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Learning task-driven polarimetric target decomposition: A new perspective

机译:学习任务驱动的极化目标分解:新视角

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Polarimetric target decomposition aims to decompose a polarimetric synthetic aperture (PolSAR) data on a base reflecting some scattering mechanisms. The corresponding coefficients will be further exploited as the feature vector for the subsequent interpretation task. Intuitively, its performance heavily depends on the choice of bases and many off-the-shelf ones have been constructed based on mathematical or physical model since last two decades. However, these fixed bases are generally insufficient to characterize all types of data in a PolSAR image so that the extracted features are not beneficial to the subsequent task. To address this issue, we propose a novel target decomposition framework to learn a set of task-desired bases as well as feature vectors from the input polarimetric data. Focusing on the classification task, involve a supervised regularizer is further involved in our framework to increase the discrimination of features. Experimental results demonstrate the effectiveness of proposed framework.
机译:极化目标分解的目的是在反映某些散射机制的基础上分解极化合成孔径(PolSAR)数据。相应的系数将被进一步用作后续解释任务的特征向量。从直觉上讲,它的性能在很大程度上取决于基础的选择,并且自从过去的二十年以来,许多现成的基础都是基于数学或物理模型构建的。但是,这些固定的基数通常不足以表征PolSAR图像中的所有类型的数据,因此提取的特征不利于后续任务。为了解决这个问题,我们提出了一种新颖的目标分解框架,以从输入的极化数据中学习一组任务所需的基础以及特征向量。专注于分类任务,在我们的框架中进一步涉及监督正则化器,以增加对特征的区分。实验结果证明了所提出框架的有效性。

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