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Evaluation of Orthomosics and Digital Surface Models Derived from Aerial Imagery for Crop Type Mapping

机译:航空影像中用于作物类型映射的正射和数字表面模型的评估

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摘要

Orthomosics and digital surface models (DSM) derived from aerial imagery, acquired by consumer-grade cameras, have the potential for crop type mapping. In this study, a novel method was proposed for extracting the crop height from DSM and for evaluating the orthomosics and crop height for the identification of crop types (mainly corn, cotton, and sorghum). The crop height was extracted by subtracting the DSM derived during the crop growing season from that derived after the crops were harvested. Then, the crops were identified from four-band aerial imagery (blue, green, red, and near-infrared) and the crop height, using an object-based classification method and a maximum likelihood method. The results showed that the extracted crop height had a very high linear correlation with the field measured crop height, with an R-squared value of 0.98. For the object-based method, crops could be identified from the four-band airborne imagery and crop height, with an overall accuracy of 97.50% and a kappa coefficient of 0.95, which were 2.52% and 0.04 higher than those without crop height, respectively. When considering the maximum likelihood, crops could be mapped from the four-band airborne imagery and crop height with an overall accuracy of 78.52% and a kappa coefficient of 0.67, which were 2.63% and 0.04 higher than those without crop height, respectively.
机译:消费级相机获取的源自航空影像的正统学和数字表面模型(DSM)具有进行作物类型制图的潜力。在这项研究中,提出了一种新的方法,可以从DSM中提取作物高度,并评估正统和作物高度以鉴定作物类型(主要是玉米,棉花和高粱)。通过从收获农作物后得出的DSM中减去在作物生长期得到的DSM来提取作物高度。然后,使用基于对象的分类方法和最大似然方法从四波段航拍图像(蓝色,绿色,红色和近红外)和作物高度中识别出作物。结果表明,提取的作物高度与田间实测作物高度具有极高的线性相关性,R平方值为0.98。对于基于对象的方法,可以从四波段空中图像和作物高度中识别出作物,其总体准确度为97.50%,卡伯系数为0.95,分别比没有作物高度时高2.52%和0.04。 。当考虑最大可能性时,可以从四波段空中图像和作物高度绘制作物,总体精度为78.52%,卡伯系数为0.67,分别比没有作物高度的作物高2.63%和0.04。

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