利用二值图像处理改进地貌分类

A. C. Salgado-Albiter, S. I. Valdez, Jorge Paredes-Tavares
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引用次数: 0

摘要

地貌分类是认识和描述景观演变过程的基础。这个过程通常需要来自不同来源、专业知识和时间的提升信息。基于地貌学算法的自动地貌分类,支持专家分类,采用局部三元模式标记地貌要素,大大减少了计算时间。然而,它提出了一些问题,如噪声输出,山谷不被归类为连续形式,山谷被归类为低海拔峰值,山谷内的平坦地带不被归类为它的一部分,以及其他类似的问题。在本提案中,我们通过对地貌图输出进行二值化并应用二值图像算子来解决上述问题。该方案的性能是通过使用二值分类指标和专家制作的真实图像来衡量的。结果表明,在测试数据的所有实例中,地貌学分类器的准确率、平衡准确率和F1指标均高于地貌学分类器。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Improving Geomorphological Classification via Binary Image Processing
Landform classification is the basis for understanding and describing the processes and evolution of landscape. This process usually requires elevation information from different sources, expertise and time. Automatic geomorphological classification, via the geomorphons algorithm, supports expert classification by using local ternary patterns for labeling landform elements, significantly reducing the computation time. Nevertheless, it presents issues such as a noisy output, valleys that are not classified as continuous forms, valleys that are classified as peaks at low altitude, flat zones inside the valley that are not classified as a part of it, and other similar issues. In this proposal, we tackle the mentioned issues for valley classification by binarizing the geomorphons output and applying it binary-image operators. The proposal's performance is measured by using binary classification metrics and expert-made groundtruth images. The results show that the accuracy, balanced accuracy, and F1 metrics are greater than those delivered by the geomorphons classifier for all the instances in the testing data.
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