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首页> 外文期刊>Selected Topics in Applied Earth Observations and Remote Sensing, IEEE Journal of >Multiscale Morphological Compressed Change Vector Analysis for Unsupervised Multiple Change Detection
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Multiscale Morphological Compressed Change Vector Analysis for Unsupervised Multiple Change Detection

机译:用于无监督多变化检测的多尺度形态压缩变化矢量分析

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摘要

A novel multiscale morphological compressed change vector analysis (MCVA) method is proposed to address the multiple-change detection problem (i.e., identifying different classes of changes) in bitemporal remote sensing images. The proposed approach contributes to extend the state-of-the-art spectrum-based compressed change vector analysis (CVA) method by jointly analyzing the spectral-spatial change information. In greater details, reconstructed spectral change vector features are built according to a morphological analysis. Thus more geometrical details of change classes are preserved while exploiting the interaction of a pixel with its adjacent regions. Two multiscale ensemble strategies, i.e., data level and decision level fusion, are designed to integrate the change information represented at different scales of features or to combine the change detection results obtained by the detector at different scales, respectively. A detailed scale sensitivity analysis is carried out to investigate its impacts on the performance of the proposed method. The proposed method is designed in an unsupervised fashion without requiring any ground reference data. The proposed MCVA is tested on one simulated and three real bitemporal remote sensing images showing its properties in terms of different image size and spatial resolution. Experimental results confirm its effectiveness.
机译:提出了一种新颖的多尺度形态学压缩变化矢量分析(MCVA)方法,以解决双时态遥感图像中的多变化检测问题(即识别变化的不同类别)。通过共同分析频谱空间变化信息,提出的方法有助于扩展基于频谱的最新技术的压缩变化矢量分析(CVA)方法。更详细地,根据形态分析来构建重构的光谱变化矢量特征。因此,在利用像素与其相邻区域的相互作用时,可以保留更多变化类别的几何细节。设计了两种多尺度集成策略,即数据级别和决策级别融合,以集成以不同尺度的特征表示的变化信息或组合检测器以不同尺度获得的变化检测结果。进行了详细的比例灵敏度分析,以研究其对所提出方法的性能的影响。所提出的方法是在无监督的情况下设计的,不需要任何地面参考数据。拟议的MCVA在一张模拟的和三张真实的双时相遥感影像上进行了测试,显示了其在不同影像尺寸和空间分辨率下的特性。实验结果证实了其有效性。

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