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首页> 外文期刊>Journal of spatial science >Hierarchical object-based classification of ultra-high-resolution digital mapping camera (DMC) imagery for rangeland mapping and assessment
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Hierarchical object-based classification of ultra-high-resolution digital mapping camera (DMC) imagery for rangeland mapping and assessment

机译:超高分辨率数字地图相机(DMC)图像的基于对象的分层分类,用于牧场地图和评估

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摘要

Ultra-high-resolution digital aerial imagery has great potential to complement or replace ground measurements of vegetation cover for rangeland monitoring and assessment. This research investigated object-based image analysis (OBIA) techniques for classifying vegetation in southwestern USA arid rangelands with 4 cm resolution digital aerial imagery. We obtained high r-square values for the regressions relating ground- to imagebased measures of percent cover (r-square values: 0.82-0.92). OBIA enabled us to automate the classification process and demonstrated potential for quantifying fine-scale land cover attributes with ultra-high-resolution imagery. This approach exhibits promise for nationwide application for monitoring grazing lands.
机译:超高分辨率数字航空影像具有巨大的潜力,可以补充或替代植被覆盖的地面测量,以用于牧场监测和评估。这项研究调查了基于对象的图像分析(OBIA)技术,以4 cm分辨率的数字航空影像对美国西南干旱草原的植被进行分类。对于基于地面到基于图像的百分比覆盖率度量的回归,我们获得了较高的r平方值(r平方值:0.82-0.92)。 OBIA使我们能够自动化分类过程,并展示了使用超高分辨率图像量化精细尺度土地覆盖属性的潜力。这种方法显示了在全国范围内监测放牧土地的前景。

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