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首页> 外文期刊>Geoscience and Remote Sensing, IEEE Transactions on >An End-to-End Error Model for Classification Methods Based on Temporal Change or Polarization Ratio of SAR Intensities
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An End-to-End Error Model for Classification Methods Based on Temporal Change or Polarization Ratio of SAR Intensities

机译:基于SAR强度的时间变化或极化比的分类方法的端到端误差模型

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摘要

This paper aims at defining the expression of the probability of error of classification methods using a synthetic aperture radar (SAR) intensity ratio as a classification feature. The two SAR intensities involved in this ratio can be measurements from different dates, polarizations, or, also possibly, frequency bands. Previous works provided a baseline expression of the probability of error addressing the two-class problem with equal a priori class probabilities and no calibration error. This study brings up a novel expression of the error, providing the possibility to assess the effect of class probabilities and calibration errors. An extended expression is described for the $n$ -class problem. The effect of calibration errors such as channel gain imbalance, radiometric stability, and crosstalk is assessed in the general case. The results indicate that, for the applications under study, channel gain imbalance is usually not a decisive parameter, but radiometric stability is more critical in methods based on the temporal change. Crosstalk has a negligible effect in the case of copolarizations. The impacts of other system parameters, such as ambiguity ratio, time-lapse between repeat-pass orbits, spatial resolution, and number of looks, are illustrated through a set of assumptions on the backscattering values of the considered classes. The model is validated by comparing some of its outputs to experimental results calculated from the application of rice fields mapping methods on real data. This error model constitutes a tool for the design of future SAR missions and for the development of robust classification methods using existing SAR instruments.
机译:本文旨在使用合成孔径雷达(SAR)强度比作为分类特征来定义分类方法的错误概率表示。此比率中涉及的两个SAR强度可以是来自不同日期,极化或频段的测量。先前的工作提供了解决具有相等先验类概率且没有校准错误的两类问题的错误概率的基线表达式。这项研究提出了错误的一种新颖表达,为评估类概率和校准错误的影响提供了可能性。针对$ n $ -class问题描述了扩展表达式。通常情况下,会评估校准误差的影响,例如信道增益不平衡,辐射稳定性和串扰。结果表明,对于正在研究的应用,信道增益失衡通常不是决定性参数,但是在基于时间变化的方法中,辐射稳定性更重要。对于共极化,串扰的影响可忽略不计。通过对所考虑类别的反向散射值进行一组假设,来说明其他系统参数的影响,例如歧义比,重复通过轨道之间的时间间隔,空间分辨率和视线数量。通过将其某些输出与通过稻田制图方法在实际数据上的应用所计算出的实验结果进行比较,来验证该模型。该误差模型构成了用于设计未来SAR任务和使用现有SAR仪器开发可靠分类方法的工具。

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