基于目标分类和Sentinel-2卫星图像的温室制图

F. Balcik, G. Senel, C. Goksel
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引用次数: 12

摘要

绘制温室地图的有效方法对于实施可持续农业实践、自然资源管理和可持续城乡发展非常重要。遥感图像具有不同的空间和光谱分辨率,为温室监测和制图提供了巨大的潜力。传统的温室测绘技术既耗时又昂贵。正因为如此,许多不同的图像处理方法,如基于像元或基于地物的分类方法和遥感指数被用于温室制图。本研究以土耳其Anamur、Mersin地区的温室为研究对象,采用基于地物的分类方法和选定的遥感指标进行研究。免费提供的新一代2018年Sentinel-2 MSI数据具有10米空间分辨率,用于检测选定区域的温室。采用多分辨率分割(MRS)方法对Sentinel-2 MSI数据进行基于目标的图像分析(OBIA)。第一阶段,进行图像分割处理。从分割图像中提取光谱特征(各层均值)和归一化植被指数(NDVI)、归一化水指数(NDWI)、退变塑料大棚指数(RPGI)等遥感指标。然后,创建4个不同的数据集,并通过对创建的数据集应用最近邻分类器来执行OBIA分类过程。训练和验证的参考数据集是通过实地调查创建的,除此之外,一些样本是在高分辨率谷歌地球图像的帮助下拍摄的。最后,利用误差矩阵对分类结果与地面真值数据的一致性进行准确性评估分析。Dataset-4(各层平均值、NDVI、NDWI和RPGI)的生产者和总体精度最高,分别为82%和74%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Greenhouse Mapping using Object Based Classification and Sentinel-2 Satellite Imagery
Efficient methodologies to map greenhouses are very important for the implementation of sustainable agricultural practices, natural resource management, and sustainable urban and rural development. Remote sensing imagery provides a great potential with different spatial and spectral resolutions for greenhouse monitoring and mapping. The conventional techniques for greenhouse mapping are time consuming, and expensive. Because of this reason, many different image processing methods such as classification methods including pixel-based or object based classification and remote sensing indices have been applied for greenhouse mapping. In this study, greenhouses in Anamur, Mersin, Turkey were determined by using object based classification and selected remote sensing indices. Freely available new generation 2018 dated Sentinel-2 MSI data which has 10-meters spatial resolution was used to detect the greenhouse in the selected region. Multi-resolution segmentation (MRS) method was conducted to Sentinel-2 MSI data for object-based image analysis (OBIA). In the first stage, the image segmentation process was performed. Spectral features (mean values of the layers) and remote sensing indices such as Normalized difference vegetation index (NDVI), Normalized difference water index (NDWI) and Retrogressive plastic greenhouse index (RPGI) were extracted from the segmented image. Then, four different datasets were created and the OBIA classification process was performed by applying the nearest neighbor classifier to the created data sets. Reference dataset for training and validation has been created by field survey, apart from this some of the sample are taken with the help of high resolution Google earth images. On the final stage, the accuracy assessment analysis was performed to test the agreement between classification results and ground truth data using error matrix. Dataset-4 (mean values of the layers, NDVI, NDWI and RPGI) has the highest producer and overall accuracies with 82% and 74%, respectively.
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