Liu Chi, Li Heng-Chao, Liao Wenzhi, Philips Wilfried, Emery William J
IEEE Trans Image Process. 2019 Mar 18. doi: 10.1109/TIP.2019.2906009.
This paper proposes an unsupervised classification method for multilook polarimetric synthetic aperture radar (Pol-SAR) data. The proposed method simultaneously deals with the heterogeneity and incorporates the local correlation in PolSAR images. Specifically, within the probabilistic framework of the Dirichlet process mixture model (DPMM), an observed PolSAR data point is described by the multiplication of a Wishartdistributed component and a class-dependent random variable (i.e., the textual variable). This modeling scheme leads to the proposed textured DPMM (tDPMM), which possesses more flexibility in characterizing PolSAR data in heterogeneous areas and from high-resolution images due to the introduction of the classdependent texture variable. The proposed tDPMM is learned by solving an optimization problem to achieve its Bayesian inference. With the knowledge of this optimization-based learning, the local correlation is incorporated through the pairwise constraint, which integrates an appropriate penalty term into the objective function so as to encourage the neighboring pixels to fall into the same category and to alleviate the "salt-and-pepper" classification appearance.We develop the learning algorithm with all the closed-form updates. The performance of the proposed method is evaluated with both low-resolution and high-resolution PolSAR images, which involve homogeneous, heterogeneous, and extremely heterogeneous areas. The experimental results reveal that the class-dependent texture variable is beneficial to PolSAR image classification and the pairwise constraint can effectively incorporate the local correlation in PolSAR images.
本文提出了一种用于多视极化合成孔径雷达(Pol-SAR)数据的无监督分类方法。该方法同时处理了数据的异质性,并考虑了PolSAR图像中的局部相关性。具体而言,在狄利克雷过程混合模型(DPMM)的概率框架内,一个观测到的PolSAR数据点由一个威沙特分布分量与一个类别相关随机变量(即文本变量)的乘积来描述。这种建模方案引出了本文提出的纹理DPMM(tDPMM),由于引入了类别相关纹理变量,它在表征异质区域和高分辨率图像中的PolSAR数据时具有更大的灵活性。通过求解一个优化问题来学习所提出的tDPMM以实现其贝叶斯推断。基于这种基于优化的学习知识,通过成对约束纳入局部相关性, 即在目标函数中集成一个适当的惩罚项,以鼓励相邻像素属于同一类别,并减轻“椒盐”分类现象。我们开发了具有所有闭式更新的学习算法。利用低分辨率和高分辨率的PolSAR图像对所提方法的性能进行了评估,这些图像包含均匀、异质和极异质区域。实验结果表明,类别相关纹理变量有利于PolSAR图像分类,而成对约束可以有效地纳入PolSAR图像中的局部相关性。