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首页> 外文期刊>Geoscience and Remote Sensing, IEEE Transactions on >Unsupervised Change Detection of Satellite Images Using Local Gradual Descent
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Unsupervised Change Detection of Satellite Images Using Local Gradual Descent

机译:使用局部渐变的无监督卫星图像变化检测

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摘要

In this paper, we propose a novel technique for unsupervised change detection of multitemporal satellite images using Gaussian mixture model (GMM), local gradual descent, and k -means clustering. Data distribution of the difference image is first modeled by bimodal GMM with “changed” and “unchanged” components. The neighborhood data around each pixel form a sample and are modified by the so-called local gradual descent matrix (LGDM), values of which are descending from center toward outside. LGDM visits each sample and causes small variations in pixel values of the sample in an attempt to shift the sample toward the correct Gaussian component center in the feature space. Thus, LGDM decides how much modification to the current sample is necessary for true categorization of the current pixel by later k-means. The motivation behind the proposed approach is twofold. First, a general method that could efficiently explore both local and global changes for unsupervised change detections is needed. Second, unsupervised change detection methods generally use nonsystematic selections of system parameters. Hence, a parameter selection method without using the ground truth image is required for unsupervised methods. The proposed change detection method is tested for both optical and advanced synthetic aperture radar satellite images and compared with the recent works based on the same input set. The proposed method outperforms the others qualitatively and quantitatively.
机译:在本文中,我们提出了一种使用高斯混合模型(GMM),局部渐降和k均值聚类的多时相卫星图像无监督变化检测的新技术。差异图像的数据分布首先由具有“已更改”和“未更改”分量的双峰GMM建模。每个像素周围的邻域数据形成一个样本,并通过所谓的局部渐降矩阵(LGDM)进行修改,其值从中心到外部递减。 LGDM会访问每个样本,并引起样本像素值的微小变化,以尝试将样本移向特征空间中正确的高斯分量中心。因此,LGDM决定通过稍后的k均值对当前像素进行真正分类需要对当前样本进行多少修改。提议的方法背后的动机是双重的。首先,需要一种通用方法,该方法可以有效地探索本地和全局更改,以进行无监督的更改检测。其次,无监督的变化检测方法通常使用系统参数的非系统选择。因此,无监督方法需要不使用地面真实图像的参数选择方法。对光学和高级合成孔径雷达卫星图像进行了测试,并与基于相同输入集的最新工作进行了比较。所提出的方法在质量和数量上均优于其他方法。

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