基于多任务稀疏表示学习的极化SAR图像分类

Bo Li, Ying Li, Minxia Chen
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引用次数: 1

摘要

分类是偏振SAR (POLSAR)图像处理中的一个重要而又困难的问题。现有的分类方法大多结合多种特征(散射参数或统计分布)来提高分类性能。然而,根据观察,不同区域由于散射机制的不同而具有不同的特征,这意味着对于某些像素应该使用不同的特征,而不是对整个图像使用各种特征的组合,这样简单的组合会导致大量的错误分类。本文提出了一种基于多任务学习的多特征POLSAR分类方法。首先提取不同类型的特征,然后将POLSAR分类问题表述为一个多任务联合稀疏表示学习问题。通过使用联合稀疏范数来利用不同特征的强度。最后,在真实POLSAR数据上的实验结果表明,我们的方法优于几种最先进的算法。
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Polarimetric SAR Image Classification by Multitask Sparse Representation Learning
Classification is an important and difficult problem in Polarimetric SAR (POLSAR) image processing. Most existing classification methods combine multiple features (scattering parameters or statistical distribution) to improve the performance. However, based on the observation that various regions have different characteristics due to the different scattering mechanism, which implies that different features should be used for certain pixels rather than using the combination of various features for the whole image, so that simple combinations will result in numerous error classifications. In this paper, a novel POLSAR classification method based on multitask learning with multiple features is proposed. Firstly, different types of features are extracted, and then POLSAR classification problem is formulated as a multitask joint sparse representation learning problem. The strength of different features are employed by using of a joint sparse norm. Finally, experimental results on real POLSAR data show that our method outperforms several state-of-the-art algorithms.
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