基于多特征融合的面向对象多源图像变化检测

Baoming Zhang, Jun Lu, Haitao Guo, Junfeng Xu, Chuan Zhao
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引用次数: 2

摘要

随着遥感技术的发展,数据来源越来越丰富,分辨率也越来越高。因此,传统的变更检测方法已不能满足应用需求。针对这一问题,提出了一种基于多特征融合的面向对象多源遥感图像变化检测方法。在目标获取和多特征提取的基础上,采用支持向量机进行高维数据分类。通过将基于支持向量机的二值分类算法与面向对象的变化检测有效结合,提高了多源图像变化检测的准确性和可靠性。采用人工视觉判断,设计了一种面向地物评价指标的计算方法。在多源、多时段图像中进行了实验,统计了不同地物的变化检测精度,验证了该方法的有效性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Object-oriented change detection for multi-source images using multi-feature fusion
With the development of remote sensing technology, the source of data is getting more abundant and the resolution is becoming higher. Consequently, conventional change detection method can't meet the application requirements any more. In this paper, an object-oriented change detection method for multisource remote sensing images using multi-feature fusion was proposed to solve this problem. On the basis of objects acquisition and multiple features extraction, SVM was adopted for its outstanding character in high dimensional data classification. Through the efficient combination of binary classification algorithm based on SVM and object-oriented change detection, the accuracy and reliability of change detection for multi-source images were increased. With manual visual judgment, a computing method for ground objects oriented evaluation index was designed. The experiments were conducted among multi-source and multi-temporal images, and the change detection accuracy of different ground objects were counted, which verified the effectiveness of this method.
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