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1.
传统谱聚类的高光谱影像波段选择模型中,采用的波段相似矩阵受到噪声或异常值的影响且仅能表征波段的单一相似特征,导致波段子集的选取结果受到限制.本文从波段选择的目的 出发,提出鲁棒多特征谱聚类方法,整合多个特征的波段相似矩阵来形成综合相似矩阵以解决上述问题.该方法假设4种相似性度量包括光谱信息散度、光谱角度距离、波段相关性...  相似文献   

2.
赵亮  王立国  刘丹凤 《遥感学报》2019,23(5):904-910
为降低高光谱遥感数据光谱空间的冗余度,提出一种快速的波段选择方法。该方法在波段子空间下进行,依次选择各子空间中方差最大的波段作为初始波段,设定目标函数,然后逐子空间替换波段使得目标性能更加优化,直至没有替换可以使得目标更优为止。在两个公开高光谱影像数据集上对比3种常用波段选择方法(ABC、AP、ABS)来验证提出方法的有效性,实验结果表明:(1)在印第安纳数据上,本文方法与ABC、AP、ABS所选波段子集相比平均相关性分别降低22.04%、52.61%、55.71%,最佳指数分别提高0.58%、51.73%、0.95%,总体分类精度分别提高0.16%、1.39%、23.07%,在搜索效率上与同类型的ABC方法相比提高6.61%—69.02%;(2)在帕维亚大学数据上,本文方法与ABC、AP、ABS所选波段子集相比平均相关性分别降低2.38%、0.51%、32.83%,最佳指数分别提高1.34%、17.97%、12.92%,总体分类精度分别提高0.31%、0.69%、8.53%,在搜索效率上与同类型的ABC方法相比提高19.13%—86.34%。本文提出的波段选择方法能够选择合适的波段子集满足不同的应用需要,是一种有效的波段选择方法。  相似文献   

3.
提出一种稀疏自表达方法来研究高光谱影像分类中的波段选择问题。该方法利用字典矩阵等于测量矩阵的条件来改进多观测向量的稀疏表达模型,将波段子集看作高光谱影像波段集合中的代表子集。稀疏自表达方法将波段选择转换为寻求多观测向量中稀疏系数矩阵的非零行向量问题,通过引入混合范数来限定非零元素行向量的个数,利用快速交替方向乘子方法求解稀疏系数矩阵,并聚类非零行向量,实现波段的有效选择。基于两个公开高光谱影像数据集并对比其他4种波段选取方法来验稀疏自表达方法。实验结果证明,稀疏自表达方法能够在计算效率明显优于基于波段相关性的线性限制最小方差方法的同时,取得与该方法和非负稀疏矩阵分解方法相匹甚至略高的总体分类精度。  相似文献   

4.
Visual method for spectral band selection   总被引:1,自引:0,他引:1  
We present a new method for performing band selection experiments with spectral data. This method allows for the visual inspection and assessment of the experiment results, and includes a statistical significance test. The method follows a standard feature selection approach in which a multivariate distance measure is used as a figure of merit in a search-optimization procedure. For this letter, we have chosen the Jeffries-Matusita distance between each sample and its immediate background. The band selection methodology uses either an exhaustive search over all possible combinations of 1-4 bands or sequential forward selection. To analyze the band selection results, we count the number of times that each band is selected as a member of the best set by the protocol, and we plot the results as a band frequency histogram. This allows us to visually discern spectral patterns that are not evident otherwise, and thus better assess the utility of each spectral band. We can compute band frequency histograms over individual classes of samples or over groups of classes. In addition, we can compute a significance statistic that gives us the probability that a given histogram is not the result of random band selection outcomes.  相似文献   

5.
多源遥感影像融合最佳波段选择及质量评价研究   总被引:2,自引:0,他引:2  
许菡  燕琴  徐泮林  方荣新 《测绘科学》2007,32(3):72-74,87
本文选用了有蓝色波段和无蓝色波段两种遥感数据源,使用定量指标对各波段进行基本统计及分析,并计算各波段之间的联合熵、协方差、相关系数及最佳指数,确定四类遥感数据各自的最佳波段组合;并采用了几种融合方法将四种影像按照最佳波段组合融合,计算融合后影像与原始影像之间的相关系数,分析得到两类数据的最佳融合方法。  相似文献   

