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1.
This paper studies a specific one-class classification problem where the training data are corrupted by significant outliers. Specifically, we are interested in the one-class support vector machine (OCSVM) approach that normally requires good training data. However, perfect training data are usually hard to obtain in most real-world applications due to the inherent data variability and uncertainty. To address this issue, we propose an OCSVM-based data editing and classification method that can iteratively purify the training data and learn an appropriate classifier from the trimmed training set. The proposed method is compared with a general OCSVM approach trained from two types of bootstrap samples, and applied to the mapping and compliance monitoring tasks for the U.S. Department of Agriculture's Conservation Reserve Program using remotely sensed imagery. Experimental results show that the proposed method outperforms the general OCSVM using bootstrap samples at a lower computational load.  相似文献   

2.
针对传统的高光谱遥感影像分类受限于训练样本的个数,难以取得较好分类结果的不足,提出了一种基于聚类核的半监督支持向量机(S3VM)模型的高光谱遥感影像分类方法。该算法在半监督支持向量机的体系上加入未标记样本来辅助构建核矩阵,从而获得更优异的分类器,在小样本的基础上提高分类精度。试验结果表明,本文方法的分类精度好于传统方法,并且稳定性良好。  相似文献   

3.
We study an automatic compliance monitoring approach for U.S. Department of Agriculture's (USDA) Conservation Reserve Program (CRP). CRP compliance monitoring checks each CRP tract regarding its contract stipulations, and is formulated as an unsupervised classification of Landsat imageries given the CRP reference data. Assuming the majority of a CRP tract is compliant, we want to locate the non-CRP outliers. A one-class support vector machine (OCSVM) is used to separate minor outliers (non-CRP) from the majority (CRP). /spl nu/ is an important OCSVM parameter that controls the percentage of outliers and is unknown here. Usually, /spl nu/ estimation may be complicated or computationally expensive. We propose a /spl nu/-insensitive approach by incorporating both the OCSVM and two-class support vector machine (TCSVM) sequentially. Specifically, support vector machine scores obtained from the OCSVM, which indicate the distances between data samples and the classification hyperplane in a feature space, are used to select sufficient and reliable training samples for the TCSVM. Simulation results show the effectiveness and robustness of the proposed method.  相似文献   

4.
迁移学习是运用已有知识对相关的不同领域的问题进行求解的一种机器学习方法,本文结合这一方法,提出了一种基于先验知识的样本自动选取方法,并构建了一套土地覆盖自动分类的算法框架。该方法主要面向Landsat数据,通过图像变化检测技术与光谱形状编码的方法,从源领域中迁移适用的地物类别知识并标记在目标影像中,使用SVM完成基于样本迁移的自动分类流程。结果表明,该方法可以获得可靠的自动分类结果,一定程度上满足遥感信息的大范围提取与长时间序列处理分析的发展需求。  相似文献   

5.
基于支持向量机的航空影像纹理分类研究   总被引:8,自引:0,他引:8  
提出一种用SVM解决航空影像纹理分类的方法。在利用一些常用的纹理特征的基础上,将SVM用于航空影像纹理分类,有效地解决了特征选择难和高维数问题。试验表明,这种方法可以取得较好的结果。  相似文献   

6.
提出了一种利用一类支持向量机(OC-SVM)进行特定目标地物提取的改进最佳波段组合方法(MOIF)。以Landsat8卫星影像作为数据源,对江苏省沿海滩涂光伏电站进行了提取试验,并利用人工解译的结果进行了精度评定。结果表明,本文提出的波段组合方法能够有效提取特定的目标地物。  相似文献   

7.
Semisupervised Remote Sensing Image Classification With Cluster Kernels   总被引:1,自引:0,他引:1  
A semisupervised support vector machine is presented for the classification of remote sensing images. The method exploits the wealth of unlabeled samples for regularizing the training kernel representation locally by means of cluster kernels. The method learns a suitable kernel directly from the image and thus avoids assuming a priori signal relations by using a predefined kernel structure. Good results are obtained in image classification examples when few labeled samples are available. The method scales almost linearly with the number of unlabeled samples and provides out-of-sample predictions.  相似文献   

8.
高分五号(GF-5)搭载的高光谱传感器兼顾宽覆盖和高分辨率的特性,但在实际应用中宽覆盖范围内各种地物类别的标注十分困难。当标记样本很少甚至没有标记样本时,遥感图像分类异常困难。此时,可以采用域适应方法,借助已标记的历史数据(源域)实现对未标记数据(目标域)的分类。本文提出了一种基于稀疏矩阵变换的关联对齐域适应分类算法。首先,利用稀疏矩阵变换估计源域和目标域的协方差矩阵;然后,运用协方差关联对齐方法估计源域到目标域的变换矩阵;接着,运用估计得到的变换矩阵将源域数据进行变换,使得其与目标域对齐;最后,在变换后的源域数据上建立分类器,实现对目标域数据的分类。本文的算法在两个真实的GF-5高光谱数据集上进行了验证。实验结果表明,本文算法要优于常用的子空间对齐算法和关联对齐算法。特别地,在黄河口GF-5数据上,本文算法比原始关联对齐方法的最近邻分类准确率提升了3.5%,支持向量机分类准确率提升了2.3%。  相似文献   

