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Change detection for remote sensing images with graph cuts

机译:用图形切割遥感图像的变更检测

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Change detection is an important part of many remote sensing applications. This paper addresses the problem of unsupervised pixel classification into 'Change' and 'No Change' classes based on Hidden Markov Random Field (HMRF) models. HMRF models have long been recognized as a method to enforce spatially coherent class assignment. The optimal classification under these models is usually obtained under the Maximum a Posteriori (MAP) criterion. However, the MAP classification in HMRF models leads in general to problems with exponential complexity, so approximate techniques are needed. In this paper we show that the simple structure of the change detection problem makes that MAP classification can be exactly and efficiently calculated using graph cut techniques. Another problem related to HMRF modelling (and to any change detection technique) is the determination of the parameters or thresholds for classification. This learning problem is solved in our HMRF model by the Expectation Maximization (EM) algorithm. Experimental results obtained on four sets of multispectral remote sensing images confirm the validity of the proposed approach.
机译:更改检测是许多遥感应用的重要组成部分。本文根据隐藏的Markov随机字段(HMRF)模型,解决了未经监督的像素分类和“更改”和“无更改”类的问题。 HMRF模型长期被识别为强制执行空间相干类分配的方法。在这些模型下的最佳分类通常在最大后的后验(MAP)标准下获得。然而,HMRF模型中的地图分类通常导致指数复杂性的问题,因此需要近似技术。在本文中,我们表明,更改检测问题的简单结构使得可以使用曲线图剪切技术精确且有效地计算地图分类。与HMRF建模相关的另一个问题(以及任何改变检测技术)是确定分类的参数或阈值。通过期望最大化(EM)算法,我们的HMRF模型解决了该学习问题。在四组多光谱遥感图像上获得的实验结果证实了所提出的方法的有效性。

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