操作SAR海冰图像的自动分类

S. Ochilov, David A Clausi
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引用次数: 12

摘要

海冰卫星图像的自动分类对船舶导航和环境监测具有重要意义。每年,成千上万的大合成孔径雷达(SAR)场景由加拿大冰局(CIS)手工处理,像素级解译是不可行的。训练有素的冰分析人员将SAR图像划分为“多边形”区域,然后识别每个多边形的冰类数量和类型。全场景无监督分类可以通过算法将每个多边形分割成不同的区域来实现。由于没有足够的信息来为单个多边形内的每个区域分配海冰标签,因此开发了一个使用联合信息来标记完整SAR场景中每个区域的马尔可夫随机场公式。该方法已成功应用于操作CIS数据以生成像素级分类图像,并且是已知的第一个成功的端到端自动分类操作SAR海冰图像的过程。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Automated Classification of Operational SAR Sea Ice Images
The automated classification of operational sea ice satellite imagery is important for ship navigation and environmental monitoring. Annually, thousands of large synthetic aperture radar (SAR) scenes are manually processed by the Canadian Ice Service (CIS) and pixel-level interpretation is not feasible. Trained ice analysts divide SAR images into ”polygon” areas and then identify the number and type of ice classes per polygon. Full scene unsupervised classification can be performed by first segmenting each polygon into distinct regions algorithmically. Since there is insufficient information to assign a sea ice label for each region within an individual polygon, a Markov random field formulation using joint information to label each region in a full SAR scene has been developed. This approach has been successfully applied to operational CIS data to produce pixel-level classified images and is the first known successful end-to-end process for automatically classifying operational SAR sea ice images.
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