Land cover change detection thresholds for Landsat data samples

R. Rasi, O. Kissiyar, M. Vollmar
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引用次数: 3

Abstract

This paper presents the results of research on common change detection techniques. More specifically it looks into the optimization of threshold values for these investigated change detection techniques: image differencing, normalized image differencing, image ratioing, normalized variance differencing, normalized spectral Euclidean distance and Tasseled Cap parameters difference. The threshold values were optimized for the detection of land cover change/no-change based on the comparison with an existing validated classification of five broad land cover classes. For this study a sample set of 104 image pairs was selected, each of 20 × 20 km, cut from Landsat TM/ETM+ imagery series. An object based approach was applied for the land cover change detection. The results showed that the threshold of normalized variance difference had most stable values across the sample set, however applying optimized thresholds the achieved accuracy was comparable for all tested methods.
陆地卫星数据样本的土地覆盖变化检测阈值
本文介绍了常用变更检测技术的研究成果。更具体地说,它研究了这些变化检测技术的阈值优化:图像差分、归一化图像差分、图像比率、归一化方差差分、归一化光谱欧几里得距离和流苏帽参数差分。通过与现有的5个广泛土地覆盖类别的有效分类进行比较,优化了检测土地覆盖变化/无变化的阈值。在本研究中,选取了104对图像,每对图像长度为20 × 20 km,来自Landsat TM/ETM+图像系列。提出了一种基于地物的土地覆盖变化检测方法。结果表明,归一化方差差的阈值在整个样本集中具有最稳定的值,但应用优化的阈值,所有测试方法的准确度具有可比性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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