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1.
MODIS NDVI与MODIS EVI的比较分析   总被引:11,自引:0,他引:11  
MODIS NDVI与MODIS EVI是目前应用比较广泛的植被指数,MODIS EVI是对NDVI的发展和延续,从植被指数计算公式和合成方法两方面做了改进。具体表现在:避免了MODIS NDVI在植被高覆盖区易饱和的问题,考虑了土壤背景对植被指数的影响,对气溶胶等残留做了进一步校正,采用BRDF/CV-MVC合成方法保证了合成采用最佳像元。EVI时间序列相较于NDVI时间序列季节性更明显,能够更好地反映高植被覆盖区的季节性变化特征,并且很少有突降现象,时间序列曲线较平滑。EVI的这些优势为高覆盖植被物候特征的季节性变化监测提供了新的思路。  相似文献   

2.
植被指数是卫星遥感领域中用来表征地表植被覆盖,生长状况的一个简单有效的度量参数。通常由于植被光谱受到植被本身、环境条件、大气状况等多种因素的影响,植被指数往往具有明显的区域性和时效性。微波遥感具有全天时、全天候的工作能力,利用被动微波遥感观测数据建立植被指数,将能够弥补现有植被指数的局限性。2009年发射的土壤水分和海洋盐度(SMOS)卫星首次采用L波段多角度微波观测。通过双极化多角度微波辐射信号组合,可以最小化地表辐射的影响,从而发展了仅与植被参数有关的微波植被指数。这种方法为SMOS监测全球植被信息提供新的机会。  相似文献   

3.
通过利用2005年黄土高原塬区夏季地表过程野外观测试验期间收集的地面观测的植被含水量、中分辨率影像光谱仪(Medium Resolution Imaging Spectrometer,MERIS)和高级沿轨迹扫描辐射计(Advanced Along-Track Scanning Radiometer,AATSR)卫星遥感资料,分别对归一化差值植被指数(Normalized Different Vegetation Index)和归一化差值水分指数(NormalizedDifferent Water Index)与植被含水量(Vegetation water content)变化关系进行了分析比较,得到了两种不同的植被指数在作物生长背景影响下的异同。并分别利用MERIS的观测资料计算了NDVI,利用AATSR观测资料计算了NDWI,通过分析得出:随着作物的生长或生物量的增加,归一化差值植被指数变化趋于饱和,而归一化差值水分指数仍然继续增加。进一步通过同步地面野外观测植被含水量与卫星遥感观测资料的对比,建立了归一化差值植被指数、归一化差值水分指数和实际野外测量植被含水量的关系,并且得到由两种植被指数反演植被含水量的方法和地面观测之间的误差分别为1.030 64 kg·m-2和0.940 45 kg·m-2。最后通过分析后总结出,利用归一化差值水分指数来反演黄土高原塬区夏季玉米冠层的含水量优于利用归一化差值植被指数。  相似文献   

4.
生长于不同土壤类型背景条件下的相同长势小麦农田遥感像元尺度的归一化植被指数(NDVI)有很大差异,也一直困扰着利用NDVI进行小麦长势有效监测和精确评价。拟定小麦冠层光谱不变即小麦冠层NDVI为一常数条件下,选择反射率差异较大的我国9种典型土壤类型作为土壤背景,由小麦冠层和土壤背景的不同线性混合比模拟计算遥感像元尺度上的植被覆盖度,研究不同土壤类型背景对小麦农田NDVI信息的影响。研究结果表明:同一土壤类型背景条件下,随着植被覆盖度逐渐增加,小麦农田NDVI总体表现为增长的趋势,反之亦然;不同类型土壤背景对小麦农田NDVI造成很大差异,当植被覆盖度大于25%时,随着植被覆盖度的增加对小麦农田NDVI影响差异性逐渐减小;不同类型土壤背景也导致小麦农田NDVI对植被覆盖度的敏感性有明显差异,较低反射率土壤背景条件下的敏感性随着植被覆盖度增长呈现曲线下降的趋势,较高反射率土壤背景条件下敏感性随着植被覆盖度的增长而单调增加,为不同类型土壤背景的各小麦生长期遥感NDVI信息估算频次选择提供依据。  相似文献   

