首页> 外文会议>第21届国际摄影测量与遥感大会(ISPRS 2008)论文集 >A GENETIC ALGORITHM BASED WRAPPER FEATURE SELECTION METHOD FOR CLASSIFICATION OF HYPERSPECTRAL IMAGES USING SUPPORT VECTOR MACHINE
【24h】

A GENETIC ALGORITHM BASED WRAPPER FEATURE SELECTION METHOD FOR CLASSIFICATION OF HYPERSPECTRAL IMAGES USING SUPPORT VECTOR MACHINE

机译:基于支持向量机的高光谱图像分类的基于遗传算法的包裹体特征选择方法

获取原文

摘要

The high-dimensional feature vectors of hyper spectral data often impose a high computational cost as well as the risk of "over fitting" when classification is performed. Therefore it is necessary to reduce the dimensionality through ways like feature selection. Currently, there are two kinds of feature selection methods: filter methods and wrapper methods. The form kind requires no feedback from classifiers and estimates the classification performance indirectly. The latter kind evaluates the "goodness" of selected feature subset directly based on the classification accuracy. Many experimental results have proved that the wrapper methods can yield better performance, although they have the disadvantage of high computational cost. In this paper, we present a Genetic Algorithm (GA) based wrapper method for classification of hyper spectral data using Support Vector Machine (S VM), a state-of-art classifier that has found success in a variety of areas. The genetic algorithm (GA), which seek to solve optimization problems using the methods of evolution, specifically survival of the fittest, was used to optimize both the feature subset, i.e. band subset, of hyper spectral data and SVM kernel parameters simultaneously. A special strategy was adopted to reduce computation cost caused by the high-dimensional feature vectors of hyper spectral data when the feature subset part of chromosome was designed. The GA-SVM method was realized using the ENVI/IDL language, and was then tested by applying to a HYPERION hyper spectral image. Comparison of the optimized results and the un-optimized results showed that the GA-SVM method could significantly reduce the computation cost while improving the classification accuracy. The number of bands used for classification was reduced from 198 to 13, while the classification accuracy increased from 88.81% to 92.51%. The optimized values of the two SVM kernel parameters were 95.0297 and 0.2021, respectively, which were different from the default values as used in the ENVI software. In conclusion, the proposed wrapper feature selection method GA-SVM can optimize feature subsets and SVM kernel parameters at the same time, therefore can be applied in feature selection of the hyper spectral data.
机译:高光谱数据的高维特征向量通常在执行分类时会带来很高的计算成本以及“过度拟合”的风险。因此,有必要通过特征选择等方法降低尺寸。当前,有两种特征选择方法:过滤器方法和包装器方法。表单种类不需要分类器的反馈,并且可以间接估计分类性能。后者根据分类精度直接评估所选特征子集的“优”。许多实验结果证明,尽管包装方法具有计算成本高的缺点,但它们可以产生更好的性能。在本文中,我们提出了一种基于遗传算法(GA)的包装方法,该方法使用支持向量机(S VM)对高光谱数据进行分类,这是一种在许多领域都取得成功的最新分类器。遗传算法(GA)试图使用进化方法(特别是优胜劣汰的方法)解决优化问题,该算法同时用于优化超光谱数据的特征子集(即波段子集)和SVM内核参数。当设计染色体的特征子集部分时,采用一种特殊的策略来减少由高光谱数据的高维特征向量引起的计算成本。 GA-SVM方法是使用ENVI / IDL语言实现的,然后通过应用于HYPERION高光谱图像进行了测试。优化结果和未优化结果的比较表明,GA-SVM方法可以显着降低计算成本,同时提高分类精度。用于分类的条带数量从198减少到13,而分类准确度从88.81%增加到92.51%。两个SVM内核参数的优化值分别为95.0297和0.2021,这与ENVI软件中使用的默认值不同。综上,提出的包装特征选择方法GA-SVM可以同时优化特征子集和SVM内核参数,因此可以应用于高光谱数据的特征选择。

著录项

相似文献

  • 外文文献
  • 中文文献
  • 专利
获取原文

客服邮箱:kefu@zhangqiaokeyan.com

京公网安备:11010802029741号 ICP备案号:京ICP备15016152号-6 六维联合信息科技 (北京) 有限公司©版权所有
  • 客服微信

  • 服务号