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首页> 外文期刊>Remote Sensing of Environment: An Interdisciplinary Journal >AN INVESTIGATION OF THE SELECTION OF TEXTURE FEATURES FOR CROP DISCRIMINATION USING SAR IMAGERY
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AN INVESTIGATION OF THE SELECTION OF TEXTURE FEATURES FOR CROP DISCRIMINATION USING SAR IMAGERY

机译:利用SAR成像技术进行作物鉴别的纹理特征选择的研究。

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This article presents a methodology for selecting texture measures to maximize the discrimination of agricultural land use classes in SAR images. The images were acquired during the first flight of the Shuttle Imaging Radar-C (SIR-C) experiment, in April 1994. L (24 cm)- and C (5-cm)-band SAR data at HH (horizontal transmitting and receiving), HV (horizontal transmitting, vertical receiving), and VV (vertical transmitting and receiving) polarizations both in ground range and slant range and in two different passes were analyzed. The kappa statistic was used to identify meaningful texture measures to discriminate seven classes. The results show that the classifications of land use based only on tonal averages produced a kappa coefficient only slightly higher than 0.50. A kappa threshold of 0.90 was reached with the simultaneous inclusion of 15 texture measures for the six images (two bands, three polarizations). It was also found that the inclusion of texture features when only one band and one polarization was used could produce kappa values higher than 0.85. (C)Elsevier Science Inc. 1997. [References: 26]
机译:本文介绍了一种选择纹理度量的方法,以最大程度地区分SAR图像中的农业土地利用类别。这些图像是在1994年4月的Shuttle Imaging Radar-C(SIR-C)实验的第一次飞行中获得的。HH处的L(24 cm)和C(5 cm)波段SAR数据(水平发射和接收) ),分析了在地面范围和倾斜范围内以及在两次不同通过中的HV(水平发射,垂直接收)和VV(垂直发射和接收)极化。 kappa统计量用于识别有意义的纹理度量以区分七个类别。结果表明,仅基于色调平均值进行的土地利用分类产生的卡伯系数仅略高于0.50。 κ阈值为0.90,同时为六个图像(两个波段,三个极化)同时包含15个纹理量度。还发现当仅使用一个带和一个极化时包含纹理特征可以产生高于0.85的κ值。 (C)Elsevier Science Inc.1997。[参考:26]

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