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A Bayesian Nonparametric Model Coupled with a Markov Random Field for Change Detection in Heterogeneous Remote Sensing Images

机译:贝叶斯非参数模型与马尔可夫随机场相结合的非均质遥感图像变化检测

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摘要

In recent years, remote sensing of the Earth surface using images acquired from aircraft or satellites has gained a lot of attention. The acquisition technology has been evolving fast and, as a consequence, many different kinds of sensors (e.g., optical, radar, multispectral, and hyperspectral) are now available to capture different features of the observed scene. One of the main objectivesudof remote sensing is to monitor changes on the Earth surface. Change detection has been thoroughly studied in the case of images acquired by the same sensors (mainly optical or radar sensors). However, due to the diversity and complementarity of the images, change detection between images acquired with different kinds of sensors (sometimes referred to as heterogeneous sensors) is clearly anudinteresting problem. A statistical model and a change detection strategy were recently introduced inud[J. Prendes, M. Chabert, F. Pascal, A. Giros, and J.-Y. Tourneret, Proceedings of the IEEE Inter-udnational Conference on Acoustics, Speech and Signal Processing, Florence, Italy, 2014; IEEE Trans.udImage Process., 24 (2015), pp. 799-812] to deal with images captured by heterogeneous sensors. The main idea of the suggested strategy was to model the objects contained in an analysis window by mixtures of distributions. The manifold defined by these mixtures was then learned using traininguddata belonging to unchanged areas. The changes were finally detected by thresholding an appropriate distance to the estimated manifold. This paper goes a step further by introducing a Bayesian nonparametric framework allowing us to deal with an unknown number of objects in analysis windows without specifying an upper bound for this number. A Markov random field is also introduced to account for the spatial correlation between neighboring pixels. The proposed change detector is validated using different sets of synthetic and real images (including pairs of optical images and pairs of optical and radar images) showing a significant improvement when compared to existingudalgorithms.
机译:近年来,使用从飞机或卫星获取的图像对地球表面进行遥感已经引起了广泛的关注。采集技术发展迅速,因此,现在可以使用许多不同类型的传感器(例如光学,雷达,多光谱和高光谱)来捕获观察场景的不同特征。遥感的主要目标之一是监视地球表面的变化。对于由相同传感器(主要是光学或雷达传感器)获取的图像,对变化检测进行了深入研究。但是,由于图像的多样性和互补性,用不同种类的传感器(有时称为异类传感器)采集的图像之间的变化检测显然是一个有趣的问题。最近在统计中引入了统计模型和变化检测策略[J. Prendes,M.Chabert,F.Pascal,A.Giros和J.-Y. Tourneret,IEEE国际声学,语音和信号处理国际会议论文集,意大利佛罗伦萨,2014年; IEEE Trans。 udImage Process。,24(2015),pp。799-812],以处理由异构传感器捕获的图像。建议策略的主要思想是通过分布的混合对包含在分析窗口中的对象进行建模。然后使用属于不变区域的训练 uddata来学习由这些混合物定义的歧管。最后,通过将到估计歧管的适当距离阈值化来检测变化。本文进一步介绍了贝叶斯非参数框架,该框架使我们能够在分析窗口中处理未知数目的对象,而无需指定该数目的上限。还引入了马尔可夫随机场以解决相邻像素之间的空间相关性。拟议的变化检测器使用不同的合成图像和真实图像集(包括成对的光学图像以及成对的光学和雷达图像)进行了验证,与现有算法相比,显着改进。

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