Luo Shiyu, Tong Ling, Chen Yan
IEEE Trans Image Process. 2018 Feb 14. doi: 10.1109/TIP.2018.2806201.
Synthetic Aperture Radar (SAR) image segmentation is a difficult problem due to the presence of strong multiplicative noise. To attain multi-region segmentation for SAR images, this paper presents a parametric segmentation method based on the multi-texture model with level sets. Segmentation is achieved by solving level set functions obtained from minimizing the proposed energy functional. To fully utilize image information, edge feature and region information are both included in the energy functional. For the need of level set evolution, the Ratio of Exponentially Weighted Averages (ROEWA) operator is modified to obtain edge feature. Region information is obtained by the Improved Edgeworth Series Expansion (IESE), which can adaptively model a SAR image distribution with respect to various kinds of regions. The performance of the proposed method is verified by three high resolution SAR images. The experimental results demonstrate that SAR images can be segmented into multiple regions accurately without any speckle pre-processing steps by the proposed method.
合成孔径雷达(SAR)图像分割是一个难题,因为存在强烈的乘性噪声。为了实现SAR图像的多区域分割,本文提出了一种基于多纹理模型和水平集的参数化分割方法。通过求解从最小化所提出的能量泛函得到的水平集函数来实现分割。为了充分利用图像信息,能量泛函中同时包含了边缘特征和区域信息。出于水平集演化的需要,对指数加权平均比(ROEWA)算子进行了修改以获得边缘特征。区域信息通过改进的埃奇沃思级数展开(IESE)获得,它可以针对各种区域自适应地对SAR图像分布进行建模。通过三幅高分辨率SAR图像验证了所提方法的性能。实验结果表明,所提方法无需任何斑点预处理步骤就能将SAR图像准确地分割成多个区域。