冰速产品,产品的均方根误差取决于源数据分辨率,空间分辨率最高的Ifremer-AMSR冰速均方根误差最小。比较不同种类、不同时间间隔冰速的月平均均方根误差后可知,采用3 d间隔反演的冰速由于能够忽略更多短时间尺度海冰运动,其冰速均方根误差低于2 d间隔的冰速。在弗拉姆海峡,除Ifremer-AMSR外,其余冰速产品均具有较大的经向偏差和均方根误差。在冰速较快弗拉姆海峡,冰速产品均方根误差取决于源数据的分辨率。  相似文献   

18.
卫星测高技术的发展使得大空间尺度探测海冰成为可能,海冰干舷高是反演海冰厚度的关键参量,获取精确的海冰干舷高对海冰探测及了解全球气候变化均具有重要的作用。本文基于近3年获取的CryoSat-2卫星SAR模式测高资料,在60°N—88°N纬度带内的北极海域通过设定阈值筛选可用的观测数据,并在此基础上计算2015—2017年间月平均海冰干舷高,最后通过IceBridge航飞数据的时空匹配验证了本文获取的干舷高计算结果是可靠的。  相似文献   

19.
In this study, we assess the potential of X-band Interferometric Synthetic Aperture Radar imagery for automated classification of sea ice over the Baltic Sea. A bistatic SAR scene acquired by the TanDEM-X mission over the Bothnian Bay in March of 2012 was used in the analysis. Backscatter intensity, interferometric coherence magnitude, and interferometric phase have been used as informative features in several classification experiments. Various combinations of classification features were evaluated using Maximum likelihood (ML), Random Forests (RF) and Support Vector Machine (SVM) classifiers to achieve the best possible discrimination between open water and several sea ice types (undeformed ice, ridged ice, moderately deformed ice, brash ice, thick level ice, and new ice). Adding interferometric phase and coherence-magnitude to backscatter-intensity resulted in improved overall classification per- formance compared to using only backscatter-intensity. The RF algorithm appeared to be slightly superior to SVM and ML due to higher overall accuracies, however, at the expense of somewhat longer processing time. The best overall accuracy (OA) for three methodologies were achieved using combination of all tested features were 71.56, 72.93, and 72.91% for ML, RF and SVM classifiers, respectively. Compared to OAs of 62.28, 66.51, and 63.05% using only backscatter intensity, this indicates strong benefit of SAR interferometry in discriminating different types of sea ice. In contrast to several earlier studies, we were particularly able to successfully discriminate open water and new ice classes.  相似文献   

20.
极化合成孔径雷达(SAR)图像的相干斑严重影响图像信息的有效提取,为此提出一种基于极化散射特性的相干斑抑制方法。该方法结合SAR图像的冗余信息及其散射特性的相似性,利用Wishart分布对SAR数据的相似性进行度量,然后依据相似性计算权重对协方差矩阵进行加权平均,实现对极化SAR图像的相干斑抑制。本文方法对协方差矩阵的各元素单独处理,因此在极化信息的保留方面尤具优势。通过真实SAR数据的实验表明,该方法与现有极化白化滤波(PWF)和极化Lee滤波相比,具有更好的相干斑抑制能力和细节的保持能力。  相似文献   

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