6.
A band selection technique for spectral classification   总被引:2,自引:0,他引:2  
In hyperspectral remote sensing, sensors acquire reflectance values at many different wavelength bands, to cover a complete spectral interval. These measurements are strongly correlated, and no new information might be added when increasing the spectral resolution. Moreover, the higher number of spectral bands increases the complexity of a classification task. Therefore, feature reduction is a crucial step. An alternative would be to choose the required sensor bands settings a priori. In this letter, we introduce a statistical procedure to provide band settings for a specific classification task. The proposed procedure selects wavelength band settings which optimize the separation between the different spectral classes. The method is applicable as a band reduction technique, but it can as well serve the purpose of data interpretation or be an aid in sensor design. Results on a vegetation classification task show an improvement in classification performance over feature selection and other band selection techniques.  相似文献   

7.
高光谱影像波段众多且相关性强,导致分类存在信息冗余且计算量较大。提出了可分离非负矩阵分解方法来选取高光谱影像的代表性波段子集,在保证分类精度的同时降低计算量。该方法假设高光谱影像的波段集合具有可分离特性,改进传统非负矩阵分解模型,将波段选择转换为可分离非负矩阵分解问题,采用迭代投影方法来依次选取能够非负线性表达其他波段的代表性波段。在此基础上,利用两个公开高光谱数据集对比几种主流方法,采用定量评价和分类精度指标来综合评价所提的波段选择方法的效果。实验结果表明,可分离非负矩阵分解方法的分类精度高于其他几种方法,而且计算效率排名第2,能够选取合适的波段子集以满足高光谱遥感的应用需求。  相似文献   

8.
Currently, hyperspectral images have potential applications in many scientific areas due to the high spectral resolution. Extracting suitable and adequate bands/features from high dimensional data is a crucial task to classify such data. To overcome this issue, dimension reduction techniques have direct effects to improve the efficiency of classifiers on hyperspectral images. One common approach for decreasing the dimensionality is the feature/band selection by considering the optimum dimensionality of the hyperspectral imagery. In this paper, a new method was proposed to select optimal band for classification application, based on a metaheuristic Invasive Weed Optimization (IWO) algorithm. In this regard, the K-nearest neighbour (K-NN) technique was used as the classifier. Moreover, as a by-product of our band selection method, a new method was proposed to estimate an optimum dimension of the reduced hyperspectral images for better classification. Experimental results over three real-world hyperspectral datasets clearly showed that the proposed IWO-based band selection algorithm of this study led to the significant progress in selecting suitable bands for classification applications and estimation of optimum dimensionality of these datasets. In this regard, the overall accuracy (OA) of classification of the proposed IWO-based band selection algorithm was 92.02, 93.57, and 89.72 % for each dataset, respectively. Moreover, results reveal the superiority of the proposed IWO-based band selection algorithm against the other algorithms including GA, SA, ACO, and PSO for band selection purpose.  相似文献   

9.
针对高光谱影像数据具有波段众多、数据量较大的特点,本文提出了一种基于波段子集的独立分量分析(ICA)特征提取的高光谱遥感影像分类的新方法。以北京昌平小汤山地区的高光谱影像为例,根据高光谱遥感影像的相邻波段的相关性进行子空间划分,在各个波段子集上采用ICA算法进行特征提取,将各个子空间提取的特征合并组成特征向量,采用支持向量机(SVM)分类器进行分类。结果表明:该方法分类精度最佳(分类精度89.04%,Kappa系数0.8605,明显优于其它特征提取方法的SVM分类,有效地提高了高光谱数据的分类精度。  相似文献   

10.
基于波段选择的高光谱遥感影像分类   总被引:1,自引:0,他引:1  
针对高光谱数据波段众多、数据量较大的特点,提出了一种基于波段选择的高光谱遥感影像分类方法,以北京昌平小汤山地区高光谱遥感数据为例,分析了各波段的信息含量和相邻波段的相关性,采用子空间划分、自适应波段选择的方法,实现了特征波段的选择。针对农村道路和空地、柏油路和居民地间的同谱异物现象,利用J-M距离模型判别其类间的可分性,获得了最佳波段组合,最后采用支持向量机分类器进行分类。结果表明,采用波段选择的方法能有效地提高高光谱数据的分类精度。  相似文献   

