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首页> 外文期刊>International Archives of the Photogrammetry, Remote Sensing and Spatial Information Sciences >IMCLASS – A USER-TAILORED MACHINE LEARNING IMAGE CLASSIFICATION CHAIN FOR CHANGE DETECTION OR LANDCOVER MAPPING
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IMCLASS – A USER-TAILORED MACHINE LEARNING IMAGE CLASSIFICATION CHAIN FOR CHANGE DETECTION OR LANDCOVER MAPPING

机译:IMClass - 用户定制的机器学习图像分类链,用于更改检测或Landcover映射

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With the increasing availability of satellite imagery at several spatial, spectral and temporal resolutions, the choice of the best image and the most appropriate method for object detection and classification of a broad range of land surface classes or processes is still a difficult task for many users. In order to guide the users, we proposed a user-tailored machine learning method (IMage CLASSification - ImCLASS) to detect and classifiy specific landcover classes.The method assumes a mono-class approach taking several ill-posed problems (e.g. class imbalance, high diversity inside the studied class, similarities with the adjacent samples…) as use cases (landslides, construction works in urban areas, burnt areas, vegetation classes…). It is a generalization of the ALADIM processor already validated in the context of landslide mapping and available as a service on the ESA GeoHazards Exploitation Platform (GEP). The proposed chain is able to combine optical and radar images, uses open source libraries, and is optimized for rapid calculation on HPC environments. The ImCLASS processor is presented and its performance is evaluated on three use cases: landslide detection and mapping after disasters in different regions of the World, urban classes change detection with a focus on construction works in Strasbourg, and crop mapping (vineyard) in the Grand-Est region. First results using either bi-dates or mono-date imagery are presented.
机译:随着卫星图像的可用性在多个空间,光谱和时间分辨率下,最佳图像的选择和最合适的对象检测方法以及广泛的土地面积或过程的分类仍然是许多用户的艰巨任务。为了引导用户,我们提出了一种用户量身定制的机器学习方法(图像分类 - IMClass)来检测和分类特定的Landcover类。该方法假设采用几个不平衡问题的单级方法(例如类别不平衡,高研究课程内部的多样性,与相邻样品的相似之处......)作为用例(山体滑坡,城市地区的建筑工程,烧焦的地区,植被课程......)。它是已经在Landslide映射的背景下验证的Aladim处理器的概括,并作为ESA地质绘画开发平台(GEP)的服务。所提出的链能够组合光学和雷达图像,使用开源库,并优化用于高速计算HPC环境。展示了IMCLASS处理器,其性能在三种用例中进行评估:世界各地灾害灾害后的滑坡检测和映射,城市课程改变检测,重点在斯特拉斯堡的建筑作品和宏伟的作物测绘(葡萄园)。最多的地区。使用双日期或单日图像提供的第一个结果。

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