机构地区:[1]吉林大学地球探测科学与技术学院,长春130026 [2]长春市测绘院地理信息分院,长春130021 [3]大连海事大学航海学院,大连116000
出 处:《农业工程学报》2016年第4期211-216,共6页Transactions of the Chinese Society of Agricultural Engineering
基 金:中国地质调查局资助项目(12120115063701);国土资源部公益性行业科研专项基金(201511078-1)
摘 要:针对面向对象土地利用分类存在特征维数过高的问题,提出了一种结合Relief F和粒子群优化算法(particle swarm optimization,PSO)的混合特征选择方法,即首先利用Relief F作为特征预选器滤除相关性小的特征,然后以PSO作为搜索算法,以支持向量机(support vector machine,SVM)的分类精度作为评估函数在剩余特征中选择出最优特征子集。该文以吉林省长春市部分区域为研究区,采用Landsat8遥感影像为数据源,首先对其进行多尺度分割,然后提取影像对象的光谱、纹理、形状和空间关系特征,利用提出的混合特征选择方法选取最优特征子集,最后使用SVM分类器对研究区进行土地利用分类,总体分类精度和Kappa系数分别为85.88%和0.8036,与基于4种其他特征选择方法的土地利用分类结果进行比较,基于Relief F和PSO的混合特征选择方法利用最少的特征获得最高的分类精度,能够有效地用于面向对象土地利用分类。In recent years, object-based methods have been increasingly used for the land-use classification of remote sensing data. However, the availability of numerous features with object-based image analysis renders the selection of optimal features. In this study, a hybrid feature selection method that combined filter approach and wrapper approach was proposed. In the filter approach, the Relief F algorithm was employed to select features that had the higher relevance with land-use classes. The wrapper approach used the particle swarm optimization (PSO) algorithm as a search method and the classification accuracy of support vector machine (SVM) as an evaluator to search for an optimal feature subset from the selected features. The objective of this research was to examine the effectiveness of the proposed feature selection method on object-based classification. The study site was located in the southeastern part of Changchun City, Jilin Province. A Landsat8 image acquired on July 15, 2014 was selected as data source for this classification. To begin with, image objects were delineated by implementing multi-scale segmentation on the Landsat8 image. Second, a total of 95 features were extracted from the Landsat8 image. Third, the proposed hybrid feature selection method was employed to search for an optimal feature subset. In the first stage of the feature selection, the Relief F algorithm was applied to select 50 features that had the higher relevance with land-use classes in Weka 3.6. In the second stage, the PSO algorithm was used to optimize the kernel parameters of SVM simultaneously with the feature selection in Matlab 2010b. As a result, an optimal feature subset of 22 features was obtained. Finally, based on the selected features, land-use classification was performed using SVM classifier embedded in Definiens Developer 9.0. Using the confusion matrix that was determined on the basis of the visual interpretation map of Google Earth high-resolution remote sensing images, we calculated 4 statistical items
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