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Segmentation of remote sensing images using similarity measure based fusion-MRF model

机译:基于相似度融合-MRF模型的遥感影像分割

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摘要

Classifying segments and detecting changes in terrestrial areas are important and time-consuming efforts for remote sensing image analysis tasks, including comparison and retrieval in repositories containing multitemporal remote image samples for the same area in very different quality and details. We propose a multilayer fusion model for adaptive segmentation and change detection of optical remote sensing image series, where trajectory analysis or direct comparison is not applicable. Our method applies nsupervised or partly supervised clustering on a fused-image series by using cross-layer similarity measure, followed by multilayer Markov random field segmentation. The resulted label map is applied for the automatic training of single layers. After the segmentation of each single layer separately, changes are detected between single label maps. The significant benefit of the proposed method has been numerically alidated on remotely sensed image series with ground-truth data.
机译:对遥感影像分析任务进行分类和检测陆地区域的变化是重要且费时的工作,包括在存储库中进行比较和检索,该存储库包含针对同一区域的具有不同质量和细节的多时相遥感图像样本。我们提出了一种多层融合模型,用于光学遥感图像系列的自适应分割和变化检测,其中轨迹分析或直接比较不适用。我们的方法通过使用跨层相似性度量,然后进行多层马尔可夫随机场分割,对融合图像序列应用n监督或部分监督聚类。生成的标签图将应用于单层的自动训练。在分别对每个单层进行分割之后,将在单个标签图之间检测到变化。该方法的显着优势已在具有地面真实性数据的遥感图像序列上得到了数字化体现。

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