5.
基于时序定量遥感的冬小麦长势监测与估产研究   总被引:1,自引:0,他引:1  
遥感技术是高效、客观监测农作物生长状态的重要手段,对农业生产管理具有重要意义。以安徽龙亢农场为研究区,收集了中高分辨率多源卫星遥感数据并进行了定量化处理,构建了冬小麦叶绿素密度、叶面积指数的遥感反演模型,生产了长时序冬小麦植被参数卫星遥感产品。通过监测冬小麦叶绿素密度、叶面积指数的时序变化规律,分析了不同品种冬小麦的长势情况,发现高产量小麦在越冬期长势显著优于低产量小麦。在此基础上,构建了基于归一化植被指数(NDVI)的冬小麦估产模型,结果表明:利用小麦抽穗期和乳熟期的累计NDVI值可以实现产量的精确估算,据此绘制了龙亢农场2017年冬小麦产量遥感估算地图,产量分布与实际种植情况吻合良好。实现了基于时序卫星定量遥感数据的冬小麦长势监测和产量预测,为区域范围内农作物长势监测提供了一种有效途径。  相似文献   

6.
西沙群岛位于热带,常年多云,在光学卫星数据获取时易受天气影响导致缺失,使得地表动态监测困难。为解决这一问题,探讨无人机低空平台对西沙群岛植被的监测能力,选取大疆精灵4多光谱无人机,通过5个多光谱波段提取4项植被指数,包括归一化差值植被指数(NDVI)、叶绿素指数(GCI)、绿色归一化植被指数(GNDVI)以及归一化绿红差值指数(NGRDI),评估了2020年5月西沙群岛北岛的植被生长状况,并结合关键气象参数以及Worldview2卫星光学影像对比分析了2020年5月和2018年5月北岛植被生长变化及其潜在归因。研究结果表明:2020年5月北岛平均NDVI、GCI、GNDVI和NGRDI别为0.30、0.84、0.26和0.05,反映出植被覆盖度较低,可能存在枯黄现象,与地面监测结果一致;2020年人工管理植被区和自然生长植被区各项指数差异由2018年的-23%—15%增加到15%—40%,表明2020年自然生长植被长势显著差于人工管理植被,反映出较强的环境胁迫;气象数据显示2020年4月—5月该地区日平均温度较常年同期升高、累计降水量减少、平均风速增大同时增加了土壤水分亏缺,可能是引起...  相似文献   

7.
利用"北京一号"小卫星数据,以密云水库流域为研究区域,采用归一化植被指数(NDVI)像元二分法,进行地面植被覆盖度估算研究,并对估算结果进行实地检验和分析,其估算值与实际值之间的相关性较高 (86%).结果表明,利用"北京一号"小卫星数据进行植被覆盖度估算及监测应用是可行的.  相似文献   

8.
基于时序定量遥感的冬小麦长势监测与估产研究   总被引:1,自引:1,他引:1       下载免费PDF全文
遥感技术是高效、客观监测农作物生长状态的重要手段,对农业生产管理具有重要意义。以安徽龙亢农场为研究区,收集了中高分辨率多源卫星遥感数据并进行了定量化处理,构建了冬小麦叶绿素密度、叶面积指数的遥感反演模型,生产了长时序冬小麦植被参数卫星遥感产品。通过监测冬小麦叶绿素密度、叶面积指数的时序变化规律,分析了不同品种冬小麦的长势情况,发现高产量小麦在越冬期长势显著优于低产量小麦。在此基础上,构建了基于归一化植被指数(NDVI)的冬小麦估产模型,结果表明:利用小麦抽穗期和乳熟期的累计NDVI值可以实现产量的精确估算,据此绘制了龙亢农场2017年冬小麦产量遥感估算地图,产量分布与实际种植情况吻合良好。实现了基于时序卫星定量遥感数据的冬小麦长势监测和产量预测,为区域范围内农作物长势监测提供了一种有效途径。  相似文献   

