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Unsupervised classification of polarimetric SAR image with dynamic clustering: An image processing approach

机译:动态聚类的极化SAR图像无监督分类:一种图像处理方法

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This paper proposes a new unsupervised classification approach for automatic analysis of polarimetric synthetic aperture radar (SAR) image. Classification of the information in multi-dimensional polarimetric SAR data space by dynamic clustering is addressed as an optimization problem and two recently proposed techniques based on particle swarm optimization (PSO) are applied to find optimal (number of) clusters in a given input data space, distance metric and a proper validity index function. The first technique, so-called multi-dimensional (MD) PSO, re-forms the native structure of swarm particles in such a way that they can make inter-dimensional passes with a dedicated dimensional PSO process. Therefore, in a multi-dimensional search space where the optimum dimension is unknown, swarm particles can seek both positional and dimensional optima. Nevertheless, MD PSO is still susceptible to premature convergence due to lack of divergence. To address this problem, fractional global best formation (FGBF) technique is then presented, which basically collects all promising dimensional components and fractionally creates an artificial global-best particle (aGB) that has the potential to be a better "guide" than the PSO's native gbest particle. In this study, the proposed dynamic clustering process based on MD-PSO and FGBF techniques is applied to automatically classify the color-coded representations of the polarimetric SAR information (i.e. the type of scattering, backscattering power) extracted by means of the Pauli or the Cloude-Pottier decomposition algorithms. The performance of the proposed method is evaluated based on fully polarimetric SAR data of the San Francisco Bay acquired by the NASA/Jet Propulsion Laboratory Airborne SAR (A1RSAR) at L-band. The proposed unsupervised technique determines the number of classes within polarimetric SAR image for optimal classification performance while preserving spatial resolution and textural information in the classified results. Additionally, it is possible to further apply the proposed dynamic clustering technique to higher dimensional (N-D) feature spaces of fully polarimetric SAR data.
机译:本文为极化合成孔径雷达(SAR)图像的自动分析提出了一种新的无监督分类方法。通过动态聚类将多维极化SAR数据空间中的信息分类作为一个优化问题解决,最近基于粒子群优化(PSO)提出的两种技术被应用于在给定输入数据空间中找到最佳(数量)簇,距离度量和适当的有效性指标函数。第一种技术,即所谓的多维(MD)PSO,以一种可以重新形成群体粒子的本机结构的方式,使它们可以使用专用的维PSO过程进行维间传递。因此,在最佳尺寸未知的多维搜索空间中,群体粒子可以同时寻找位置和尺寸最优。尽管如此,由于缺乏差异,MD PSO仍然容易过早收敛。为了解决这个问题,然后提出了分数全球最佳形成(FGBF)技术,该技术基本上收集了所有有希望的维数成分,并分数创建了一个人工的全球最佳粒子(aGB),该粒子有可能成为比PSO更好的“指南”天然的最佳颗粒。在这项研究中,基于MD-PSO和FGBF技术提出的动态聚类过程可用于自动分类通过Pauli或SAR提取的极化SAR信息的颜色编码表示形式(即散射类型,反向散射能力)。 Cloude-Pottier分解算法。该方法的性能是根据NASA /喷气推进实验室机载SAR(A1RSAR)在L波段获得的旧金山湾的全极化SAR数据进行评估的。所提出的无监督技术可确定极化SAR图像中的类数,以实现最佳分类性能,同时在分类结果中保留空间分辨率和纹理信息。此外,可以将拟议的动态聚类技术进一步应用于全极化SAR数据的高维(N-D)特征空间。

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