9.
两种不同的SVM建模方法在大坝变形预测中的应用   总被引:1,自引:0,他引:1  
用支持向量机对大坝变形监测数据建模分析和预测一般有两种方法:一是仅用大坝的变形数据作为输入端和输出端,构建支持向量机模型;二是用温度、水压等大坝变形的影响因子作为输入端,大坝变形数据作为输出端,构建支持向量机模型。两种建模方法比较研究鲜有讨论,文中用这两种建模方法对福建省某一大坝进行建模预测。结果表明,第二种方法建模预测速度更快,预测精度更高。  相似文献   

10.
周建伟  吴一全 《测绘学报》2020,49(3):355-364
为了进一步提高遥感图像建筑物区域的识别精度,提出了一种基于中值稳健扩展局部二值模式(median robust extended local binary pattern,MRELBP)、Franklin矩和布谷鸟优化支持向量机(support vector machine,SVM)的分类方法。首先,通过MRELBP特征算子计算图像块的纹理特征向量,并根据Franklin矩得到形状特征向量,组合图像块的纹理特征向量和形状特征向量得到综合特征向量;然后,利用训练样本对SVM进行训练,同时由布谷鸟搜索算法对SVM的核函数参数和惩罚因子进行优化;最后,通过训练好的SVM得到建筑物区域识别结果。通过30组试验的结果表明,与基于三原色(red green blue,RGB)和SVM的分类方法、基于LBP和SVM的分类方法、基于Zernike矩和SVM的分类方法相比,本文提出的方法所识别的遥感图像建筑物区域准确度更高。  相似文献   

11.
一种遥感影像核变化检测方法   总被引:1,自引:0,他引:1  
提出了一种新的遥感影像核变化检测方法。该方法是将原始空间不同时相的输入矢量通过核函数非线性映射到高维特征空间,然后在高维特征空间中通过传统变化检测方法处理得到新的输入矢量,最后通过半监督的单类支持向量机算法对新的输入矢量构造变化区域与非变化区域的最优分割超平面。试验证实,本文的核变化检测方法具有较高的检测精度和效率。  相似文献   

12.
This letter presents two kernel-based methods for semisupervised regression. The methods rely on building a graph or hypergraph Laplacian with both the available labeled and unlabeled data, which is further used to deform the training kernel matrix. The deformed kernel is then used for support vector regression (SVR). Given the high computational burden involved, we present two alternative formulations based on the Nystrom method and the incomplete Cholesky factorization to achieve operational processing times. The semisupervised SVR algorithms are successfully tested in multiplatform leaf area index estimation and oceanic chlorophyll concentration prediction. Experiments are carried out with both multispectral and hyperspectral data, demonstrating good generalization capabilities when a low number of labeled samples are available, which is usually the case in biophysical parameter retrieval.  相似文献   

13.
激光技术的不断发展对利用点云数据进行地物分类的方法提出了更高的要求。基于此提出了一种结合遥感领域地物分类特点,利用地物反射率的不同来实现地物分类的方法。该方法首先提取数据的反射率信息,然后将其作为栅格化后的属性值,最后利用监督分类、非监督分类和支持向量机分类方法对栅格化后的栅格影像进行地物分类。通过实验表明,支持向量机方法在保持较高训练和分类速度的同时还具有较高的分类精度,总精度和Kappa系数达到了88.69%和0.86,为点云数据分类提供了一种新的途径。  相似文献   

14.
组合核支持向量回归提取高光谱影像不透水面   总被引:1,自引:0,他引:1  
刘帅  李琦 《遥感学报》2016,20(3):420-430
由于城市地表组成的复杂性,基于单核函数的支持向量回归模型很难满足精度。本文结合空间-光谱组合核函数和支持向量回归,提出了一种提取高光谱影像不透水面丰度的改进算法。首先从高光谱遥感图像上提取波谱特征和多通道灰度共生矩阵空间纹理特征,选取研究区10%像元特征数据作为训练数据,以线性加权求和核为多核组合方式,建立结合光谱信息和空间信息的组合核支持向量回归模型。然后,用生成的回归模型预测未知像元不透水面丰度值。最后,对实验结果进行评价。在模拟数据试验中,本文算法比单核回归均方根误差平均降低1.4%,决定系数比单核回归平均提高0.6%。在Hyperion数据两组试验中,该算法比单核回归均方根误差平均降低1.8%,决定系数比单核回归平均提高11.7%。模拟和真实两种高光谱数据实验中,本文算法均得到了空间形态上更准确的不透水面结果,单核回归结果存在失真现象。研究结果表明:本文算法能够有效提取城市不透水面丰度,与单核方法相比有较明显的精度提升。  相似文献   

