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1.
以福建省平和县琯溪蜜柚为研究对象,利用星载Hyperion高光谱遥感数据对蜜柚叶片进行氮浓度估测。在分析Hyperion数据特征的基础上进行大气校正、几何纠正等预处理,从而得到图像反射率;结合地面光谱测量和蜜柚叶片采样分析,通过逐步回归分析法研究叶片氮浓度与高光谱图像反射率及其衍生量的关系,最终建立其遥感定量监测模型。结果表明,图像反射率的对数变换更有利于氮浓度的定量反演,入选的波段是983 nm、1 245 nm、1 316 nm和1 457 nm,其中1 245 nm波段对氮浓度影响最大,1 457 nm波段最小。利用该模型对氮浓度进行估算的值域与地面调查结果一致,说明利用高光谱进行氮浓度定量反演具有一定的可行性。  相似文献   

2.
首先获取叶片去除表面蜡质层前后光谱反射率,比较分析叶片表面蜡质层的光谱特征,探究叶片去除蜡质层前后叶片反射率的变化.结果表明:叶片去除蜡质层后在400~2500 nm光谱区间反射率发生较明显改变;去除蜡质层对植被红边参数没有影响,并不会导致"红边"移动,叶片表面的蜡质并不影响绿色植被所特有的反射特征;不同叶片蜡质层对不同植被影响不同,叶片反射曲线不是叶片表面蜡质反射曲线和经去蜡质处理的叶片反射曲线简单的线性叠加.植被叶片的光谱定量分析可为公路植被遥感环境评价提供支持.  相似文献   

3.
利用光谱反射率估算叶片生化组分和籽粒品质指标研究   总被引:2,自引:0,他引:2  
对可见光至短波红外波段(350—2500nm)冬小麦田间冠层光谱反射率与叶片含氮量间的关系进行了相关分析。结果表明,820—1100nm波段的光谱反射率与叶片含氮量极显著正相关;1150—1300hm波段的光谱反射率与叶片含氮量显著正相关,以上两波段为叶片全氮的敏感波段。对各生育时期叶片全氮与其他生化组分的关系进行了回归分析,并建立了相关的回归方程,显著性检验结果表明,方程具有较高的可靠性。小麦的叶片含氮量可以估算其它生化组分及干物质指标含量,开花期叶片含氮量可用来估测籽粒蛋白质和干面筋等品质指标含量。  相似文献   

4.
利用光谱反射率估算叶片生化组分和籽粒品质指标研究   总被引:55,自引:2,他引:55  
对可见光至短波红外波段(350—2500nm)冬小麦田间冠层光谱反射率与叶片含氮量间的关系进行了相关分析。结果表明,820—1100nm波段的光谱反射率与叶片含氮量极显著正相关;1150—1300hm波段的光谱反射率与叶片含氮量显著正相关,以上两波段为叶片全氮的敏感波段。对各生育时期叶片全氮与其他生化组分的关系进行了回归分析,并建立了相关的回归方程,显著性检验结果表明,方程具有较高的可靠性。小麦的叶片含氮量可以估算其它生化组分及干物质指标含量,开花期叶片含氮量可用来估测籽粒蛋白质和干面筋等品质指标含量。  相似文献   

5.
苹果树叶片全氮含量高光谱估算模型研究   总被引:5,自引:1,他引:4  
采用Field-Spec Pro便携式光谱仪,测定了不同苹果品种叶片的光谱反射率及对应的全氮含量,采用相关性及单变量线性与非线性拟合分析技术,对全氮含量与原始光谱反射率、一阶微分光谱、高光谱参数之间的关系进行了分析。研究确立叶片全氮含量的定量监测模型,以期为遥感技术在苹果氮素营养诊断中的实际应用提供理论依据。结果表明:全氮含量与原始光谱在715nm处具有最大负相关系数(r=?0.817),并且基于此波长所构建的对数关系估算模型明显优于线性模型;光谱反射率一阶微分值在723nm处具有最大正相关系数(r=0.87),并且基于此波长所构建的线性和非线性模型的拟合效果接近;对于所选取的3类高光谱特征变量,全氮含量除了与黄边位置及由红边位置和黄边面积所构建的比值植被指数和归一化植被指数的相关性较弱外,与其余变量均呈极显著相关,说明这些变量对苹果叶片全氮含量进行估算具有可行性。对所建立的各类方程进行检验,最终筛选确定在723nm处的光谱反射率一阶微分值所构建的指数模型作为苹果叶片全氮含量的预测模型最为理想。  相似文献   

