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1.
特征提取和选择是模式识别核心问题之一,它极大地影响着分类器的设计和性能,高维的特征选择更是一个NP难题。针对特征选择这一组合优化及多目标优化问题,本文提出了改进的融合启发信息ACO(Antcolony optimization)特征选择的新方法,该算法比不用启发信息的ACO方法能更好地找出代表问题空间的最优特征子集,降低分类系统的搜索空间,从而提高搜索效率。以航空纹理影像的特征选择和分类问题为例,利用原始蚂蚁算法和改进的蚂蚁算法选择的特征分别进行识别,结果证明该算法不仅能够比没有改进的蚂蚁找出有效特征集、降低图像特征空间维数、减少图像分类的工作量,而且提高了分类识别正确率。  相似文献   

2.
以高空间分辨率遥感影像为研究对象,将纹理特征与影像的光谱特征结合起来,用于地表覆盖类型分类。设计了一种基于傅里叶谱纹理的分类策略,对主成分分析后的第1、2主分量特征影像,利用径向谱(r-spectrum)提取纹理特征,并将纹理与光谱特征结合起来,构建了不同的分类特征用于支持向量机分类模型。以Salinas数据集和QuickBird影像为例,验证该算法。结果表明,纹理与光谱信息的结合可以明显提高高分辨率遥感影像的分类精度;由傅里叶径向谱提取的纹理特征可以很好的应用到高分辨率遥感影像的分类问题中,分类精度高于基于傅里叶总能量谱和灰度共生矩阵的分类精度;利用该算法对PCA变换后的第1和第2分量提取的纹理特征具有一定的互补性,并且结合多特征图像的纹理特征提取优于单特征图像的纹理特征提取。  相似文献   

3.
分别利用多通道Gabor滤波器和马尔可夫随机场模型对纹理图像进行分析,得到两组特征影像。将上述两组特征影像进行融合,最后利用融合后的数据实现图像的分类。实验证明,基于上述方法的纹理特征融合分类算法大大提高了图像的分类精度。  相似文献   

4.
广义马尔可夫随机场及其在多光谱纹理影像分类中的应用   总被引:1,自引:0,他引:1  
在二维马尔可夫随机场模型的基础上,提出顾及波段间的空间相关性,发展了一种适用于多光谱纹理影像分类的广义马尔可夫随机场模型。鉴于广义马尔可夫随机场模型的复杂性,利用最大伪似然法建立了求解模型参数的简化方程式,实现了纹理特征的快速提取。结合提取的纹理特征影像和光谱特征影像,采用概率松弛算法实现影像的分类。实验证明,提出的基于广义马尔可夫随机场的多光谱纹理影像分类算法克服了传统的基于光谱特征的分类算法的局限性,提高了纹理影像的分类精度。  相似文献   

5.
道路综合特征下高分辨率遥感影像的提取   总被引:1,自引:0,他引:1  
针对在高分辨率遥感影像中如何提高道路信息提取的准确度和信息量这一问题,通过对影像光谱和纹理特征的分析,将影像特征按照2种光谱特征和3种纹理特征进行分类,进而改善传统的图像分割方法,选择灰度级数和像素对的相对方向、距离和窗口大小作为参数,再通过灰度共生矩阵运算获取影像的纹理信息,通过对这些纹理特征的综合比较分析,最后确定角二阶矩、熵和对比度作为道路纹理特征统计量;再通过对图像像元分析比较,将图像像元标准差和灰度均值作为道路信息提取的光谱特征;在对道路综合特征分析基础上,再通过对遥感图像几何特征分析,最后利用数学形态学的开运算、闭运算、腐蚀、细化等模型算法对遥感图像进行精细化处理,得到道路提取较好的结果。该方法可用于复杂路况的道路信息提取。  相似文献   

6.
刘峰 《测绘科学》2010,35(3):135-137
针对多纹理图像分类的问题,本文提出了一种操作性强,通用性高的分类方法。借助人类视觉特性和纹理图像的尺寸,设计了一种快速简单的Gabor滤波参数设置方法。在多通道的滤波特征图像中应用顺序向前搜索策略选择特征,以J-M距离(Jeffreys-Matusitas distance)为判别因子进行特征空间的优化,最后通过SVM方法实现图像分类。实验表明,该方法有良好的纹理图像分类效果。较之传统的Gabor滤波图像分类方法,该方法具有参数设置简单,操作性强的特点。  相似文献   

