S I Wijayanti, I P Hadi, A A Tanjung, J D Islami, A H A Adilah and N A H J Pulungan
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引用次数: 0
摘要
土地的形态条件对决定油棕榈树的生长质量起着重要作用。油棕种植园的综合管理是提高生产力的关键因素。对油棕种植园的土地形态进行分析是至关重要的第一步。本研究的目标是:(1)利用激光雷达分析土地形态特征;(2)解释用于确定油棕植被指数的 NDVI 等级分类中的激光雷达机制;以及(3)为优化油棕生产力提供思路。本研究采用图像判读方法,通过获取分辨率为 3 x 3 厘米的 DEM 和正射影像形式的激光雷达数据,进行地表形态分析(MPL)和 NDVI 平尺。本研究需要的数据是正射影像,用于交叉检查田间条件、植物冠层条件和每个区块的植物数量。NDVI 处理用于确定植被指数,以解读油棕植物的健康状况。结果表明,激光雷达技术可用于确定油棕植物的健康状况。NDVI 的总体准确度和可靠性值分别达到 88.33% 和 88.13%。这表明,NDVI 值可以预测油棕植物的健康状况,并可用于有效监测。
Land morphology analysis with LiDAR technology to increase oil palm production
The morphological condition of the land plays an important role in determining the quality of growth of oil palm plants. Integrated management of oil palm plantations is a key factor in increasing productivity. Analysis of land morphology in oil palm plantations is a crucial first step. The objectives of this study were (1) to characterize land morphology with LiDAR implementation, (2) to explain the LiDAR mechanism in the NDVI class classification used for determining the oil palm Vegetation Index, and (3) to provide ideas to optimize oil palm productivity. The study was conducted using the image interpretation method from the acquisition of LiDAR data which has a resolution of 3 x 3 cm in the form of DEM and orthophoto to be able to perform land surface morphology analysis (MPL) and NDVI flatfoot. The data needed in this study is Orthophoto, which is used to crosscheck field conditions, plant canopy conditions, and populations of plants per block. NDVI processing is used to determine the Vegetation Index to interpret the health of oil palm plants. The results showed that LiDAR technology can be used to determine the health of oil palm plants. The overall accuracy and reliability value of NDVI reached 88.33% and 88.13%, respectively. This shows that the value of NDVI can predict the health of oil palm plants and can be used to monitor them effectively.