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Gully Erosion Mapping Using Object-Based and Pixel-Based Image Classification Methods

机译:基于对象和基于像素的图像分类方法的沟壑侵蚀图

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Gully erosion mapping is a crucial step to monitor the erosion process and to study its current and future local impacts. Gully erosion mapping through fieldwork is difficult, time-consuming, and costly. This article compares various pixel-based image classification (PBC) algorithms, such as ISODATA, Maximum Likelihood Classification, and Support Vector Machine, with the object-based image analysis (OBIA) technique for gully erosion mapping on IRS-P6 images. Six models defined by classification types, classifiers, and feature spaces were built for comparison. The results show that OBIA classification performed better than PBC in terms of accuracy. We also found that the improvement of OBIA was primarily due to employing textural and shape features and optimized feature space, while the use of standard feature space did not improve OBIA. In addition, OBIA significantly reduced the salt-and-pepper effect that obscures the features on the output maps compared to the PBC maps (which had more salt-and-pepper effects). It seems that object-based techniques have yielded better results because of their focus on the shape of gully networks rather than on their spectral heterogeneity. In order to improve the accuracy, a priority may be gained by fully exploring the use of membership function and hierarchical approach with multi-scale segmentation for gully mapping. In future studies we propose to determine how these factors can affect the performance of OBIA in terms of gully mapping. This study provides information on the location of gullies, gully dynamics over a period of time, and the degree of land degradation (gully density) for developing and implementing soil conservation measures.
机译:沟壑侵蚀测绘是监测侵蚀过程并研究其当前和未来局部影响的关键步骤。通过野外作业进行沟壑侵蚀测绘是困难,费时和昂贵的。本文将各种基于像素的图像分类(PBC)算法(例如ISODATA,最大似然分类和支持向量机)与用于IRS-P6图像上的沟壑侵蚀映射的基于对象的图像分析(OBIA)技术进行了比较。建立了由分类类型,分类器和特征空间定义的六个模型以进行比较。结果表明,OBIA分类的准确性优于PBC。我们还发现OBIA的改进主要是由于采用了纹理和形状特征以及优化的特征空间,而使用标准特征空间并没有改善OBIA。此外,与PBC图(具有更多的椒盐效应)相比,OBIA显着降低了盐和胡椒效应,该效应掩盖了输出图上的功能。由于基于对象的技术关注沟渠网络的形状而不是其频谱异质性,因此似乎产生了更好的结果。为了提高准确性,可以通过充分探索隶属函数和具有多尺度分段的分层方法进行沟壑制图来获得优先级。在未来的研究中,我们建议确定这些因素如何影响沟壑制图的OBIA性能。这项研究提供了有关沟壑的位置,一段时间内沟壑动态以及制定和实施土壤保护措施的土地退化程度(沟壑密度)的信息。

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