首页> 外文会议>Asian conference on remote sensing;ACRS >A ONE-AGAINST-ALL EXTRACTION OF COCOS NUCIFERA AT INDIVIDUAL TREE CROWN LEVEL VIA SUPPORT VECTOR MACHINE CLASSIFICATION USING LIDAR DATA
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A ONE-AGAINST-ALL EXTRACTION OF COCOS NUCIFERA AT INDIVIDUAL TREE CROWN LEVEL VIA SUPPORT VECTOR MACHINE CLASSIFICATION USING LIDAR DATA

机译:基于激光数据的支持向量机分类在单个树冠水平上的一氧化碳提取

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Philippines is the second largest producer of Cocos nucifera, also known as coconut, in the world, with an average production of 15 billion nuts per year corresponding to a hundred billion pesos. Being one of the major crops in the country, coconut accounts for 26% of the total agricultural land, corresponding to at least 3.5 million hectares. As significant declines in the production have been charted since 2016 due to climate-related incidents and infestations, it is high time that we introduce efficient and accurate data as inputs to resources management in the country. However, managing these much of coconut resources scattered on large geographic area is inefficient if we use data gathered through manual counting, and inaccurate of we resort to rough estimations. As the Philippine government embarks on the acquisition of LiDAR data achieving an equivalent 1 meter grid resolution, this study seeks to achieve classification of coconut trees at the individual tree crown level by performing Object-Based Image Analysis (OBIA) on a simple LiDAR-derived first-return highest-elevation model without the aid of spectral data. Support Vector Machine classification in a one-against-all approach has been implemented for the simplicity of the classification process. The methodology produces highly accurate tree count estimates on selected study sites in San Antonio, Quezon, reaching at least 90% on 16 study areas, without incorporating other remotely-sensed data and without using complex procedures. The outputs of this research suggests that agricultural resources mapping at individual tree level achieves high accuracies even when using LiDAR data alone. This study may also pioneer on "one agricultural class per classification" approach in the improvement of existing agricultural resources maps.
机译:菲律宾是世界第二大椰子岛(Cocos nucifera)的生产国,每年平均生产150亿个坚果,相当于一千亿比索。作为该国的主要农作物之一,椰子占农业总土地的26%,相当于至少350万公顷。由于自2016年以来由于与气候相关的事件和侵扰而导致产量大幅下降,因此现在是时候引入高效,准确的数据作为该国资源管理的输入。但是,如果我们使用通过手动计数收集的数据,那么管理散布在较大地理区域上的大量椰子资源的效率将很低,并且不准确的我们会进行粗略的估算。随着菲律宾政府开始获取达到等效1米网格分辨率的LiDAR数据,本研究旨在通过对基于LiDAR的简单图像进行基于对象的图像分析(OBIA),以实现对单个树冠级别的椰子树进行分类。无需光谱数据即可获得的首次返回最高海拔模型。为了简化分类过程,已经实现了一种“反对一切”的支持向量机分类方法。该方法可以在奎松市圣安东尼奥市的选定研究站点上提供高度准确的树木计数估计,在16个研究区域中至少达到90%,而无需合并其他遥感数据,也无需使用复杂的程序。这项研究的结果表明,即使仅使用LiDAR数据,在单个树木级别的农业资源制图也能达到较高的精度。这项研究还可能在改进现有农业资源图上率先采用“每个分类一个农业类别”的方法。

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