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1.
邵芸  郭华东  范湘涛  刘浩 《遥感学报》2001,5(4):340-345
通过对肇庆试验区1996年和1997年获取的多时相、多模式雷达卫星(RADARSAT)数据分析,从图像上直接提取地物的后向散射系数,结合实地测量水稻的生长结构参数,建立了水稻生长模型,分析了不同生长周期(从80天到120-125天)4种类型水稻的时域散射特性。利用1997年4月至7月获取的7景标准模式雷达卫星数据,对试验区内三个县和两个行政区共5000km^2面积范围内的作物进行分类和水稻产量预估算,水稻类型分类及面积量算精度达91%。结果表明:利用雷达遥感数据进行水稻种植面积量算和估产需要水稻生长期间三个时相的数据,即插秧期、抽穗期、收割前期。若能够获得多参数雷达图像,可以用插秧期和收割前期的两个时相图像来代替上述的三个时相图像同样可以达到种植面积量算和估产的效果。这一结果充分说明多时相雷达卫星数据对我国南方水稻长势监测及估产具有明显优势和潜力。  相似文献   

2.
多时相Radarsat数据在广东肇庆地区稻田分类中的应用   总被引:11,自引:2,他引:11  
将1996年获取的4个时相的Radarsat图像用于广东肇庆地区的稻田分类试验,结果表明,多时相Radarsat数据对水稻类型的识别精度较高,而且稻田的轮作规律容易推测出来。本文系统地介绍了这一试验研究的最新进展,探讨了神经网络分类方法在SAR图像处理中的应用潜力和Radarsat数据在中国南方水稻监测中的最佳时相选择和有效分辨率问题。  相似文献   

3.
邵芸  廖静娟  范湘涛  刘浩 《遥感学报》2002,6(6):440-450
利用已有的微波后向散射模型模拟计算了水稻的雷达后向散射特性,分析了一个生长周期内水稻冠层与微波电磁波的相互作用。重点分析植物物理参数对其后向散射特征的影响及其随极化而变化的规律。以及这些特征在整个水稻生长周期中的变化规律。输入后向散射模型的数据包括通过田间测量获取的水稻物理参数。在地面测量的同时或准同时获取了中国广东肇庆试验区的多时相雷达卫星(RADARSAT)遥感图像。雷达卫星观测结果和后向散射模型模拟计算结果的比较分析表明:在水稻的生长过程中,水稻的后向散射特征随其物理参数的周期性变化而变化,并且在不同的极化状态具有不同的变化规律。这从理论上预示了多时相多极化雷达遥感技术进行水稻长势监测的潜力。  相似文献   

4.
泰国水稻种植面积月变化的遥感监测   总被引:14,自引:0,他引:14  
张峰  吴炳方 《遥感学报》2004,8(6):664-671
介绍了光学和微波遥感影像相结合进行泰国水稻种植面积监测方法。泰国雨季雨量充足 ,气温适合 ,同一时间耕地上水稻的物候多样 ,每月水稻种植面积都发生变化。利用旱季的TM影像 ,获得耕地信息。同时利用TM影像覆盖的雷达区域进行非耕地去除 ,进行非监督分类 ,提取反映水稻种植不同生长期的雷达影像后向反射系数特征 ,建立各种类型的分类模型 ,采用监督分类的方法对全景雷达数据进行水稻种植情况调查 ,并分别予以识别和统计 ,反映研究区水稻月种植情况。分类结果通过类别检验和面积量算检验进行精度评价和分析。  相似文献   

5.
森林类型遥感影像自动制图在森林资源调查中有重要应用,本文以广西壮族自治区金秀县为研究区,基于多时相的Landsat-8数据,采用面向对象的决策树分类方法,对研究区森林类型自动识别进行了研究,分类结果表明:1)单一时相影像森林分类精度中,生长季前期最高,生长季末期次之,非生长季最冷月最低;2)结合生长季与非生长季的多时相影像森林类型自动识别精度较单一时相影像显著提高。  相似文献   