6.
不同钾素处理春玉米叶片营养元素含量变化及其光谱响应   总被引:3,自引:0,他引:3  
王磊  白由路 《遥感学报》2007,11(5):641-647
目的是研究不同钾营养水平春玉米典型生育期叶片的光谱响应,探索叶片内营养成分与叶片光谱反射率的相关性。方法是设置了不同梯度钾处理的盆栽试验,按玉米生育期进行光谱测定和取样分析。结果,通过对不同钾处理间玉米叶片养分含量的差异性分析表明,随着施钾的提高,叶片钾含量差异性达到显著水平。分析不同钾营养水平不同生育时期春玉米叶片光谱反射率与叶片钾含量的相关关系,并建立了喇叭口期利用叶片光谱反射率估测叶片钾含量的数学模型;以及分析了该处理下喇叭口期叶片内水分、叶绿素、氮、磷、钙、镁、锌、锰、铜、铁含量与叶片光谱反射率的相关性。结果表明:不同生育时期叶片钾含量与其光谱反射率的相关关系在光谱维方向存在明显差别,730—930nm和960—1100nm两波段为春玉米喇叭口期评价钾营养状况的敏感波段,光谱变量R767+R1057,(R767+R1057) /(logR767+logR1057)和(R767-R1057) /(logR767-logR1057)均能很好的预测喇叭口期叶片钾含量;该时期叶片内不同成分与光谱反射率相关分析表明:550nm,710nm,950nm三波段处是各个相关曲线的突变点;叶片内各成分间高度相关的,它们的光谱相关曲线趋势也极为一致或对称。  相似文献   

7.
在叶片和冠层两个尺度上,分析了栎树叶片氮碳两种生化组分含量与其反射率特性的统计关系;采用逐步回归法,分别利用地面光谱和航空高光谱曲线对叶片和冠层尺度进行了反演,选择进入回归方程的波段分别为719 nm、1 854 nm/1 861 nm、359 nm和767.9 nm/1 319.0 nm。研究表明,叶片尺度由于受到干扰较小,反演结果明显优于冠层尺度;冠层尺度的反演受大气水汽、冠层结构、植被下垫面等诸多因素影响较大,因此在进行冠层尺度生化组分反演时,必须充分考虑上述因素的影响。  相似文献   

8.
基于Hyperion影像的水稻冠层生化参量反演   总被引:5,自引:0,他引:5       下载免费PDF全文
采用小区实验与大田应用相结合的方法, 依据扬州实验小区地面实测拔节期、抽穗期及灌浆期的水稻叶片、冠层光谱及氮和叶绿素含量, 采用光谱吸收特征和植被指数分析方法, 得到估算水稻氮和叶绿素含量的最佳光谱特征参数; 结合覆盖江苏姜堰地区大田的Hyperion高光谱遥感影像, 建立反演水稻冠层氮和叶绿素含量的模型, 对研究区大田水稻冠层氮和叶绿素含量进行了反演及制图。结果表明: 经波深中心归一化方法分析, 发现以670nm为中心的光谱吸收特征面积与水稻氮含量呈显著相关性; 基于反转归一化光谱, 结合560nm和670nm两个波段, 建立的植被指数NDVI560_670能很好地反演水稻叶绿素含量。  相似文献   

9.
南方丘陵稻田土碱解氮高光谱特征及反演模型研究   总被引:1,自引:0,他引:1  
以兴国县稻田土高光谱反射率为研究对象,分析南方丘陵稻田土碱解氮的光谱响应波段,运用光谱分析方法提取光谱指数,建立基于反射光谱特征的南方丘陵稻田土碱解氮高光谱反演模型。经分析可知,不同碱解氮含量的南方丘陵稻田土光谱曲线在波长小于700 nm波谱范围内呈现随着碱解氮含量的增高,光谱反射率降低,吸收深度越大的趋势;通过分析南方丘陵稻田土碱解氮含量与光谱反射率16种数学变换的相关系数,提取敏感波段为694 nm,2 058 nm和2 189 nm。基于南方丘陵稻田土光谱反射率的碱解氮含量高光谱反演模型稳定性较强(R2=0.56),具有一定的预测能力,能用于南方丘陵稻田土碱解氮含量速测。  相似文献   