9.
基于时序定量遥感的冬小麦长势监测与估产研究   总被引:1,自引:0,他引:1  
遥感技术是高效、客观监测农作物生长状态的重要手段,对农业生产管理具有重要意义。以安徽龙亢农场为研究区,收集了中高分辨率多源卫星遥感数据并进行了定量化处理,构建了冬小麦叶绿素密度、叶面积指数的遥感反演模型,生产了长时序冬小麦植被参数卫星遥感产品。通过监测冬小麦叶绿素密度、叶面积指数的时序变化规律,分析了不同品种冬小麦的长势情况,发现高产量小麦在越冬期长势显著优于低产量小麦。在此基础上,构建了基于归一化植被指数(NDVI)的冬小麦估产模型,结果表明:利用小麦抽穗期和乳熟期的累计NDVI值可以实现产量的精确估算,据此绘制了龙亢农场2017年冬小麦产量遥感估算地图,产量分布与实际种植情况吻合良好。实现了基于时序卫星定量遥感数据的冬小麦长势监测和产量预测,为区域范围内农作物长势监测提供了一种有效途径。  相似文献   

10.
植被冠层归一化植被指数(normalized difference vegetation index,NDVI)由于不同土壤背景的混入干扰,导致利用NDVI信息对作物长势监测等应用的有效性降低。以安徽省来安县小麦农田为研究区,以2种土壤类型(水稻土和黄褐土)背景下拔节期冬小麦为研究对象,采用实测小麦冠层光谱及叶面积指数(leaf area index,LAI)数据,利用传统的照相法求算植被覆盖度,基于混合光谱理论,提出2种NDVI土壤背景影响去除模型(NDVIT),对模型进行对比验证。研究结果表明:2种模型均可去除一定的土壤背景影响;采用信噪比的分析方法定量研究2种模型抵抗土壤噪声影响的能力,分析发现NDVI1T提取植被信息抗土壤噪声能力更佳;2种土壤背景影响去除模型和NDVI的拟合关系良好,相关关系R~2均达到0.9以上。  相似文献   

11.
不同辐射校正水平下水稻植被指数监测对比分析   总被引:3,自引:0,他引:3  
归一化植被指数(NDVI)是反映植被长势特征的重要参数之一。获取准确的植被指数对揭示植被长势变化等定量遥感分析至关重要。基于不同辐射校正水平(辐射定标与大气校正),分别利用Landsat ETM+影像的灰度值(DN)、表观(TOA)反射率与地表(Surface)反射率计算相应NDVI,并根据鄱阳湖区野外定点观测数据,从农田、景观尺度揭示不同辐射校正水平下水稻生育期内NDVI动态变化特征。结果表明,根据DN、TOA反射率与Surface反射率提取的NDVI基本上可以反映出年内水稻不同熟制种植信息变化特征,即移栽期NDVI处于谷值,孕穗抽穗期NDVI达到峰值。但相应NDVI逐渐增加,且波动范围逐渐增大。就不同熟制水稻生育期而言,根据DN值计算并构建的NDVI曲线差异较小,而根据TOA反射率与Surface反射率反演的NDVI曲线差异明显。在植被定量遥感研究中,通过大气校正反演地表反射率计算植被指数相对客观准确。  相似文献   

12.
Monitoring desertification and land degradation over sub-Saharan Africa   总被引:1,自引:0,他引:1  
A desertification monitoring system is developed that uses four indicators derived using continental-scale remotely sensed data: vegetation cover, rain use efficiency (RUE), surface run-off and soil erosion. These indicators were calculated on a dekadal time step for 1996. Vegetation cover was estimated using the Normalized Difference Vegetation Index (NDVI). The estimation of RUE also employed NDVI and, in addition, rainfall derived from Meteosat cold cloud duration data. Surface run-off was modelled using the Soil Conservation Service (SCS) model parametrized using the rainfall estimates, vegetation cover, land cover, and digital soil maps. Soil erosion, one of the most indicative parameters of the desertification process, was estimated using a model parametrized by overland flow, vegetation cover, the digital soil maps and a digital elevation model (DEM). The four indicators were then combined to highlight the areas with the greatest degradation susceptibility. The system has potential for near-real time monitoring and application of the methodology to the remote sensing data archives would allow both spatial and temporal trends in degradation to be determined.  相似文献   

