谷歌地球引擎中基于目标分类与基于像素分类的随机森林评估

D. Melati, Astisiasari, Trinugroho
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引用次数: 0

摘要

土地利用是影响环境条件的动态特征之一。作为研究区域,万丹省奇勒贡市的沿海地区因其经济发展而受到土地利用动态的影响。因此,本研究旨在提供研究区域2021年的土地利用/土地覆盖(LULC)分类。分类是使用Sentinel-2图像完成的,并在免费、开放的谷歌地球引擎(GEE)环境下进行处理。为了更好地提供LULC数据,本研究在生成LULC分类时,采用了基于对象的分类(Object-based classification, OBC)和基于像素的分类(Pixel-based classification, PBC)两种方法。预测变量综合了Sentinel-2的几个光谱指数和波段。对于OBC,使用简单非迭代聚类(SNIC)进行图像分割。而用于OBC和PBC的分类器是随机森林(Random Forest, RF)。因此,研究区由包括农业区、工业区、居民点和其他植被区在内的异质景观组成。基于精度评估,OBC的总体精度分别为0.95和0.731,优于PBC。
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An Assessment of Object-based Classification Compared to Pixel-based Classification in Google Earth Engine Using Random Forest
Land use is one of the dynamic features that has an impact on environmental conditions. As the study area, the coastal area in the City of Cilegon, Province of Banten is subjected to land use dynamics for its economic development. Accordingly, this study aimed to provide the land use/land cover (LULC) classification within the study area in the year of 2021. The classification was done using Sentinel-2 images and processed on a free, open-access Google Earth Engine (GEE) environment. In generating the LULC classification, this study applied two approaches, i.e., Object-based Classification (OBC) and Pixel-based Classification (PBC), in order to get a better result in providing the LULC data. The predictor variables integrated several spectral indices and bands from the Sentinel-2. For the OBC, image segmentation was performed with a Simple Non-Iterative Clustering (SNIC). And, the classifier used for the OBC and PBC was Random Forest (RF). As a result, the study area consists of heterogeneous landscape including agricultural area, industrial area, settlement and other vegetated areas. Based on the accuracy assessment, the OBC outperformed the PBC with an overall accuracy at 0.95 and 0.731, respectively.
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