THE APPLICATION OF MACHINE LEARNING USING GOOGLE EARTH ENGINE FOR REMOTE SENSING ANALYSIS

Muhammad Iqbal Habibie
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引用次数: 1

Abstract

The spatial dimensions and temporal resolutions of the change detection analyses have been limited by traditional methodologies (i.e., desktop computing, open source). For decades, Remote Sensing (RS) have been collected large amounts of data, which are difficult to manage and analyzed using standard software packages and desktop computing resources. For this, Google developed the Google Earth Engine (GEE) cloud computing to successfully meet the issues of large data analysis. GEE is a cloud-based computing as a planetary-scale geospatial platform for Earth science data and analysis, allows these spatiotemporal constraints to be lifted and handle massive amounts of geodata over wide areas and to monitor the environment over long periods of time. We summarize the GEE data catalog’s big geospatial data such as Climate and weather for surface temperature, climate, atmospheric and weather. It also contains Imagery like Landsat, Sentinel, MODIS and High-resolution Imagery and Geophysical information contains of terrain, land cover, cropland, and other geophysical data. Furthermore, supervised machine and unsupervised machine algorithms   were used for several applications for Land Use Land Cover (LULC), hydrology, urban planning, natural disasters, and climate assessments. The research describes the utilization to resolve the big data using machine learning algorithm.
利用谷歌地球引擎进行遥感分析的机器学习应用
变更检测分析的空间维度和时间分辨率受到传统方法(即桌面计算、开源)的限制。几十年来,遥感(RS)已经收集了大量的数据,这些数据很难使用标准软件包和桌面计算资源进行管理和分析。为此,Google开发了Google Earth Engine (GEE)云计算,成功解决了大数据分析问题。GEE是一种基于云计算的行星尺度地理空间平台,用于地球科学数据和分析,可以解除这些时空限制,处理大范围的大量地理数据,并长时间监测环境。对GEE数据目录的气候和天气等大地理空间数据进行了地表温度、气候、大气和天气等方面的总结。它还包含像Landsat、Sentinel、MODIS和高分辨率图像这样的图像,以及包含地形、土地覆盖、农田和其他地球物理数据的地球物理信息。此外,有监督机器和无监督机器算法被用于土地利用土地覆盖(LULC)、水文、城市规划、自然灾害和气候评估等多个应用。研究描述了利用机器学习算法解决大数据问题。
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