首页> 外文会议>Conference on remote sensing for agriculture, ecosystems, and hydrology >Comparative canopy cover estimation using RGB images from UAV and ground
【24h】

Comparative canopy cover estimation using RGB images from UAV and ground

机译:使用来自无人机和地面的RGB图像进行比较冠层覆盖率估算

获取原文

摘要

Canopy cover is an important agronomical component for determining grain yield in cereals. Estimates of the canopy cover area of crops may contribute to improving the efficiency of crop management practices and breeding programs. Conventional high resolution RGB cameras can be used to acquire zenithal images taken at ground level or from a UAV (Unmanned Aerial Vehicle). Canopy-image segmentation is complicated in field conditions by numerous factors, including soil, shadows and unexpected objects. Spatial resolution is a key factor for estimating canopy cover area because low spatial resolution may introduce artifacts in the digital image. We propose a comparison of canopy cover segmentation using different spatial resolutions to test the scalability potential of these different techniques. Field trials were carried out during the 2015/2016 crop season in the Arazuri experimental station of INTIA in Navarra, Spain. Three barley genotypes, 10 different N fertilization regimens and three replicates were used in this study. This work uses zenithal RGB images taken from 1 m above the crop and images from the UAV were taken at the intervals of 2 s the during of the flight at distances of 25, 50 and 100 m. Images from the ground were taken at 1 m above the canopy. The CerealScanner plugin for FIJI (Fiji is Just ImageJ) was used to calculate the BreedPix RGB vegetation indices. The comparative results demonstrate the algorithm's effectiveness in scaling through high correlation values between images with different spatial resolutions taken from the UAV and images taken from the ground.
机译:冠层覆盖是决定谷物谷物产量的重要农艺成分。估计作物的树冠覆盖面积可能有助于提高作物管理实践和育种计划的效率。常规的高分辨率RGB相机可用于获取在地面或从UAV(无人机)拍摄的天顶图像。在田间条件下,冠层图像的分割由于许多因素而变得很复杂,包括土壤,阴影和意外对象。空间分辨率是估计树冠覆盖面积的关键因素,因为低空间分辨率可能会在数字图像中引入伪像。我们建议使用不同的空间分辨率对冠层覆盖进行分割,以测试这些不同技术的可扩展性潜力。在2015/2016作物季节,在西班牙纳瓦拉INTIA的Arazuri实验站进行了田间试验。这项研究使用了三种大麦基因型,10种不同的氮素施肥方案和三份重复样品。这项工作使用从作物上方1 m处拍摄的天顶RGB图像,并在飞行过程中以25 s,50和100 m的距离间隔2 s拍摄来自无人机的图像。从地面拍摄的图像是在树冠上方1 m处拍摄的。 FIJI的CerealScanner插件(Fiji是Just ImageJ)用于计算BreedPix RGB植被指数。比较结果证明了该算法在通过从无人机获取的具有不同空间分辨率的图像与从地面获取的图像之间的高相关值进行缩放方面的有效性。

著录项

相似文献

  • 外文文献
  • 中文文献
  • 专利
获取原文

客服邮箱:kefu@zhangqiaokeyan.com

京公网安备:11010802029741号 ICP备案号:京ICP备15016152号-6 六维联合信息科技 (北京) 有限公司©版权所有
  • 客服微信

  • 服务号