Haigang SuiChuan XuJunyi LiuKaimin SunChengfeng Wen
To overcome the problems of large data volumes and strong speckle noise in synthetic aperture radar (SAR) images, a multi-scale level set approach for SAR image segmentation is proposed in this article. Because the multi-scale analysis of SAR images preserves their highest resolution features while additionally making use of sets of images at lower resolutions to improve specific functions, the proposed method is useful for removing the influence of speckle and, at the same time, preserving important structural information. The Gamma distribution is one of the most commonly used models employed to represent the statistical characteristics of speckle noise in a SAR image and it is introduced to define the energy functional. Moreover, based on the multi-scale level set framework, an improved multi-layer approach is introduced for multi-region segmentation. To obtain a fast and more accurate result, a novel threshold segmentation result is used to represent the initial segmentation curve. The experiments with synthetic and real SAR images demonstrate the effectiveness of the new method.
Sui, HaiganSun, K.Gong, JianyaXu, C.Wen, C.
Pan LinChong-Xun ZhengYong YangJianwen Gu
Luo YangbinPingping ZengFei GuoJianhua Wu
Wanyi ChenYibin LuDean WuWenyu Yuan
Hai MinXiaofeng WangDe-Shuang Huang