15.
GPS技术因其诸多优点在工程测量中被广泛应用,最小二乘支持向量机应用于GPS高程拟合有着一定的优势。最小二乘支持向量机在处理非线性问题时,采用核函数代替内积计算,巧妙地解决了高维计算问题。文中综述了最小二乘支持向量机常用的几种核函数,用实验进行对比分析,结果表明,采用几种核函数都取得较好的效果,采用径向基核函数时效果最优。  相似文献   

16.
The use of cellular automata (CA) has for some time been considered among the most appropriate approaches for modeling land‐use changes. Each cell in a traditional CA model has a state that evolves according to transition rules, taking into consideration its own and its neighbors’ states and characteristics. Here, we present a multi‐label CA model in which a cell may simultaneously have more than one state. The model uses a multi‐label learning method—a multi‐label support vector machine, Rank‐SVM—to define the transition rules. The model was used with a multi‐label land‐use dataset for Luxembourg, built from vector‐based land‐use data using a method presented here. The proposed multi‐label CA model showed promising performance in terms of its ability to capture and model the details and complexities of changes in land‐use patterns. Applied to historical land use data, the proposed model estimated the land use change with an accuracy of 87.2% exact matching and 98.84% when including cells with a misclassification of a single label, which is comparably better than a classical multi‐class model that achieved 83.6%. The multi‐label cellular automata outperformed a model combining CA and artificial neural networks. All model goodness‐of‐fit comparisons were quantified using various performance metrics for predictive models.  相似文献   

17.
一种基于支撑向量机的遥感影像不完全监督分类新方法   总被引:9,自引:1,他引:9  
不完全监督分类是研究在只有目标类训练样本的情况下如何准确地将目标类从数据集中提取出来。在许多遥感应用问题中,往往只需要从遥感影像中提取某一类地物。如果分类过程中只要选取目标类训练样本,将节省在训练样本选取过程中的大量人力物力。因此不完全监督分类是一个值得研究的遥感分类问题。提出了一种基于加权无标识样本支撑向量机(WUS-SVM),并在其基础发展出一种不完全监督分类方法。该方法分3个步骤:(1)在影像中随机选取一定量的无标识样本,将它们作为具有不同权重的非目标类训练样本;(2)用目标类的训练样本和加权无标识训练样本一起训练WUS-SVM,得到初步的分类器;(3)利用初步的分类器确定无标识样本的类别,并与原目标类训练样本一起再次训练SVM得到最终的分类器。通过对模拟数据和遥感影像的分类试验初步证明了该分类方法的有效性。  相似文献   

18.
A Composite Semisupervised SVM for Classification of Hyperspectral Images   总被引:2,自引:0,他引:2  
This letter presents a novel composite semisupervised support vector machine (SVM) for the spectral-spatial classification of hyperspectral images. In particular, the proposed technique exploits the following: 1) unlabeled data for increasing the reliability of the training phase when few training samples are available and 2) composite kernel functions for simultaneously taking into account spectral and spatial information included in the considered image. Experiments carried out on a hyperspectral image pointed out the effectiveness of the presented technique, which resulted in a significant increase of the classification accuracy with respect to both supervised SVMs and progressive semisupervised SVMs with single kernels, as well as supervised SVMs with composite kernels.  相似文献   

19.
刘冰  左溪冰  谭熊  余岸竹  郭文月 《测绘学报》1957,49(10):1331-1342
针对高光谱影像分类面临的小样本问题,提出了一种深度少样例学习算法,该算法在训练过程中通过模拟小样本分类的情况来训练深度三维卷积神经网络提取特征,其提取得到的特征具有较小类内间距和较大的类间间距,更适合小样本分类问题,且能用于不同的高光谱数据,具有更好的泛化能力。利用训练好的模型提取目标数据集的特征,然后结合最近邻分类器和支持向量机分类器进行监督分类。利用Pavia大学、Indian Pines和Salinas 3组高光谱影像数据进行分类试验,试验结果表明,该算法能够在训练样本较少的情况下(每类地物仅选取5个标记样本作为训练样本)取得优于传统半监督分类方法的分类精度。  相似文献   

20.
In this work, we present a new strategy of active learning, based on a modular version of support vector machine (MSVM) applied to urban remote sensing images in Algeria. In general, the training set is highly imbalanced, which gives more complex models; this difficulty is solved by dividing the problem at hand into a set of sub-problems, where each sub-model could be simpler to solve. The support vector machine is introduced to solve the problem of classification based on image remote sensing data related to atmospheric conditions and illumination reflectance. The aim of the proposed method is to improve the accuracy in order to understand the correlated elements of urban structures (the site, the built, the parcels, the network, the space), to generate the final classification result. In particular, we propose a new method based on the modular support vector machine (MSVM) adopted to active learning method, using three different clustering methods (i) k-means, (ii) fuzzy c-means (FCM), and (iii) Gustafson–Kessel (GKclust). Experimental results obtained on two QuickBird multispectral images of Sétif and Batna cities in the eastern of Algeria confirm the capabilities of the proposed methods based on the ensemble of model trained with different task decomposition compared to a traditional model using active learning. This method improves each class presents a main register in urban structure tissues.  相似文献   

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