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Rice crop monitoring using new generation Synthetic Aperture Radar (SAR) imagery

机译:使用新一代合成孔径雷达(SAR)图像监测水稻作物

摘要

[Abstract]: Rice cultivation systems in various countries of the world have been changing in recent years. These changes have been observed in the Mekong RiverudDelta, Vietnam, specifically in An Giang province. The changes in rice cultural practices have impacts on remote sensing methods developed for rice monitoring, inudparticular, methods using new generation radar data. The objectives of the study were a) to understand the relationship between radar backscatter coefficients andudselected parameters (e.g. plant age and biomass) of rice crops over an entire growth cycle, b) to develop algorithms for mapping rice cropping systems, and c) to develop a rice yield prediction model using time-series Envisat (Environmental Satellite) Advanced Synthetic Aperture Radar (ASAR) imagery.ududGround data collection and in situ measurement of rice crop parameters were conducted at 35 sampling fields in An Giang province, Mekong River Delta, Vietnam. The average values of the radar backscattering coefficients thatudcorresponded to the sampling fields were extracted from the ASAR Alternative Polarisation Precision (APP) images (C band, spatial resolution of 30 m, and swathudwidth of 100 km). The temporal rice backscatter behaviour during the cropping seasons, including Winter Spring (WS), Summer Autumn (SA), and Autumn Winter (AW), were analysed for HH (Horizontal transmit and Horizontal receive), VVud(Vertical transmit and Vertical receive), and polarisation ratio data. In addition, the relationships between rice biomass and backscattering coefficient of HH, VV, andudpolarisation ratio were established.ududThe methods were examined for rice identification and mapping in the study area by using ASAR APP and Wide Swath (WS) imagery. ASAR APP data were firstly used to determine the best method with high accuracy for rice delineation.udThen, the proposed method was applied for ASAR WS data (C band, 150 m spatial resolution, and 450 km swath width), covering the entire agricultural region of the An Giang province. Based on the discovered relationships between rice parameters and radar backscattering, a thresholding method applied for polarisation ratio and VV polarisation values of single-date ASAR APP data acquired in the middle of crop season was found to be the best method among various classification methods. Another threshold, i.e. the “normalised difference polarisation ratio (NDRa) index”, was formulated in this study for mapping the rice crops using ASAR APP image. The classification accuracy was assessed on the basis of the existing land use data and the published statistical data.ududBy using multiple regression analysis (rather than using an agrometeorological model found unsuitable for modern rice cultural practices), the correlation between backscattering coefficients of multi-date ASAR APP imagesudacquired during the crop season and the in situ measured yield was derived. The distribution maps of estimated rice yield were then produced based on that relationship. Consequently, rice production was finally estimated from these maps.ududThis study showed that the radar backscattering behaviour was much different from that of the traditional rice reported in previous studies, due to changes brought by modern cultural practices. HH, VV and HH/VV radar values were not significantly related to biomass (maximum r2 = 0.494) due to the effect of water management, plant