7.
杨希  王鹏 《四川测绘》2011,(3):115-118
为了能有效地从高分辨率遥感影像中提取地物信息,本文通过影像的光谱和纹理特征,利用BP神经网络算法进行影像分类研究。首先提取分类所需的光谱和纹理特征源,然后根据影像和地物特征,建立BP神经网络,用于样本训练和分类处理,实现地物分类。为验证该方法的可靠性,以2006年11月获取的成都平原某区域的Quickbird影像为实验数据,进行高分辨率遥感影像的地物分类实验。实验结果表明,结合影像光谱和纹理特征的BP神经网络分类算法,不仅可以有效保证BP神经网络分类训练的稳定性和收敛速度,还能达到较高的分类精度。  相似文献   

8.
刘欣  张继贤  赵争  马安东  王萍 《测绘科学》2016,41(4):139-143,164
机载SAR影像分辨率的不断提高使得图像纹理信息更加丰富,对地物分类和提取具有重要意义。针对建筑区的纹理特点,该文提出了一种综合统计和结构多特征加权融合的建筑区提取方法。分别采用经典的灰度共生矩阵方法提取统计纹理特征和采用变差函数方法提取结构纹理特征,并考虑方向信息;然后利用提出的巴士距离特征权值计算方法,将所选特征进行加权融合;利用K均值聚类算法对融合后的特征图像进行非监督分类,对分类图像进行后处理并提取外部轮廓。以国产机载P波段全极化SAR影像为数据源进行了实验,并对结果进行了定量分析,表明该方法能够高精度地有效提取高分辨率机载SAR影像中的建筑区。  相似文献   

9.
针对高分辨遥感影像同谱异物、同物异谱导致单一特征分类结果精度较差的问题,本文提出了多特征流形鉴别嵌入的高分辨率遥感影像分类方法。该方法首先提取高分辨率影像数据的光谱特征与LBP纹理特征;然后通过样本数据的联合光谱、纹理特征的空间距离及对应的类别信息,构建影像对象的类间图与类内图,用于学习高分辨率影像上的鉴别流形结构,保证在嵌入空间上尽可能不同地物特征分离、相同地物特征紧聚,确保相同地物光谱、纹理特征的相似性,完成光谱、纹理鉴别特征的有效提取,以充分挖掘影像特征,有效提高影像的分类精度。在GF-2遥感数据集上进行试验,结果表明本文算法可实现多特征的有效融合,分类精度均优于传统方法,可达93.41%。  相似文献   

10.
针对高光谱影像中空间特征信息利用不足的问题,提出了一种基于纹理和光谱特征的高光谱影像信息向量机分类方法。该方法首先采用三维Gabor滤波器对高光谱影像数据立方体进行纹理特征提取,提取后的影像数据同时具有光谱和纹理特征,避免了传统纹理特征提取带来的高维特征和光谱不连续的问题;然后采用分类精度和效率都较高的信息向量机进行分类处理。通过AVIRIS高光谱影像实验,结果表明该方法不仅提高了影像的分类精度,而且还消除了分类结果图中的类别噪声现象。  相似文献   

11.
面向对象的无人机遥感影像岩溶湿地植被遥感识别   总被引:1,自引:0,他引:1  
以广西桂林会仙喀斯特国家湿地公园为研究区,以无人机航摄影像为数据源,综合利用面向对象的影像分析技术、随机森林算法、阈值分类方法和Boruta全相关特征变量选择算法进行岩溶湿地植被的遥感识别。结果表明:针对不同特征变量对岩溶湿地遥感识别的贡献率而言,光谱特征(DOM > DSM) > 纹理特征(DOM > DSM) > 几何特征 > 上下文变量;两个航摄影像数据集的总体分类精度都在85%以上,Kappa系数也高于0.85。本文研究结果对基于高空间分辨率无人机可见光影像的岩溶湿地植被遥感识别在特征变量选择、分割参数选择及方法选择方面具有一定的借鉴意义。  相似文献   

12.
This paper presents a novel approach to feature subset selection using genetic algorithms. This approach has the ability to accommodate multiple criteria such as the accuracy and cost of classification into the process of feature selection and finds the effective feature subset for texture classification. On the basis of the effective feature subset selected, a method is described to extract the objects which are higher than their surroundings, such as trees or forest, in the color aerial images. The methodology presented in this paper is illustrated by its application to the problem of trees extraction from aerial images.  相似文献   

13.
Genetic feature selection for texture classification   总被引:4,自引:0,他引:4  
This paper presents a novel approach to feature subset selection using genetic algorithms. This approach has the ability to accommodate multiple criteria such as the accuracy and cost of classification into the process of feature selection and finds the effective feature subset for texture classification. On the basis of the effective feature subset selected, a method is described to extract the objects which are higher than their surroundings, such as trees or forest, in the color aerial images. The methodology presented in this paper is illustrated by its application to the problem of trees extraction from aerial images.  相似文献   

