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首页> 外文期刊>Journal of Applied Remote Sensing >Comparison of performance of object-based image analysis techniques available in open source software (Spring and Orfeo Toolbox/Monteverdi) considering very high spatial resolution data
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Comparison of performance of object-based image analysis techniques available in open source software (Spring and Orfeo Toolbox/Monteverdi) considering very high spatial resolution data

机译:考虑到非常高分辨率的数据,开源软件(Spring和Orfeo Toolbox / Monteverdi)中基于对象的图像分析技术的性能比较

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The use of unmanned aerial vehicles (UAVs) for remote sensing applications is becoming more frequent. However, this type of information can result in several software problems related to the huge amount of data available. Object-based image analysis (OBIA) has proven to be superior to pixel-based analysis for very high-resolution images. The main objective of this work was to explore the potentialities of the OBIA methods available in two different open source software applications, Spring and OTB/Monteverdi, in order to generate an urban land cover map. An orthomosaic derived from UAVs was considered, 10 different regions of interest were selected, and two different approaches were followed. The first one (Spring) uses the region growing segmentation algorithm followed by the Bhattacharya classifier. The second approach (OTB/Monteverdi) uses the mean shift segmentation algorithm followed by the support vector machine (SVM) classifier. Two strategies were followed: four classes were considered using Spring and thereafter seven classes were considered for OTB/Monteverdi. The SVM classifier produces slightly better results and presents a shorter processing time. However, the poor spectral resolution of the data (only RGB bands) is an important factor that limits the performance of the classifiers applied. (C) 2016 Society of Photo-Optical Instrumentation Engineers (SPIE)
机译:将无人飞行器(UAV)用于遥感应用变得越来越普遍。但是,此类信息可能会导致与大量可用数据有关的几个软件问题。对于高分辨率图像,基于对象的图像分析(OBIA)已被证明优于基于像素的分析。这项工作的主要目的是探索在两种不同的开源软件应用程序Spring和OTB / Monteverdi中可用的OBIA方法的潜力,以便生成城市土地覆盖图。考虑了从无人机获得的正马赛克,选择了10个不同的感兴趣区域,并采用了两种不同的方法。第一个(春季)使用区域增长分割算法,然后使用Bhattacharya分类器。第二种方法(OTB / Monteverdi)使用均值偏移分割算法,后跟支持向量机(SVM)分类器。采取了两种策略:使用Spring考虑了四个课程,此后考虑了OTB / Monteverdi的七个课程。 SVM分类器产生更好的结果,并缩短处理时间。但是,数据的较差的光谱分辨率(仅RGB波段)是限制所应用分类器性能的重要因素。 (C)2016年光电仪器工程师学会(SPIE)

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