13.
基于MODIS温度和植被指数产品的山东省土地覆盖变化研究   总被引:1,自引:0,他引:1  
地表温度(LST)与归一化植被指数(NDVI)构成的NDVI-Ts特征空间具有丰富的地学和生态学内涵。MODIS数据因其优越的时间分辨率、波谱分辨率,已被广泛地运用于各个领域。在本研究中,运用遥感技术和GIS技术相结合的手段,利用NASA提供的MODIS温度产品和NDVI产品,以山东省土地利用图、山东省TM遥感影像图和基于3S技术的山东省森林资源调查项目的外业调查数据为参考和评价标准,以NDVI-Ts时间序列为指标,在进行土地覆盖分类的基础上,分析比较了山东省土地覆盖从2000年到2006年的变化情况。研究结果表明,利用MODIS产品将NDVI-Ts时间序列作为分类特征,在较大尺度范围的土地覆盖分类中具有较高的分类精度,有利于对土地覆盖变化进行动态监测。  相似文献   

14.
近20多年来赣州地区稀土矿区遥感动态监测   总被引:1,自引:0,他引:1       下载免费PDF全文
稀土资源是现代科技所需的重要资源,由于其有很高的经济价值,稀土资源的开采活动越来越频繁,过度开采现象严重,对稀土矿区的实时监控成为保护环境资源的重要环节。遥感技术在监测土地利用变化方面已经有了完善的技术方法。相较于普遍使用的Landsat-TM/ETM+数据,我国研发的HJ卫星(中国环境与灾害监测预报小卫星)数据具有更短的重访周期,能够对稀土矿的开采进行更加有效的检测。通过结合Landsat-TM/ETM+与HJ-1/CCD数据,根据矿区植被覆盖度的变化及时监测稀土矿区活动情况,对江西定南地区20a来稀土矿区开采变化情况进行监测,并提出保护建议,为实现矿产资源的可持续发展提供理论依据。  相似文献   

15.
The normalized difference vegetation index (NDVI) is the most widely used vegetation index for retrieval of vegetation canopy biophysical properties. Several studies have investigated the spatial scale dependencies of NDVI and the relationship between NDVI and fractional vegetation cover, but without any consensus on the two issues. The objectives of this paper are to analyze the spatial scale dependencies of NDVI and to analyze the relationship between NDVI and fractional vegetation cover at different resolutions based on linear spectral mixing models. Our results show strong spatial scale dependencies of NDVI over heterogeneous surfaces, indicating that NDVI values at different resolutions may not be comparable. The nonlinearity of NDVI over partially vegetated surfaces becomes prominent with darker soil backgrounds and with presence of shadow. Thus, the NDVI may not be suitable to infer vegetation fraction because of its nonlinearity and scale effects. We found that the scaled difference vegetation index (SDVI), a scale-invariant index based on linear spectral mixing of red and near-infrared reflectances, is a more suitable and robust approach for retrieval of vegetation fraction with remote sensing data, particularly over heterogeneous surfaces. The proposed method was validated with experimental field data, but further validation at the satellite level would be needed.  相似文献   

16.
A remote sensing analysis of the temporal changes of vegetation cover in the arid and semi-arid regions of the Judean Desert and Judean Mountains was carried out in order to reveal the controlling factor of the environmental system. Assessment of ditTerent combinations of temperal changes in the region using GIS techniques indicated that it is possible to differentiate between two major patterns of vegetation cover change. The classification of the region according to these patterns has produced a map that is highly correlated to the soil map of the region, thus suggesting that the soil is an important environmental controlling factor in the region. From the remote sensing point of view, the patterns of vegetation cover change may serve as indicators of soil types in similar arid and semi-arid environments.  相似文献   

