A Highly Efficient Method for Training Sample Selection in Remote Sensing Classification

Chao Yang, Qingquan Li, Guofeng Wu, Junyi Chen
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引用次数: 2

Abstract

Remote sensing classification is an important way to obtain land cover information, and the selection of classification training samples for most of the classification method is an expensive and time-consuming task. However, the traditional training samples selection method is a direct selection based on two-dimensional (2D) images, therefore, training sample selection efficiency is always low in the regions with complex terrain and landscape fragmentation, and the ROI (region of interest) separability is unsatisfactory for classification. This study aims at the low efficiency and low ROI separability for traditional training sample selection method put forward a new training sample selection method using a three-dimensional (3D) terrain model that was created by OLI image fusion digital elevation model (DEM) to select ROIs, which departs from the traditional method based on a two-dimensional image. A Landsat-8 OLI image of the Yunlong Reservoir Basin in Kunming was used to test this proposed method. Study results showed that the proposed method obtained ROI separability that was greater than 1.9, and with most reaching 2.0; while the ROI separability of traditional method still had unqualified situation, which showed the new method was more effective.
一种高效的遥感分类训练样本选择方法
遥感分类是获取土地覆盖信息的重要途径,对于大多数分类方法来说,分类训练样本的选取是一项昂贵且耗时的任务。然而,传统的训练样本选择方法是基于二维(2D)图像的直接选择,因此,在地形和景观破碎化复杂的地区,训练样本选择效率总是很低,并且感兴趣区域(ROI)的可分性对分类来说不理想。本研究针对传统的训练样本选择方法效率低、ROI可分割性低的问题,提出了一种新的训练样本选择方法,即利用OLI图像融合数字高程模型(DEM)创建的三维(3D)地形模型来选择ROI,与传统的基于二维图像的方法不同。利用昆明云龙水库盆地的Landsat-8 OLI影像对该方法进行了验证。研究结果表明,该方法获得的ROI可分性均大于1.9,多数达到2.0;而传统方法的ROI可分性仍然存在不合格的情况,表明新方法更有效。
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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