Regional Mapping of Vineyards Using Machine Learning and LiDAR Data

IF 0.3 Q4 GEOGRAPHY
A. Prins, A. van Niekerk
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引用次数: 2

Abstract

This study evaluates the use of LiDAR data and machine learning algorithms for mapping vineyards. Vineyards are planted in rows spaced at various distances, which can cause spectral mixing within individual pixels and complicate image classification. Four resolution where used for generating normalized digital surface model and intensity derivatives from the LiDAR data. In addition, texture measures with window sizes of 3x3 and 5x5 were generated from the LiDAR derivatives. The different combinations of the resolutions and window sizes resulted in eight data sets that were used as input to 11 machine learning algorithms. A larger window size was found to improve the overall accuracy for all the classifier–resolution combinations. The results showed that random forest with texture measures generated at a 5x5 window size outperformed the other experiments, regardless of the resolution used. The authors conclude that the random forest algorithm used on LiDAR derivatives with a resolution of 1.5m and a window size of 5x5 is the recommend configuration for vineyard mapping using LiDAR data.
利用机器学习和激光雷达数据绘制葡萄园区域地图
本研究评估了激光雷达数据和机器学习算法在葡萄园测绘中的应用。葡萄园以不同的距离成行种植,这可能导致单个像素的光谱混合,并使图像分类复杂化。四种分辨率用于从LiDAR数据生成归一化数字表面模型和强度导数。此外,利用LiDAR导数生成窗口大小为3x3和5x5的纹理测度。分辨率和窗口大小的不同组合产生了8个数据集,这些数据集被用作11种机器学习算法的输入。发现更大的窗口大小可以提高所有分类器分辨率组合的总体准确性。结果表明,无论使用何种分辨率,在5x5窗口大小下生成纹理度量的随机森林都优于其他实验。作者得出结论,在分辨率为1.5m、窗口大小为5x5的激光雷达衍生品上使用的随机森林算法是使用激光雷达数据进行葡萄园映射的推荐配置。
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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来源期刊
CiteScore
1.20
自引率
0.00%
发文量
22
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