6.
融合时间序列环境卫星数据与物候特征的水稻种植区提取   总被引:3,自引:0,他引:3  
柳文杰  曾永年  张猛 《遥感学报》2018,22(3):381-391
获取高精度的区域水稻种植面积对于农业规划、配置与决策具有重要意义。区域尺度的水稻面积获取依赖于高时空分辨率影像,但受卫星回访周期和气候影响,难以获取足够时间序列的高时空分辨率影像,从而影响水稻种植面积遥感提取的精度。为此,提出适应于中国南方多雨云天气地区,基于国产环境卫星(HJ-1A/1B)与MODIS融合数据的水稻种植面积提取的新方法。以洞庭湖区为实验区,利用STARFM模型融合环境卫星NDVI数据与MODIS13Q1数据,获取时间序列的环境卫星NDVI数据,利用水稻关键期的NDVI数据结合物候特征参数对水稻种植区域进行提取。结果表明,该方法能有效提取区域水稻种植的面积,水稻种植面积提取的总体精度与Kappa系数分别达到91.71%与0.9024,分类结果明显优于仅采用多光谱影像或NDVI数据。该研究为中国南方多雨云天气地区水稻种植面积提取提供了有效的方法。  相似文献   

7.
为有效了解柑橘种植结构及科学估产,制定合理政策,故快速大面积准确获取柑橘果园面积至关重要.该文针对南方丘陵、山区柑橘的种植特点,利用多时相高空间分辨率GF-1 WFV遥感数据,结合柑橘生长过程中的物候特征,分析比较柑橘与其他地物类在光谱特征、植被指数及纹理特征的变化差异,构建了融合柑橘物候和林地纹理特征的模糊分类与最邻近分类相结合的提取方法,并以江西省寻乌县为例,利用该方法提取了江西寻乌县的柑橘种植面积.结果 表明,GF-1WFV数据是复杂地形下提取柑橘作物的潜力数据源,该提取思路可为大范围内不同地区了解柑橘种植情况,进行柑橘长势监测和产量估测提供技术参考.  相似文献   

8.
卧龙自然保护区(世界自然遗产地)是大熊猫最主要的栖息地之一。结合雷达遥感全天时、全天候观测优势,以及森林覆盖对栖息地生境评价的重要性,开展多时相、双极化雷达数据森林精细成图研究就显得尤为重要。本研究首先对雷达数据进行辐射地形校正;然后选用5个时相ALOS PALSAR数据,采用支持向量机(support vector machine,SVM)方法进行森林精细成图。研究选取了5个多时相、双极化典型特征信息参与初始训练和分类,即HH_m,HV_m,TSD,HH_m-HV_m和HH_m/HV_m;接着通过对不同信息组合分类精度的试验与对比,获取了最优特征组合HH_m,HV_m,TSD,HH_m-HV_m。对应分类总体精度、森林及非森林类别用户精度分别为86.90%,82.34%和92.83%,显著优于单时相单极化数据分类结果(分类总体精度55.47%)。研究结果验证了多时相、双极化雷达遥感数据在自然遗产地森林精细成图中的有效性,并揭示了雷达遥感在多云多雨地区生境监测与评价中的潜力与应用价值。  相似文献   

9.
本文报道了运用图像处理技术,分别计算河北省南皮县试区两个不同时相TM与SPOT图像的亮度指数和垂直植被指数,进而求算变化向量、自动输出变化分类图的试验研究结果。经实地对22块变化图斑进行检验,都准确无误,表明从不同时相的卫星图像提取土地利用变化信息,分析耕地消长及大宗作物种植面积波动是完全可能的,有广阔的应用前景。  相似文献   

10.
以三江平原地区为研究区,基于1980年代、1990年代、2000年代和2010年代陆地资源卫星(Landsat)遥感影像数据,根据水稻的生长周期特征计算指数信息,利用物候算法和逻辑运算,从时间和空间上揭示1980-2018年水田分布格局变化规律,总结得出结论:人口增长、气候变化、国家政策和科技进步是促进水田面积扩张的主要因素.Google earth engine云平台和物候算法相结合的水田提取方法,既迅速有效,又可充分发挥Landsat数据的时间分辨率特征,同时结合多时相的自动分类弥补单一时相解译方法的不客观性.  相似文献   

11.
Considering the requirement of multiple pre-harvest crop forecasts, the concept of Forecasting Agricultural output using Space, Agrometeorology and Land based observations (FASAL) has been formulated. Development of procedure and demonstration of this technique for four in-season forecasts for kharif rice has been carried out as a pilot study in Orissa State since 1998. As the availability of cloud-free optical remote sensing data during kharif season is very poor for Orissa state, multi-date RADARSAT SCANSAR data were used for acreage estimation of kharif rice. Meteorological models have been developed for early assessment of acreage and prediction of yield at mid and late crop growth season. Four in-season forecasts were made during four kharif seasons (1998-2001); the first forecast of zone level rice acreage at the beginning of kharif crop season using meteorological models, second forecast of district level acreage at mid growth season using two-date RADARSAT SCANSAR data and yield using meteorological models, third forecast at late growth season of district level acreage using three-date RADARSAT SCANSAR data and yield using meteorological models and revised forecast incorporating field observations at maturity. The results of multiple forecasts have shown rice acreage estimation and yield prediction with deviation up to 14 and 11 per cent respectively. This study has demonstrated the potential of FASAL concept to provide inseason multiple forecasts using data of remote sensing, meteorology and land based observations.  相似文献   