14.
A genetic algorithm based approach is used in this paper for the selection of a subset from the combination of Wavelet Packet Statistical and Wavelet Packet Co-occurrence textural feature sets to classify the LISS IV satellite images using neural networks. Generally, adding a new feature increases the complexity of training and classification. Hence there is a need to differentiate between those features that contribute ample information and others. Many current feature reduction techniques such as Principal Component Analysis (PCA) and Linear Discriminant Analysis (LDA) involve linear transformations of the original pattern vectors to new vectors of lower dimensions. Hence a multi-objective Genetic Algorithm has been employed to reduce the complexity and increase the accuracy of classification. Four indices - user’s accuracy, producer’s accuracy, overall accuracy and kappa co-efficient are used to assess the accuracy of the classified data. Experimental results show that the proposed Genetic Algorithm approach with lesser number of optimal features produces comparable results with that of our earlier approach using more features.  相似文献   

15.
潘欣  张树清  李晓峰  那晓东  于欢 《遥感学报》2009,13(6):1163-1176
提出了一种基于粗集属性划分的遥感分类新方法, 构造了基于粗集的集成遥感分类器。该分类器利用粗集理论将输入的属性集合划分为多个约减, 利用这些约减构造多个训练子集。每个训练子集训练神经网分类器, 在决策时将多个单个分类器的结果进行投票选举。这种方法即减少了单个分类器的输入属性个数, 又避免了由于属性选取造成单一分类器在某些分类上的错误偏见。该分类器与神经网分类器方法, 以及属性选取与神经网结合方法进行了比较。结果表明RSEC无论在分类精度上, 还是在不同样本个数条件下的精度稳定程度上均有较好表现。  相似文献   

16.
基于小波与遗传算法的特征提取与特征选择   总被引:5,自引:0,他引:5  
高维遥感数据的分类与识别与传统的多光谱遥感分类技术具有明显的区别。本文提出了一种基于遗传算法和小波/小波包分析相结合的特征提取方法用于高维遥感数据降维与分类。该方法综合了遗传算法的全局优化和小波/小波包分析的多尺度、多分辨率的特点。首先,通过离散的小波变换(DWT)或小波包变换(WP)将高光谱信号变换到特征域进行光谱分解。由于DWT变换是一种线性变换,不同尺度的DWT系数可作为线性光谱特征。然后,对这些线性光谱特征利用遗传算法结合训练样本计算类内/类间距离搜索最优分类子集,其具体染色体编码取可能的特征号,适应度函数基于样本平均Jeffries-Matusita距离计算。所用的分类器采用最大似然分类器。试验结果表明该方法与常规特征提取算法如主成分变换(PCA)、判别分析特征提取(DAFE)、决策边界特征提取(DBFE)相比,能提高分类精度约1.1%-6.5%。  相似文献   

17.
In a number of remote-sensing applications, it is critical to decrease the dimensionality of the input in order to reduce the complexity and, hence, the processing time and possibly improve classification accuracy. In this letter, the application of genetic algorithms as a means of feature selection is explored. A genetic algorithm is used to select a near-optimal subset of input dimensions using a feed-forward multilayer perceptron trained by backpropagation as the classifier. Feature and topology evolution are performed simultaneously based on actual classification results (wrapper approach).  相似文献   

18.
In single-band single-polarized SAR images, intensity and texture are the information source available for unsupervised land cover classification. Every textural feature measure identifies texture patterns by different approaches. For efficient land cover classification, textural measures have to be chosen suitably. Therefore, in this letter, the role of various intensity and textural measures is analyzed for their discriminative ability for unsupervised SAR image classification into various land cover types like water, urban, and vegetation areas. To make the algorithm adaptable, these textural features are fused using principal component analysis (PCA), and principal components are used for classification purposes. To highlight the effectiveness of PCA, the difference between PCA- and non-PCA-based classifications is also analyzed. Analysis of the role of texture measures for unsupervised classification of real-world SAR data with application of PCA is presented in this letter. The analysis of how every individual feature measure contributes for classification process is presented, and then, textural measures for a feature set are chosen according to their role in improving classification accuracy. By analysis, it is observed that the feature set comprising mean, variance, wavelet components, semivariogram, lacunarity, and weighted rank fill ratio provides good classification accuracy of up to 90.4% than by using individual textural measures, and this increased accuracy justifies the complexity involved in the process.  相似文献   

19.
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   

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