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Monitoring Barley Growth Condition with Multi-scale Remote Sensing Images

机译:利用多尺度遥感图像监测大麦生长状况

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Crop growth condition monitoring at regional scale with remote sensing data has been widely implemented. The normal method is extracting biophysical and biochemical parameters, and then setting thresholds for these parameters to grade different levels of crop growth. In which, as the parameters inversion has scale effects based on different remote sensing observations with different spatial scales, it is difficult to setting the threshold at multi-spatial scales. To achieve space consistency for multi-scale crop growth monitoring results, we constructed two new vegetation indexes for crop growth monitoring, and then proposed a new crop growth grading system. We constructed two new crop growth indicators, i.e., Crop Growth Monitoring Index 1 (CGMI1), and Crop Growth Monitoring Index 2 (CGMI2), based on Leaf Area Index (LAI) and Canopy Chlorophyll Density (CCD). Compared with the existed crop growth indicators, these two new growth indicators could provide a much more comprehensive description of the characteristics of crop growth status from the aspects of crop structure and biochemical conditions. To achieve the space consistency of crop growth monitoring, we constructed a new crop growth grading system based on multiple spatial resolution satellite images. Firstly, we proposed a spatial adaptive threshold selection method by integrating with data histogram and Gaussian distribution theory for thresholds selection based on the statistical analysis of CGMI1 and CGMI2, then to strengthen robustness of threshold selecting on multi-scale. Moreover, we carried out research on crop growth monitoring and ranking based on the selected thresholds of CGMI1 and CGMI2 from the aspects of crop canopy morphology structure (large, medium, and small) and crop canopy biological activity (strong, middle, and weak). Taking barley as our research object, three multi-source and multi-scale remote sensing images are obtained during the jointing-booting stage of barley, which include Advanced Land Observing Satellite-Advanced Visible and Near Infrared Radiometer type 2 (ALOS-AVNIR2) image, Small Remote Sensing Satellite Constellations A Star-CCD2 (HJ 1A-CCD2) image, and the 8-day composite MODIS Surface Reflectance Product (MOD09A1). Experimental numerical results showed better space consistency for crop growth monitoring based on multiple spatial scale dataset (ALOS, HJ, and MODIS). The new proposed crop growth indicators CGMI1 and CGMI2 based on LAI and CCD to both consider the crop morphology structure and biological activity. And the new growth grading rules provide a spatial adaptive threshold selection algorithm to keep the space consistency when mapping different crop growth grading. Theoretical analysis and numerical experiments fully confirmed the new system, not only effectively enhance the crop growth evaluation, but also revealing better results on the space consistency with multi-scale data.
机译:利用遥感数据进行区域尺度的作物生长状况监测已得到广泛应用。通常的方法是提取生物物理和生化参数,然后为这些参数设置阈值,以对不同水平的作物生长进行分级。其中,由于基于不同空间尺度的不同遥感观测,参数反演具有尺度效应,因此难以在多空间尺度上设定阈值。为了实现多尺度作物生长监测结果的空间一致性,我们构建了两个新的作物生长监测植被指数,并提出了一个新的作物生长分级系统。基于叶面积指数(LAI)和冠层叶绿素密度(CCD),我们构建了两个新的作物生长指标,即作物生长监测指数1(CGMI1)和作物生长监测指数2(CGMI2)。与现有的作物生长指标相比,这两个新的生长指标可以从作物结构和生化条件方面更全面地描述作物生长状况的特征。为了实现作物生长监测的空间一致性,我们构建了基于多空间分辨率卫星图像的作物生长分级系统。首先,在对CGMI1和CGMI2进行统计分析的基础上,结合数据直方图和高斯分布理论,提出了一种空间自适应阈值选择方法,以增强多尺度阈值选择的鲁棒性。此外,我们还从作物冠层形态结构(大、中、小)和作物冠层生物活性(强、中、弱)三个方面,基于选定的CGMI1和CGMI2阈值,对作物生长监测和排序进行了研究。以大麦为研究对象,在大麦拔节孕穗期获得了三幅多源、多尺度的遥感图像,包括先进的陆地观测卫星先进的可见光和近红外辐射计2型(ALOS-AVNIR2)图像、小型遥感卫星星座A Star-CCD2(HJ 1A-CCD2)图像、,以及8天合成的MODIS表面反射率产品(MOD09A1)。实验结果表明,基于多空间尺度数据集(ALOS、HJ和MODIS)的作物生长监测具有较好的空间一致性。基于LAI和CCD的作物生长指标CGMI1和CGMI2都考虑了作物的形态结构和生物活性。新的生长分级规则提供了一种空间自适应阈值选择算法,以在映射不同作物生长分级时保持空间一致性。理论分析和数值实验充分验证了新系统的有效性,不仅有效地提高了作物生长评价的水平,而且在空间上与多尺度数据的一致性也得到了较好的结果。

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