基于概率密度函数的土地覆被SAR识别研究

Shruti Gupta, Dharmendra Singh, P. Mishra, S. Garg
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引用次数: 7

摘要

全极化SAR数据保存了后向散射系数的幅值和相位的详细信息,有助于区分不同的散射机制,具有表征和区分不同地表覆盖的能力。通过将极化数据与统计信息融合,可以增强极化数据的分类能力,但对不同类别的标记仍然是一个挑战。因此,本文提出了一种基于概率密度函数的土地覆盖类型识别方法。利用极化指数信息将土地覆盖分为4类,并对每一类应用6个概率密度函数。使用卡方拟合优度(GoF)检验为每个类别选择最适合的密度函数。利用最佳拟合密度函数的尺度和位置参数估计类的边界。将该方法应用于ALOS PALSAR数据,得到了较好的城市和水域识别效果。
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Probability density functions based study for identification of land cover using SAR data
Fully polarimetric SAR data has the ability of characterizing and differentiating various land covers as it conserves detailed information of the amplitude and the phase of backscattering coefficient, which helps in distinguishing diverse scattering mechanisms. The classification by means of polarimetric data could be enhanced by fusing it with statistical information, but labeling of different classes is still a challenge. So, in this paper, probability density function based approach has been proposed for identification of different classes of land cover. Land cover is classified into four classes using polarimetric indices information and then six probability density functions are applied on each of the classes. Chi-Squared goodness of fit (GoF) test has been used for selecting best-fit density function for each of the classes. The boundaries of the classes were estimated using scale and location parameter of the best-fit density function. The proposed approach was applied on ALOS PALSAR data which resulted in good identification of urban and water region.
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