An unsupervised method for equivalent number of looks estimation in complex SAR scenes

Dingsheng Hu, A. Doulgeris, Xiaolan Qiu
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引用次数: 1

Abstract

This paper introduces a novel unsupervised estimator of equivalent number of looks (ENL) that can be applied to an arbitrary image. It avoids the assumption that homogeneous speckle will dominate the investigated image that is followed by current unsupervised ENL estimators but not always valid, especially for the complex SAR scenes with high mixture and texture. Incorporating the statistical properties of ENL data into an automatic segmentation method, we isolate the sub-class affected least by mixture and texture and suggest taking the mean value of this class as the final ENL estimate. The proposed estimator is evaluated in the experiments performed on simulated and real data from two very different sensors. It always gives better results than the other two existing methods and possesses greater adaptability.
一种复杂SAR场景中等效外观数估计的无监督方法
介绍了一种适用于任意图像的等效外观数(ENL)的无监督估计方法。它避免了假设均匀散斑将主导所研究的图像,而现有的无监督ENL估计方法紧随之后,但并不总是有效,特别是对于具有高混合和纹理的复杂SAR场景。将ENL数据的统计特性纳入自动分割方法,分离出受混合和纹理影响最小的子类,并建议将该类的均值作为最终的ENL估计。在两个非常不同的传感器的模拟和真实数据上进行了实验,对所提出的估计器进行了评估。该方法总能得到比其他两种方法更好的结果,具有更强的适应性。
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