首页> 外文会议>23rd Symposium of the European Association of Remote Sensing Laboratories; Jun 2-5, 2003; Ghent, Belgium >Evaluation of a change detection method based on joint spatial-spectral information
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Evaluation of a change detection method based on joint spatial-spectral information

机译:基于联合空间光谱信息的变化检测方法评估

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摘要

The performances of a new change detection methodology based on the analysis of pre and post change scattergrams (2D spectral domains) has been evaluated, through a comparative study with two other methodologies: a pre-classification and a post-classification method. The pre-classification methodology uses an unsupervised method based on the so-called "difference image" technique by change vector analysis (CVA) of pairs of pixel values at both times. The post-classification methodology is inspired on an unsupervised method (AutoChange) also, using clustering in two phases for change detection and identification. Multitemporal data sets of three multispectral images acquired by the Landsat 7 Thematic Mapper (ETM+) sensor, corresponding to the geographical area of Madrid countryside have been used for the comparative study. In this paper, it has been proven that the proposed method presents some outstanding features as compared with other change detection methods available in the literature. The developed method can be applied to determine very easily and accurately training areas associated to degraded zones for a further classification process.
机译:通过与其他两种方法进行比较研究,对基于变化前和变化后散点图(2D光谱域)分析的新变化检测方法的性能进行了评估,该方法包括以下两种:前分类法和后分类法。预分类方法通过基于两次像素值对的变化矢量分析(CVA),使用基于所谓的“差异图像”技术的无监督方法。分类后的方法也从无监督方法(AutoChange)中得到启发,在两个阶段使用聚类进行变化检测和识别。通过Landsat 7专题测绘仪(ETM +)传感器获取的三幅多光谱图像的多时相数据集已与马德里乡村的地理区域相对应,用于比较研究。在本文中,已经证明,与文献中提供的其他变化检测方法相比,该方法具有一些突出的功能。所开发的方法可以用于确定非常容易和准确地训练与退化区域相关的区域,以用于进一步的分类过程。

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