density and structure. Using the polarisation ratio and VV data of rice fields during a long period of the rice season, the thresholding method based on empirical relationships demonstrated a relatively simple but effective tool to accurately derive the rice/non-rice classes. The results using Envisat ASAR APPuddata acquired at a single date have provided the highest accuracy (99%) of provincial planted rice areas. To generate map of the rice area planted using three-date or twodate ASAR WS data, the integrated method (based on the temporal variation of the radar response and thresholding) yielded the highest accuracies of 99% and 95%,udrespectively, at the provincial scale. This study developed a method to generate an accurate map of rice growing area before the end of crop season using single-date ASAR APP image taken in the middle of the rice cropping season. During this period, the difference between the HH and VV values is the highest. On the otherudhand, the predictive model based on multiple regression analysis between in situ measured yield and polarisation ratios attained good results (97% accuracy) and thusudproved to be a potential tool for rice yield prediction.ududThis study concluded that time-series Envisat ASAR imagery can generate accurate maps of rice planted areas. Since radar backscattering coefficients were found uncorrelated with plant biomass in the study area, the use of SAR imagery for agro-meteorological (crop growth) modelling for rice yield prediction will be less reliable. Conversely, the use of statistical modelling (regression approach) was found highly accurate to generate rice production forecasts. Further work is needed toudexamine and validate the rice mapping algorithm and statistical model-based method for rice yield estimation at other regions in the Mekong River Delta.ud
机译:[摘要]:近年来,世界各国的水稻种植系统都在发生变化。在越南的湄公河 udDelta,特别是在安江省,已经观察到这些变化。水稻文化习俗的变化对为水稻监测而开发的遥感方法,特别是利用新一代雷达数据的方法产生了影响。该研究的目的是:a)了解整个生长周期内水稻作物的雷达反向散射系数与非选择参数(例如,植物年龄和生物量)之间的关系; b)开发用于绘制水稻种植系统的算法,以及c)使用时间序列Envisat(环境卫星)高级合成孔径雷达(ASAR)图像开发水稻产量预测模型。 ud ud在安江省的35个采样场进行了稻米作物地面参数的数据收集和现场测量,越南湄公河三角洲。从ASAR备用极化精度(APP)图像(C波段,30 m的空间分辨率和100 km的条带超宽)中提取了与采样场不对应的雷达后向散射系数的平均值。分析了包括冬春季(WS),夏秋季(SA)和秋冬(AW)在内的作物季节中水稻的时空反向散射行为,分析了HH(水平传输和水平接收),VV ud(垂直传输和垂直)接收)和极化率数据。此外,建立了水稻生物量与HH,VV和超极化率的反向散射系数之间的关系。 ud ud使用ASAR APP和Wide Swath(WS)图像研究了该方法在研究区域中的稻米鉴定和制图方法。首先,使用ASAR APP数据确定高精度的水稻划界方法。 ud然后,将该方法应用于ASAR WS数据(C波段,150 m空间分辨率和450 km幅宽),覆盖整个农业领域。安江省的一个地区。基于发现的水稻参数与雷达后向散射之间的关系,发现适用于作物季节中期的单日ASAR APP数据极化率和VV极化值的阈值化方法是各种分类方法中的最佳方法。在这项研究中,制定了另一个阈值,即“归一化极化率(NDRa)指数”,以使用ASAR APP图像绘制水稻作物图。分类精度是根据现有土地利用数据和已发布的统计数据进行评估的。 ud ud通过多元回归分析(而不是使用被认为不适合现代水稻文化实践的农业气象学模型),确定了反向散射系数之间的相关性。在作物季节期间采集了多日期的ASAR APP图像,并得出了实地测得的产量。然后根据该关系得出估计水稻产量的分布图。因此,最终从这些地图估算了水稻的产量。 ud ud这项研究表明,由于现代文化习惯的改变,雷达的反向散射行为与先前研究中报道的传统水稻有很大不同。由于水管理,植物密度和结构的影响,HH,VV和HH / VV雷达值与生物量没有显着相关(最大r2 = 0.494)。利用稻米长期稻田的极化率和VV数据,基于经验关系的阈值方法证明了一种相对简单但有效的工具,可以准确地推导出稻米/非稻米的类别。使用单次获取的Envisat ASAR APP uddata的结果提供了省级种植稻米地区的最高准确性(99%)。为了生成使用三日或二日ASAR WS数据种植的水稻面积图,综合方法(基于雷达响应的时间变化和阈值)产生的最高准确度分别为99%和95%。省级规模。这项研究开发了一种方法,可以使用在稻作季节中期拍摄的单日ASAR APP图像在稻作季节结束之前生成准确的稻作区地图。在此期间,HH和VV值之间的差异最大。另一方面,基于实地测得的单产和极化比之间的多元回归分析的预测模型取得了良好的结果(97%的准确度),因此被证明是用于水稻单产预测的潜在工具。时间序列的Envisat ASAR图像可以生成水稻种植区的准确地图。由于在研究区域发现雷达后向散射系数与植物生物量不相关,因此将SAR图像用于农业气象(作物生长)模型以预测水稻产量将不太可靠。反过来,发现统计模型(回归方法)的使用非常准确,可以生成水稻产量预测。 udexamine和需要验证的稻作图算法和基于统计模型的方法在湄公河三角洲其他地区的水稻产量估算方面需要做进一步的工作。 ud

著录项

  • 作者

    Lam-Dao Nguyen;

  • 作者单位
  • 年度 2009
  • 总页数
  • 原文格式 PDF
  • 正文语种 {"code":"en","name":"English","id":9}
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