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首页> 外文期刊>ISPRS International Journal of Geo-Information >Extraction of Terraces on the Loess Plateau from High-Resolution DEMs and Imagery Utilizing Object-Based Image Analysis
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Extraction of Terraces on the Loess Plateau from High-Resolution DEMs and Imagery Utilizing Object-Based Image Analysis

机译:利用基于对象的图像分析从高分辨率DEM中提取黄土高原梯田和影像

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摘要

Abstract : Terraces are typical artificial landforms on the Loess Plateau, with ecological functions in water and soil conservation, agricultural production, and biodiversity. Recording the spatial distribution of terraces is the basis of monitoring their extent and understanding their ecological effects. The current terrace extraction method mainly relies on high-resolution imagery, but its accuracy is limited due to vegetation coverage distorting the features of terraces in imagery. High-resolution topographic data reflecting the morphology of true terrace surfaces are needed. Terraces extraction on the Loess Plateau is challenging because of the complex terrain and diverse vegetation after the implementation of “vegetation recovery”. This study presents an automatic method of extracting terraces based on 1 m resolution digital elevation models (DEMs) and 0.3 m resolution Worldview-3 imagery as auxiliary information used for object-based image analysis (OBIA). A multi-resolution segmentation method was used where slope, positive and negative terrain index (PN), accumulative curvature slope (AC), and slope of slope (SOS) were determined as input layers for image segmentation by correlation analysis and Sheffield entropy method. The main classification features based on DEMs were chosen from the terrain features derived from terrain factors and texture features by gray-level co-occurrence matrix (GLCM) analysis; subsequently, these features were determined by the importance analysis on classification and regression tree (CART) analysis. Extraction rules based on DEMs were generated from the classification features with a total classification accuracy of 89.96%. The red band and near-infrared band of images were used to exclude construction land, which is easily confused with small-size terraces. As a result, the total classification accuracy was increased to 94%. The proposed method ensures comprehensive consideration of terrain, texture, shape, and spectrum characteristics, demonstrating huge potential in hilly-gully loess region with similarly complex terrain and diverse vegetation covers.
机译:摘要:梯田是黄土高原上典型的人工地貌,在水土保持,农业生产和生物多样性方面具有生态功能。记录梯田的空间分布是监测梯田的范围并了解其生态影响的基础。当前的梯田提取方法主要依赖于高分辨率图像,但是由于植被覆盖使影像中梯田的特征失真,其准确性受到限制。需要反映真实平台表面形态的高分辨率地形数据。在实施“植被恢复”之后,由于复杂的地形和多样化的植被,黄土高原的梯田开采面临挑战。这项研究提出了一种基于1 m分辨率的数字高程模型(DEM)和0.3 m分辨率的Worldview-3影像作为用于基于对象的图像分析(OBIA)的辅助信息的梯田自动提取方法。使用多分辨率分割方法,其中通过相关性分析和谢菲尔德熵方法确定坡度,正负地形指数(PN),累积曲率斜率(AC)和坡度斜率(SOS)作为图像分割的输入层。通过灰度共生矩阵(GLCM)分析,从基于地形因素的地形特征和纹理特征中选择基于DEM的主要分类特征;随后,通过分类和回归树(CART)分析的重要性分析来确定这些特征。从分类特征中生成基于DEM的提取规则,总分类精度为89.96%。图像的红色波段和近红外波段用于排除建设用地,而建设用地很容易与小型露台混淆。结果,总分类精度提高到94%。所提出的方法确保了对地形,质地,形状和光谱特征的综合考虑,从而证明了在地形类似,植被覆盖多样的黄土丘陵沟壑区的巨大潜力。

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