首页> 外文期刊>International Archives of the Photogrammetry, Remote Sensing and Spatial Information Sciences >MODEL FOR LAND COVER ESTIMATION USING UNSUPERVISED MACHINE LEARNING ON GOOGLE MAPS COLOR IMAGES
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MODEL FOR LAND COVER ESTIMATION USING UNSUPERVISED MACHINE LEARNING ON GOOGLE MAPS COLOR IMAGES

机译:在Google Maps彩色图像上使用未经监督的机器学习进行土地覆盖估算的模型

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Remote sensing data and satellite images are broadly used for land cover information. There are so many challenges to classify pixels on the basis of features and characteristics. Generally it is pixel classification that required the count of pixels for certain area of interest. In the proposed model, we are applying unsupervised machine learning to classify the content of the input images on the basis of pixels intensity. The study aims to compare classification accuracy of different landscape characteristics like water, forest, urban, agricultural areas, transport network and other classes adapted from CORINE (Coordination of information on the environment) nomenclature. To fulfil the aim of the model, accessing data from Google map using Google static API service which creates a map based on URL parameters sent through a standard HTTP (Hyper Text Transfer Protocol) request and returns the map as an image which can be display on any graphical user interface platform. The Google Static Maps API returns an image either in GIF, PNG or JPEG format in response to an HTTP request. To identify different land cover/use classes using k-means clustering. The model is dynamic in nature that describes the clustering as well formulate the area of the concerned class or clustered fields.
机译:遥感数据和卫星图像广泛用于土地覆盖信息。基于特征和特征对像素进行分类存在许多挑战。通常,像素分类要求对某些感兴趣区域进行像素计数。在提出的模型中,我们将应用无监督机器学习根据像素强度对输入图像的内容进行分类。这项研究旨在比较不同景观特征的分类准确性,例如水,森林,城市,农业地区,交通网络和其他根据CORINE(环境信息协调)术语命名的类别。为了实现该模型的目的,请使用Google静态API服务访问Google地图中的数据,该服务基于通过标准HTTP(超文本传输​​协议)请求发送的URL参数创建地图,并将该地图作为图像返回,并显示在任何图形用户界面平台。 Google Static Maps API会响应HTTP请求以GIF,PNG或JPEG格式返回图像。使用k均值聚类来识别不同的土地覆盖/用途类别。该模型本质上是动态的,它描述了聚类以及制定有关类或聚类字段的区域。

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