17.
基于多时相Landsat8 OLI影像的作物种植结构提取   总被引:6,自引:0,他引:6  
针对基于多时相遥感影像、多种特征量提取多种作物种植结构在我国研究较少的现状,利用多时相Landsat8OLI影像数据,根据温宿县不同作物的农事历,通过分析主要地物的光谱特征和归一化植被指数的时间变化信息,构建不同作物种植结构提取的决策树模型,实现了对温宿县多种作物种植结构信息的提取。结果表明:1水稻的最佳识别依据是5月20日影像的近红外波段和7月23日影像的NDVI值;棉花和春玉米的最佳识别依据是5月20日~9月9日影像的NDVI变化值;冬小麦—夏玉米和林果的最佳识别依据是5月20日~7月23日影像的NDVI变化值;2与单时相监督分类相比,多时相决策树法对多种作物种植结构的提取效果更理想,总体精度提高了7.90%,Kappa系数提高了0.10;3Landsat8OLI影像数据分辨率高、成本低、获取方便,是农作物遥感的良好数据源。  相似文献   

18.
Recent technological advances in remote sensing have shown that soil moisture can be measured by microwave remote sensing under some topographic and vegetation cover conditions. However, current microwave technology limits the spatial resolution of soil moisture data. It has been found that the Normalized Difference Vegetation Index (NDVI) and Land Surface Temperature (LST) are related to surface soil moisture; therefore, a relationship between ground observed soil moisture and satellite NDVI and LST products can be developed. Three years of 1 km NDVI and LST products from the Moderate Resolution Imaging Spectroradiometer (MODIS) have been combined with ground measured soil moisture to determine regression relationships at a 1 km scale. Results show that MODIS NDVI and LST are strongly correlated with the ground measured soil moisture, and regression relationships are land cover and soil type dependent. These regression relationships can be used to generate soil moisture estimates at moderate resolution for study area.  相似文献   

19.
Remote sensing, in combination with multivariate geostatistical methods, has the potential to improve the prediction of soil properties at landscape scales. In the Everglades region, and particularly in Water Conservation Area 2A (WCA-2A), phosphorus enrichment has drawn a lot of attention and has led to an extensive documentation of different aspects of the degradation of the system. This study presents a hybrid geospatial modeling approach to predict soil total phosphorus (TP) using remotely-sensed data and ancillary landscape properties as supporting variables. Two remote sensors, Landsat 7 Enhanced Thematic Mapper (ETM)+ and Advanced Spaceborne Thermal Emission and Reflection Radiometer (ASTER), were used to investigate relationships between spectral data and indices and soil TP. A variation of a vegetation index (Normalized Difference Vegetation Index - NDVI green) was found to be the most effective in predicting floc TP values, due to its capacity to capture small variations in chlorophyll a that are associated to TP levels in periphyton, especially in aquatic/non-impacted areas. On the other hand, NDVI, a more traditionally used vegetation index, was still a good indicator of TP variability, particularly in the soil surface layer, due to its stronger relationship with impacted areas dominated by cattail (Typha domingensis Pers.).Findings from this study indicate that: a) remote sensing can play an important role in optimizing monitoring of environmental variables, particularly below-ground properties of floc and soils; b) because of limitations about the numbers and frequency of soil samples that can be taken, the combination of remote sensing and geostatistics could represent a non-invasive and cost-effective method to monitor soil nutrient status in complex wetland systems, and c) variations of traditional remote sensing indices such as NDVI can be used to better capture the spatial variability associated with soil and periphyton TP.  相似文献   

20.
An inversion procedure is presented for estimating surface soil water content (as surface moisture availability, Mo ), fractional vegetation cover ( Fr ), and the instantaneous surface energy fluxes, using remote multispectral measurements made from an aircraft. The remotely derived values of these fluxes and the soil water content are compared with field measurements from two intensive field measurement programs FIFE and MONSOON '90. The measurements from the NS001 multispectral radiometer were reduced to fractional vegetation cover, surface soil water content (surface moisture availability), and turbulent energy fluxes, with the application of a soil vegetation atmosphere transfer (SVAT) model. A further step in the inversion process involved 'stretching' the SVAT results between pre-determined boundaries of the distribution of normalized difference vegetation index (NDVI) and surface radiant temperature ( To ). Comparisons with measurements at a number of sites from two field experiments show standard errors, between derived and measured fluxes, generally between 25 and 55Wm-2, or about 10-30 per cent of the magnitude of the fluxes and for surface moisture availability of 16 per cent.  相似文献   

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