11.
精准农田识别是农作物估产和粮食安全评估的基础。遥感数据作为农田识别的重要数据源,可提供动态、快速的监测结果。高光谱数据在农田识别分类方面具有巨大的应用潜力,但其中的冗余波段影响了分类效率和分类精度。因此,本研究提出了一种适用于高光谱数据农田分类的混合式特征选择算法。首先,基于变量的重要性排序或约束程度,按步长逐步进行降维;其次,寻找分类精度骤减的转折点,并将其对应的变量作为特征子集;最后,利用序列后向选择SBS(Sequential Backward Selection)方法搜索最优分类特征子集。本研究利用GF-5高光谱数据,共研究了3种降维方法(随机森林RF(Random Forest)、互信息MI(Multi-Information)和L1正则化(L1 regularization))和3种分类算法(随机森林、支持向量机SVM(Support Vector Machine)和K近邻KNN(K-Nearest Neighbor))的组合在农田分类中的表现。结果表明,基于L1正则化法得到的特征子集自相关性较低,并且包含的红边和近红外波段有效提高了农田、森林和裸土的区分度。在不同分类模型比较中发现,SVM在高维空间中表现出非常好的抗噪能力,分类精度高于RF和KNN。而RF在低维空间中的泛化能力要高于SVM和KNN。相比于第一步降维得到的特征子集,使用SBS搜索得到的最优特征子集均提高了分类精度。最终,具有23维输入的L1-SVM-SBS分类模型得到了最高的总体分类精度(94.64%)和农田召回率(95.83%)。本研究为高光谱数据特征优选提供了一种新思路,筛选出了更具代表性的特征波段,提高了农田分类精度,对高光谱遥感分类研究具有参考价值。  相似文献   

12.
With recent technological advances in remote sensing sensors and systems, very high-dimensional hyperspectral data are available for a better discrimination among different complex land-cover classes. However, the large number of spectral bands, but limited availability of training samples creates the problem of Hughes phenomenon or ‘curse of dimensionality’ in hyperspectral data sets. Moreover, these high numbers of bands are usually highly correlated. Because of these complexities of hyperspectral data, traditional classification strategies have often limited performance in classification of hyperspectral imagery. Referring to the limitation of single classifier in these situations, Multiple Classifier Systems (MCS) may have better performance than single classifier. This paper presents a new method for classification of hyperspectral data based on a band clustering strategy through a multiple Support Vector Machine system. The proposed method uses the band grouping process based on a modified mutual information strategy to split data into few band groups. After the band grouping step, the proposed algorithm aims at benefiting from the capabilities of SVM as classification method. So, the proposed approach applies SVM on each band group that is produced in a previous step. Finally, Naive Bayes (NB) as a classifier fusion method combines decisions of SVM classifiers. Experimental results on two common hyperspectral data sets show that the proposed method improves the classification accuracy in comparison with the standard SVM on entire bands of data and feature selection methods.  相似文献   

13.
In response to the curse of dimensionality in hyperspectral images (HSIs), to date, numerous dimensionality reduction methods have been proposed among which the feature extraction (FE) methods are of particular interest. This paper introduces a new supervised pixel-based FE called spectral segmentation and integration (SSI). In SSI, the spectral signature curve (SSC) of the pixels are identically divided into some non-overlapping segments, called channels. The existing bands in each channel are then integrated using a mean-weighted operator, leading to some new features in a very lower number than the original bands. SSI applies a particle swarm optimization (PSO) algorithm to globally search and locate the optimum positions and widths of the channels. For the sake of evaluation and comparison, the features provided by the proposed SSI method were applied to the well-known SVM classifier. The results were compared to not only a most recent pixel-based FE method, namely, spectral region splitting but also six conventional FE methods, including nonparametric weighted feature extraction, decision boundaries feature extraction, clustering-based feature extraction, semi-supervised local discriminant analysis, band correlation clustering and principal component analysis. Experimental results, obtained on two HSIs, proved the superiority of the proposed SSI.  相似文献   

14.
This paper discusses a statistical and band transformation based approach to select bands for hyperspectral image analysis. Hyperspectral images contain large number of spectral bands with redundant information about the spectral classes in the image scene. It is necessary to reduce the high dimensionality of the data for the processing of hyperspectral data. We report a feature selection technique that removes correlated spectral bands using band decorrelation technique and obtains maximum variance image bands based on factor analysis. Factor analysis method of band selection technique is also validated against existing methods of band selection. The study is carried out for the agriculturally rich area of Musiri region of South India that has varied landcover types. Evaluation of the band selection procedure is done using signature separability measures such as Euclidean distance, Divergence, Transformed divergence and Jeffries Matusita distance. Results indicated that selected bands exhibited maximum separability and also occurred predominantly at wavelength 700 nm, 850, 1000 nm, 1200 nm, 1648 nm and 2200 nm.  相似文献   

