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首页> 外文期刊>GIScience & remote sensing >Image Processing and Classification Procedures for Analysis of Sub-decimeter Imagery Acquired with an Unmanned Aircraft over Arid Rangelands
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Image Processing and Classification Procedures for Analysis of Sub-decimeter Imagery Acquired with an Unmanned Aircraft over Arid Rangelands

机译:干旱牧场上无人飞机获取的亚分米图像的图像处理和分类程序

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摘要

Unmanned aerial systems (UAS) have great potential as a platform for acquiring very high resolution aerial imagery for vegetation mapping. However, image processing and classification techniques require adaptation to images obtained with low-cost digital cameras. We developed and evaluated an image processing workflow that included the integration of resolution-appropriate field sampling, feature selection, and object-based image analysis for the purpose of classifying rangeland vegetation from a five-centimeter-resolution UAS image mosaic. Classification tree analysis was used to determine the optimal spectral, spatial, and contextual features. Segmentation and classification rule sets were developed on a test plot and were applied to the remaining study area, resulting in an overall classification accuracy of 78% at the species level and 81% at the structure-group level. The image processing approach provides a roadmap for deriving quality vegetation classification products from UAS imagery with very high spatial, but low spectral resolution.
机译:无人机系统(UAS)作为获取非常高分辨率的航空影像进行植被测绘的平台具有巨大的潜力。但是,图像处理和分类技术需要适应使用低成本数码相机获得的图像。我们开发并评估了一种图像处理工作流程,其中包括分辨率合适的野外采样,特征选择和基于对象的图像分析的集成,目的是从5厘米分辨率的UAS图像镶嵌中对牧场植被进行分类。分类树分析用于确定最佳的光谱,空间和上下文特征。分割和分类规则集是在测试图上开发的,并应用于剩余的研究区域,因此总体分类精度在物种级别为78%,在结构组级别为81%。图像处理方法提供了一个路线图,可以从具有非常高的空间但光谱分辨率很低的UAS图像中获取高质量的植被分类产品。

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  • 来源
    《GIScience & remote sensing 》 |2011年第1期| p.4-23| 共20页
  • 作者单位

    Jornada Experimental Range, New Mexico State University,Las Cruces, New Mexico 88003;

    USDA-Agricultural Research Service, Jornada Experimental Range,Las Cruces, New Mexico 88003;

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  • 正文语种 eng
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