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首页> 外文期刊>ISPRS Journal of Photogrammetry and Remote Sensing >A targeted change-detection procedure by combining change vector analysis and post-classification approach
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A targeted change-detection procedure by combining change vector analysis and post-classification approach

机译:结合变更向量分析和分类后方法的有针对性的变更检测程序

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摘要

In remote sensing, conventional supervised change-detection methods usually require effective training data for multiple change types. This paper introduces a more flexible and efficient procedure that seeks to identify only the changes that users are interested in, here after referred to as "targeted change detection". Based on a one-class classifier "Support Vector Domain Description (SVDD)", a novel algorithm named "Three-layer SVDD Fusion (TLSF)" is developed specially for targeted change detection. The proposed algorithm combines one-class classification generated from change vector maps, as well as before and after-change images in order to get a more reliable detecting result. In addition, this paper introduces a detailed workflow for implementing this algorithm. This workflow has been applied to two case studies with different practical monitoring objectives: urban expansion and forest fire assessment. The experiment results of these two case studies show that the overall accuracy of our proposed algorithm is superior (Kappa statistics are 86.3% and 87.8% for Case 1 and 2, respectively), compared to applying SVDD to change vector analysis and post-classification comparison. (C) 2016 International Society for Photogrammetry and Remote Sensing, Inc. (ISPRS). Published by Elsevier B.V. All rights reserved.
机译:在遥感中,传统的监督式变化检测方法通常需要针对多种变化类型的有效训练数据。本文介绍了一种更灵活,更有效的过程,该过程旨在仅识别用户感兴趣的更改,此后称为“目标更改检测”。基于一类分类器“支持向量域描述(SVDD)”,专门针对目标更改检测开发了一种名为“三层SVDD融合(TLSF)”的新颖算法。该算法结合了从变化矢量图生成的一类分类,以及变化前后的图像,以获得更可靠的检测结果。此外,本文介绍了实现此算法的详细工作流程。该工作流程已应用于具有不同实际监视目标的两个案例研究:城市扩展和森林火灾评估。这两个案例研究的实验结果表明,与将SVDD应用于更改矢量分析和分类后比较相比,我们提出的算法的整体准确性更高(案例1和案例2的Kappa统计分别为86.3%和87.8%) 。 (C)2016国际摄影测量与遥感学会(ISPRS)。由Elsevier B.V.发布。保留所有权利。

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