15.
施婷婷  徐涵秋  王帅 《遥感学报》2019,23(3):514-525
缨帽变换是一种实用性都很强的遥感影像增强方法,已被成功地应用于各种遥感领域。然而,对于缺少中红外波段的4波段高分卫星传感器,采用常规的Gram-Schmidt正交化方法难以推导出缨帽变换的湿度分量,即便少量推导出湿度分量的算法也存在着结果失真的问题。因此,开展针对4波段传感器缨帽变换系数的推导,提出了先确定湿度分量、再确定亮度和绿度分量的逆推算法,并将其应用在ZY-3 MUX传感器数据上。实验结果表明:(1)逆推方法可以有效地推导出ZY-3 MUX缨帽变换的湿度分量,较好地解决了前人研究中出现的湿度分量失真问题;(2)新方法求出的3个分量的散点在其三维特征空间中呈现典型的"缨帽"特征,较于传统的GramSchmidt正交化方法,新方法的散点在水体、植被和建筑用地/裸土之间的空间分布位置可以更好地相互分离,不会造成不同地类之间的混淆;(3)采用新方法所得到的缨帽变换系数的精度好于传统的Gram-Schmidt正交化方法,体现在新方法具有较高的R值和较低的RMSE误差。本研究可为ZY-3 MUX数据提供一套有效的缨帽变换系数,同时也为缺乏中红外波段的高空间分辨率遥感影像提供一种新的缨帽变换系数推导方法,解决了常规GramSchmidt正交化方法无法准确表示湿度分量的问题。  相似文献   

16.
成像光谱数据特征选择及小麦品种识别实验研究   总被引:6,自引:0,他引:6  
针对河北栾城获得的MAIS成像光谱仪数据用于小麦品种识别进行了特征选择和分类研究。利用遗传算法以JM距离为准则并结合实验区小麦的生物物理特性,进行了最佳波段选择;利用Fuzzy—Anmap分类器及选出的最佳波段对成像光谱数据进行了分类,区分出了4种小麦品种,小麦的总体分类精度超过97%。  相似文献   

17.
地物反射光谱对MODIS近红外波段水汽反演影响的模拟分析   总被引:14,自引:1,他引:14  
在近红外辐射传输方程的基础上,利用近红外波段水汽的不同吸收属性,在MODTRAN的模拟下,深入分析了基于MODIS近红外数据的可降水汽反演算法,并着重讨论了地物反射光谱非线性在可降水汽反演中的影响。研究结果显示,当波段间反射率之比不等于1时,MODIS近红外波段反演水汽将存在较大偏差。同时,在地物光谱库基础上,计算了不同地物反射率比值,其分布表明,大部分地物波段反射率比值不等于1。研究表明,应用现有MODIS近红外波段水汽反演算法,如果不考虑地表反射率光谱变化的影响,由地表反射光谱造成的误差最大约为反射率比值与1偏差的15倍,同时,这一误差还与大气波段透过率之比有关。  相似文献   

18.
小波包多阈值去噪法及其在形变分析中的应用   总被引:1,自引:0,他引:1  
在GPS变形监测领域,传统的小波去噪只保留低频上的有用信息,很容易去掉中频以及高频上的有用信息。小波包分析方法是近几年发展起来的一种新的小波分析方法,它同时考虑了各个频段上的有用信息,因此是一种更为精细的去噪方法。小波包去噪的关键是对小波包分解系数选取合适的阈值准则并进行阈值处理,但传统的小波包去噪并没有对此进行充分的研究。本文针对传统小波、小波包分析的不足,提出了一种基于频率顺序并依据信息类型分段的多阈值准则小波包去噪法。通过理论分析与实际应用,结果表明新方法能够高效剔除各频段的噪声,同时当采样频率较低时能有效保留去噪信号中频率高达10-1 Hz数量级的有用信息,其去噪能力优于传统的小波、小波包等其它去噪方法,因此可以广泛应用于高精度GPS变形监测领域中。  相似文献   

19.
One of the challenging problems in processing high dimensional data, as hyperspectral images, with better spectral and temporal resolution is the computational complexity resulting from processing the huge amount of data volume. Various methods have been developed in the literature for dimensionality reduction, generally divided into two main techniques: data transformation techniques and features selection techniques. The feature selection technique is advantageous compared to transformation techniques in preserving the original data. However, deciding the appropriate number of features to be selected and choosing these features are very challenging since they require exhaustive researches. The progressive feature selection technique is a new concept recently introduced to address these issues based on priority criteria. However, this approach presents limits when these criteria are insufficient or depends on domain applications. In this paper, we present a new approach to improve the Progressive Feature Selection technique by adding new criteria that measure the amount of information present in each band. The endmembers extraction phase of the proposed approach includes both the N-FINDR and the ATGP algorithms. A case based reasoning system is used to choose the optimal criterion for the endmember extraction. The performances of this proposed approach were evaluated using AVIRIS hyperspectral image and the obtained results prove its effectiveness compared to other PBS techniques.  相似文献   

20.
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