首页> 外文期刊>International Archives of the Photogrammetry, Remote Sensing and Spatial Information Sciences >HONEY CROP ESTIMATION FROM SPACE: DETECTION OF LARGE FLOWERING EVENTS IN WESTERN AUSTRALIAN FORESTS
【24h】

HONEY CROP ESTIMATION FROM SPACE: DETECTION OF LARGE FLOWERING EVENTS IN WESTERN AUSTRALIAN FORESTS

机译:从空间估算蜂蜜作物:检测西澳大利亚森林的大花期活动

获取原文
       

摘要

Recent studies have shown that in the spectral space there is often a better spectral separation between leaves and flowers and even between flowers of different species than between leaves of different species. In this study we assess the ability of satellite remotely sensed data to detect the flowering of Red Gum trees (Corymbia calophylla) in Western Australia, the state’s largest annual honey crop. Spectroradiometer measurements of flowers, leaves and groundcover from Red Gum forests were subjected to ANOVA analysis, which showed that flowers are spectrally different to their environment for 92?% of the wavelengths between 350?nm and 1800?nm. A more detailed assessment, using the JM Distance calculation, showed that the spectra can be reliably separated using 10?% of the wavelengths, with peak separation between 518?nm and 557?nm. To assess the ability of satellite-borne sensors to detect the presence of flowers, the spectroradiometer data were convolved with satellite instruments’ response curves to create synthetic remotely sensed datasets on which JM Distance analysis was performed. MODIS blue bands achieved a median JM Distance of greater than 1.9 and therefore should be able to detect the presence of flowers from the environment. Further assessment showed that the shortest wavelength bands for MODIS, VIIRS and Sentinel 3 all occur where the flower spectra have lower reflectance than their natural background. A sensitivity analysis of percentage flower cover for a pixel showed that the highest sensitivity was obtained by dividing the band closest to 520?nm by the shortest wavelength band for data from these three sources. The MODIS band 10/band 8 metric was tested for its ability to detect flowers in real-world data using 15 years of qualitative honey harvest data from one apiary site as a proxy for flower density. This test was successful as, while there was some overlap between good, moderate and poor years, the poor years could be separated from the other years with nearly 80?% accuracy.
机译:最近的研究表明,在光谱空间中,叶子和花朵之间,甚至不同物种的花朵之间通常比不同物种的叶子之间具有更好的光谱分离。在这项研究中,我们评估了卫星遥感数据检测西澳大利亚州最大的年度蜂蜜作物西澳大利亚州的红桉树(Corymbia calophylla)开花的能力。对红树胶森林的花朵,叶子和地被植物的光谱辐射仪进行了ANOVA分析,结果表明,在350?nm和1800?nm之间的92%的波长下,花朵与其环境在光谱上有所不同。使用JM距离计算进行的更详细的评估显示,可以使用10%的波长可靠地分离光谱,且峰分离在518?nm和557?nm之间。为了评估卫星传感器检测花朵的能力,将分光辐射仪的数据与卫星仪器的响应曲线进行卷积,以创建合成的遥感数据集,并在其上进行了JM距离分析。 MODIS蓝带的中值JM距离大于1.9,因此应该能够检测环境中花朵的存在。进一步的评估表明,MODIS,VIIRS和Sentinel 3的最短波段都出现在花朵光谱反射率低于自然背景的地方。对一个像素的花朵覆盖百分率的敏感性分析表明,对于这三个来源的数据,将最接近520?nm的波段除以最短的波段,可获得最高的敏感性。使用来自一个养蜂场的15年定性蜂蜜收获数据作为花朵密度的代理,测试了MODIS 10/8波段度量标准在现实世界数据中检测花朵的能力。该测试是成功的,因为在良好,中等和较差年份之间存在一些重叠,但是较差年份可以与其他年份分开,准确度接近80%。

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