12.
Pre-harvest crop production forecast has been successfully provided by remote sensing technique. However, the probability to get cloud-free optical remote sensing data during kharif season is poor. Microwave data having the capability to penetrate cloud is used in the absence of cloud free optical remote sensing data. Yield models in broad band frequency range are in development stage. Meteorological yield models are developed and predicted yield is combined with area estimated by remote sensing data to provide rice production forecast. This paper describes the methodology adopted for improving the predictability of rice yield before harvest of the crop in Bihar province by taking into consideration meteorological parameters during its growth cycle upto October. Models developed using fortnightly meteorological data have been found to give reasonably fair indications of expected yield of rice in advance of harvest. The yield predictions have been made based on meteorological data and effective rainfall based on water requirement calculations representing a group of districts under similar agro-climatic zones, which could be further improved by incorporating meteorological data of individual districts within each group.  相似文献   

13.
以HJ1卫星数据为实验数据,通过运用遥感处理技术、地理信息技术,完成实验区遥感反演作物长势指标体系研究,并将农情监测数据进行web发布。为高分数据迅速投入使用和生产提供理论基础与实现途径,同时为农作物估产的运行化遥感提供了标准、快速的农情监测方法。  相似文献   

14.
Large scale adoption of input intensive rice–wheat cropping system in the centrally located Jalandhar district of Indian Punjab has led to over-exploitation of ground water resources, intensive use of chemical fertilizers and deterioration of soil health. To overcome these shortfalls, in the present study, agricultural area diversification plan has been generated from agricultural area and crop rotation maps derived from remote sensing data (IRS P6-AWiFS and RADARSAT ScanSAR) along with few agro-physical parameters in GIS environment. Cropping system indices (area diversity, multiple cropping and cultivated land utilization) were also worked out from remote sensing data .Analysis of remote sensing data (2004–05) revealed that rice and wheat individually remained the dominant crops, occupy 57.8% and 64.9% of total agricultural area (TAA), respectively. Therefore, in the diversified plan, it is suggested that at least 39% of the current 40% TAA under rice–wheat rotation should be replaced by other low water requiring, high value and soil enriching crops, particularly in coarse textured alluvial plain having good quality ground water zones with low annual rainfall(<700 mm). This will reduce water requirement to the tune of 15,660 cm depth while stabilizing the production and profitability by crop area diversification without further degradation of natural resources.  相似文献   

15.
含水含盐土壤的微波介电特性分析研究   总被引:13,自引:0,他引:13  
邵芸  吕远  董庆  韩春明 《遥感学报》2002,6(6):416-423
用微波网络分析仪测量了实验室制备的各种不同含水量,含盐量的土壤样品的复介电常数,研究了介电常数的实部和虚部与频率、盐度、含水量的关系。研究表明:频率、盐度对土壤介电常数实部的影响很小;对于某一特定土壤,其介电常数的实部由土壤的含水量决定;在较低频率范围内(f<2GHz),虚部随着频率的增大而迅速下降,高频部分则趋向于一定值,波长较长的波段,如P波段或L波段对土壤含盐程度具有更高的敏感性,含盐量对虚部在较低频范围(f<5GHz)影响很大。同时,采集了内蒙古吉兰泰盐湖区的土壤样品,并测量了其复介电常数,与同步过顶的RADARSAT图像进行了相关分析。分析结果表明雷达图像记录的后向散射强度与含盐土壤复介电常数实部的相关系数为0.23,与虚部的相关系数为0.66,即雷达图像观测的含盐含水士壤的后向散射强度与土壤的含盐量相关性较高。这为利用微波遥感进行土壤盐碱化程度监测,提供了可能和实验依据。  相似文献   

