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首页> 外文期刊>Journal of Applied Remote Sensing >Support vector machines classification for finding building patches from IKONOS imagery: the effect of additional bands
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Support vector machines classification for finding building patches from IKONOS imagery: the effect of additional bands

机译:支持向量机分类,可从IKONOS影像中查找建筑补丁:附加波段的影响

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This study aims to find building patches from pan-sharpened IKONOS imagery using two-class support vector machines (SVM) classification. In addition to original bands of the image, the normalized digital surface model, normalized difference vegetation index, and several texture measures (mean, variance, homogeneity, contrast, dissimilarity, entropy, second moment, and correlation) are also used in the classification. The study illustrates the performance of the binary SVM classification in building detection from IKONOS imagery. Moreover, the effect of additional bands in building detection is examined. The approach was tested in three test sites that are located in the Batikent district of Ankara, Turkey. The SVM classification provided quite accurate results with the building detection percentage (BDP) values in the range 81.27-96.26% and the quality percentage (QP) values in the range 41.01-74.83%. It was found that the usage of additional bands in SVM classification had a significant effect in building detection accuracy. When compared to results obtained using solely the original bands, the additional bands increased the accuracy up to 10.44% and 8.45% for BDP and QP, respectively. c 2014 Society of Photo-Optical Instrumentation Engineers (SPIE)
机译:这项研究的目的是使用两类支持向量机(SVM)分类从锐化的IKONOS影像中找到建筑补丁。除了图像的原始波段外,归类中还使用了归一化的数字表面模型,归一化的差异植被指数和几种纹理量度(均值,方差,同质性,对比度,不相似性,熵,第二矩和相关性)。该研究说明了IKONOS影像在建筑物检测中二进制SVM分类的性能。而且,检查了附加频带在建筑物检测中的作用。该方法在位于土耳其安卡拉的Batikent区的三个测试地点进行了测试。 SVM分类提供了非常准确的结果,建筑物检测百分比(BDP)值在81.27-96.26%范围内,质量百分比(QP)值在41.01-74.83%范围内。结果发现,在支持向量机分类中使用附加频带对建筑物检测精度有重要影响。与仅使用原始谱带获得的结果相比,附加谱带将BDP和QP的准确度分别提高了10.44%和8.45%。 c 2014光电仪器工程师协会(SPIE)

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