10.
利用HR-768型便携式光谱仪,测定了不同大豆残茬覆盖度下的地面光谱,利用照相法获取对应的大豆残茬覆盖度。采用线性回归方法分析了单波段反射率、反射率一阶导数、归一化指数、比值指数与大豆残茬覆盖度的相关性,获取了不同覆盖度水平下大豆残茬的光谱响应特征,并结合MODIS、TM、HJ-1B星的波段响应函数建立了大豆残茬覆盖度最优估算模型。结果表明,在2050—2150nm和2250—2350nm两个波段范围内,大豆残茬与裸土的光谱差异最显著,可用于二者的区分;大豆残茬的光谱特征与玉米、小麦残茬的光谱特征相似,仅在920—967nm范围内存在特殊的吸收峰;以高光谱数据为数据源,941.6nm处的反射率、2151.8nm处反射率一阶导数、1461.3nm和2404.4nm反射率构建的归一化指数以及2247nm和608.6nm反射率构建的比值指数适宜用于作物残茬覆盖度估算,以宽波段数据为数据源,短波红外与红波段反射率构建的比值指数适宜用于大豆残茬覆盖度估算。  相似文献   

11.
叶片辐射等效水厚度计算与叶片水分定量反演研究   总被引:3,自引:0,他引:3  
在分析叶片水分对叶片反射率光谱影响的基础上,结合叶片内部水、干物质、叶绿素等光谱吸收系数曲线特征,分析了975nm波长水气吸收特征处叶片与光线相互作用原理,并利用Beer定律和945nm,975nm波长光谱反射率差值,推导了975nm波长辐射等效水厚度REWT的计算公式。由于表面反射、杂散射光、非均匀介质和叶片内部多次散射等因素,光在叶片内部的辐射传输不能直接用Beer定律描述,且利用Beer定律计算的REWT与叶片等效水水厚度EWT之间会有较大的偏差。论文设计和获取了多植物、不同水分梯度的叶片光谱获取试验数据,整理和分析了欧盟Lopex93数据,利用这两组独立数据和论文提出的REWT计算公式,比对验证了975nm波长叶片REWT和叶片EWT的统计模型,结果表明:由于光在叶片内部的多次散射,REWT是EWT的3.3倍左右。论文研究结果一方面为叶片EWT定量遥感探测提供了一种快速、简单且有较强通用性的计算方法和模型,另一方面,探测叶片REWT和EWT的定量关系,有助于了解叶片内部的光辐射传输情况,特别是间接了解近红外波段叶片内部的多次散射情况。  相似文献   

12.
The aim of this study was to monitor changes in leaf spectral reflectance due to phytoaccumulation of trace elements (Cd, Pb, and As) in sunflower mutant (M5 mutant line 38/R4-R6/15-35-190-04-M5) grown in spiked and in situ metal-contaminated potted soils. Reflectance spectra (350–2500 nm) of leaves were collected using portable ASD spectroradiometer, and respective leaves sample were analyzed for total metal contents. The spectral changes were quite noticeable and showed increased visible and decreased NIR reflectance for sunflower grown in soil spiked with 900 mg As kg?1, and in in situ metal-contaminated soils. These changes also involved a blue-shift feature of red-edge position in the first derivatives spectra, studied vegetation indices and continuum removed absorption features at 495, 680, 970, 1165, 1435, 1780, and 1925 nm wavelength. Correlograms of leaf-metal concentration and reflectance values show highest degrees of overall correlation for visible, near-infrared, and water-sensitive wavelengths. Partial least square and multiple linear regression statistical models (cross-validated), respectively, based on Savitzky–Golay filter first-order derivative spectra and combination of spectral feature such as vegetation indices and band depths yielded good prediction of leaf-metal concentrations.  相似文献   

