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PLASTIC AND GLASS GREENHOUSES DETECTION AND DELINEATION FROM WORLDVIEW-2 SATELLITE IMAGERY

机译:塑料和玻璃温室检测和描绘世界观-2卫星图像

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摘要

Greenhouse detection using remote sensing technologies is an important research area for yield estimation, sustainable development, urban and rural planning and management. An approach was developed in this study for the detection and delineation of greenhouse areas from high resolution satellite imagery. Initially, the candidate greenhouse patches were detected using supervised classification techniques. For this purpose, Maximum Likelihood (ML), Random Forest (RF), and Support Vector Machines (SVM) classification techniques were applied and compared. Then, sieve filter and morphological operations were performed for improving the classification results. Finally, the obtained candidate plastic and glass greenhouse areas were delineated using boundary tracing and Douglas Peucker line simplification algorithms. The proposed approach was implemented in the Kumluca district of Antalya, Turkey utilizing pan-sharpened WorldView-2 satellite imageries. Kumluca is the prominent district of Antalya with greenhouse cultivation and includes both plastic and glass greenhouses intensively. When the greenhouse classification results were analysed, it can be stated that the SVM classification provides most accurate results and RF classification follows this. The SVM classification overall accuracy was obtained as 90.28%. When the greenhouse boundary delineation results were considered, the plastic greenhouses were delineated with 92.11% accuracy, while glass greenhouses were delineated with 80.67% accuracy. The obtained results indicate that, generally plastic and glass greenhouses can be detected and delineated successfully from WorldView-2 satellite imagery.
机译:使用遥感技术的温室检测是产量估算,可持续发展,城乡规划和管理的重要研究领域。本研究开发了一种方法,用于检测和描绘高分辨率卫星图像的温室地区。最初,使用监督分类技术检测候选温室贴片。为此目的,应用最大似然(ML),随机森林(RF)和支持向量机(SVM)分类技术并进行比较。然后,进行筛过滤器和形态学操作以改善分类结果。最后,使用边界跟踪和道格拉斯PEUCKER线简化算法描绘了所获得的候选塑料和玻璃温室区域。该拟议的方法是在土耳其利用PAN-Sharpened WorldView-2卫星成像仪的Antalya的Kumluca区实施。 Kumluca是安塔利亚着名的Antalya地区,温室培养,包括塑料和玻璃温和的温和。当分析温室分类结果时,可以说SVM分类提供最准确的结果,并且RF分类遵循这一点。获得SVM分类总体精度为90.28%。当考虑温室边界描绘结果时,塑料温室的精度逐叠,玻璃温室的精度划定了80.67%。所获得的结果表明,通常可以从WorldView-2卫星图像中成功地检测和描绘塑料和玻璃温室。

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