16.
The Canadian satellite RADARSAT launched in November 1995 acquires C-band HH polarisation Synthetic Aperture Radar (SAR) data in various incident angles and spatial resolutions. In this study, the Standard Beam S7 SAR data with 45°–49° incidence angle has been used to discriminate rice and potato crops grown in the Gangetic plains of West Bengal state. Four-date data acquired in the 24-day repeat cycle between January 2 and March 15, 1997 was used to study the temporal backscatter characteristics of these crops in relation to the growth stages. Two, three and four-date data were used to classify the crops. The results show that the backscatter was the lowest during puddling of rice fields and increased as the crop growth progressed. The backscatter during this period changed from −18 dB to −8 dB. This temporal behaviour was similar to that observed in case of ERS-SAR data. The classification accuracy of rice areas was 94% using four-date data. Two-date data, one corresponding to pre-field preparation and the other corresponding to transplantation stage, resulted in 92% accuracy. The last observation is of particular interest as one may estimate the crop area as early as within 20–30 days of transplantation. Such an early estimate is not feasible using optical remote sensing data or ERS-SAR data. The backscatter of potato crop varied from −9 dB to −6 dB during the growth phase and showed large variations during early vegetative stage. Two-date data, one acquired during 40–45 days of planting and another at maturing stage, resulted in 93% classification accuracy for potato. All other combinations of two-date data resulted in less than 90% classification accuracy for potato.  相似文献   

17.
水稻生长期微波介电特性研究   总被引:4,自引:0,他引:4  
利用植被介电常数的Debye-Cole双频色散模型,模拟计算了广东肇庆水稻试验区1996年晚稻和1997年早稻人插秧期、发蘖期、扬花期到成熟期各生长期的介电常数值,并根据计算结果,探讨了电磁波频率、水稻含水量、温度、含盐度及水稻冠层干体密度对介电常数的影响。其中,不同生长期水稻的介电常数各不相同,不同水稻类型(早稻和晚稻),介电常数的变化趋势不尽相同。电磁波频率、水稻含水量、温度和水稻冠层干体密度均对介电常数有不同程度的影响,而含盐度却对介电常数影响不大。  相似文献   

18.
Non-destructive and accurate estimation of crop biomass is crucial for the quantitative diagnosis of growth status and timely prediction of grain yield. As an active remote sensing technique, terrestrial laser scanning (TLS) has become increasingly available in crop monitoring for its advantages in recording structural properties. Some researchers have attempted to use TLS data in the estimation of crop aboveground biomass, but only for part of the growing season. Previous studies rarely investigated the estimation of biomass for individual organs, such as the panicles in rice canopies, which led to the poor understanding of TLS technology in monitoring biomass partitioning among organs. The objective of this study was to investigate the potential of TLS in estimating the biomass for individual organs and aboveground biomass of rice and to examine the feasibility of developing universal models for the entire growing season. The field plots experiments were conducted in 2017 and 2018 and involved different nitrogen (N) rates, planting techniques and rice varieties. Three regression approaches, stepwise multiple linear regression (SMLR), random forest regression (RF) and linear mixed-effects (LME) modeling, were evaluated in estimating biomass with extensive TLS and biomass data collected at multiple phenological stages of rice growth across the entire season. The models were calibrated with the 2017 dataset and validated independently with the 2018 dataset.The results demonstrated that growth stage in LME modeling was selected as the most significant random effect on rice growth among the three candidates, which were rice variety, growth stage and planting technique. The LME models grouped by growth stage exhibited higher validation accuracies for all biomass variables over the entire season to varying degrees than SMLR models and RF models. The most pronounced improvement with a LME model was obtained for panicle biomass, with an increase of 0.74 in R2 (LME: R2 = 0.90, SMLR: R2 = 0.16) and a decrease of 1.15 t/ha in RMSE (LME: RMSE =0.79 t/ha, SMLR: RMSE =2.94 t/ha). Compared to SMLR and RF, LME modeling yielded similar estimation accuracies of aboveground biomass for pre-heading stages, but significantly higher accuracies for post-heading stages (LME: R2 = 0.63, RMSE =2.27 t/ha; SMLR: R2 = 0.42, RMSE =2.42 t/ha; RF: R2 = 0.57, RMSE =2.80 t/ha). These findings implied that SMLR was only suitable for the estimation of biomass at pre-heading stages and LME modeling performed remarkably well across all growth stages, especially for post-heading. The results suggest coupling TLS with LME modeling is a promising approach to monitoring rice biomass at post-heading stages at high accuracy and to overcoming the saturation of canopy reflectance signals encountered in optical remote sensing. It also has great potential in the monitoring of other crops in cloud-cover conditions and the instantaneous prediction of grain yield any time before harvest.  相似文献   

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