13.
Leaf to canopy upscaling approach affects the estimation of canopy traits   总被引:1,自引:0,他引:1  
In remote sensing applications, leaf traits are often upscaled to canopy level using sunlit leaf samples collected from the upper canopy. The implicit assumption is that the top of canopy foliage material dominates canopy reflectance and the variability in leaf traits across the canopy is very small. However, the effect of different approaches of upscaling leaf traits to canopy level on model performance and estimation accuracy remains poorly understood. This is especially important in short or sparse canopies where foliage material from the lower canopy potentially contributes to the canopy reflectance. The principal aim of this study is to examine the effect of different approaches when upscaling leaf traits to canopy level on model performance and estimation accuracy using spectral measurements (in-situ canopy hyperspectral and simulated Sentinel-2 data) in short woody vegetation. To achieve this, we measured foliar nitrogen (N), leaf mass per area (LMA), foliar chlorophyll and carbon together with leaf area index (LAI) at three vertical canopy layers (lower, middle and upper) along the plant stem in a controlled laboratory environment. We then upscaled the leaf traits to canopy level by multiplying leaf traits by LAI based on different combinations of the three canopy layers. Concurrently, in-situ canopy reflectance was measured using an ASD FieldSpec-3 Pro FR spectrometer, and the canopy traits were related to in-situ spectral measurements using partial least square regression (PLSR). The PLSR models were cross-validated based on repeated k-fold, and the normalized root mean square errors (nRMSEcv) obtained from each upscaling approach were compared using one-way analysis of variance (ANOVA) followed by Tukey’s post hoc test. Results of the study showed that leaf-to-canopy upscaling approaches that consider the contribution of leaf traits from the exposed upper canopy layer together with the shaded middle canopy layer yield significantly (p < 0.05) lower error (nRMSEcv < 0.2 for canopy N, LMA and carbon) as well as high explained variance (R2 > 0.71) for both in-situ hyperspectral and simulated Sentinel-2 data. The widely-used upscaling approach that considers only leaf traits from the upper illuminated canopy layer yielded a relatively high error (nRMSEcv>0.2) and lower explained variance (R2 < 0.71) for canopy N, LMA and carbon. In contrast, canopy chlorophyll upscaled based on leaf samples collected from the upper canopy and total canopy LAI exhibited a more accurate relationship with spectral measurements compared with other upscaling approaches. Results of this study demonstrate that leaf to canopy upscaling approaches have a profound effect on canopy traits estimation for both in-situ hyperspectral measurements and simulated Sentinel-2 data in short woody vegetation. These findings have implications for field sampling protocols of leaf traits measurement as well as upscaling leaf traits to canopy level especially in short and less foliated vegetation where leaves from the lower canopy contribute to the canopy reflectance.  相似文献   

14.
Advanced site-specific knowledge of grain protein content of winter wheat from remote sensing data would provide opportunities to manage grain harvest differently, and to maximize output by adjusting input in fields. In this study, remote sensing data were utilized to predict grain protein content. Firstly, the leaf nitrogen content at winter wheat anthesis stage was proved to be significantly correlated with grain protein content (R2 = 0.36), and spectral indices significantly correlated to leaf nitrogen content at anthesis stage were potential indicators for grain protein content. The vegetation index, VIgreen, derived from the canopy spectral reflectance at green and red bands, was significantly correlated to the leaf nitrogen content at anthesis stage, and also highly significantly correlated to the final grain protein content (R2 = 0.46). Secondly, the external conditions, such as irrigation, fertilization and temperature, had important influence on grain quality. Water stress at grain filling stage can increase grain protein content, and leaf water content is closely related to irrigation levels, therefore, the spectral indices correlated to leaf water content can be potential indicators for grain protein content. The spectral reflectance of TM channel 5 derived from canopy spectra or image data at grain filling stage was all significantly correlated to grain protein content (R2 = 0.31 and 0.37, respectively). Finally, not only this study proved the feasibility of using remote sensing data to predict grain protein content, but it also provided a tentative prediction of the grain protein content in Beijing area using the reflectance image of TM channel 5.  相似文献   

15.
在不同的养分供应状况下,对水稻在几个生育期的荧光光谱特征的研究表明:氮素供应的减少会引起水稻叶片荧光光谱中蓝绿波段峰的强度在有效分蘖期时降低,无效分蘖期始升高,并使红波段峰的强度和特征峰之间的强度比值(如440nm/550nm)在各生育期均有所降低;利用水稻叶片荧光光谱特征的变化监测其养分供应状况是可能的;监测波段以400—800nm为宜,监测时期应为分蘖盛期一孕穗期。  相似文献   

16.
Spectral reflectance can be used to assess large-scale performances of plants in the field based on plant nutrient balance as well as composition of defence compounds. However, plant chemical composition is known to vary with season – due to its phenology – and it may even depend on the succession stage of its habitat. Here we investigate (i) how spectral reflectance could be used to discriminate successional and phenological stages of Jacobaea vulgaris in both leaf and flower organs and (ii) if chemical content estimation by reflectance is flower or leaf dependent.We used J. vulgaris, which is a natural outbreak plant species on abandoned arable fields in north-western Europe and studied this species in a chronosequence representing successional development during time since abandonment. The chemical content and reflectance between 400 and 2500 nm wavelengths of flowers and leaves were measured throughout the season in fields of different successional ages. The data were analyzed with multivariate statistics for temporal discrimination and estimation of chemical contents in both leaf and flower organs.Two main effects were revealed by spectral reflectance measurements: (i) both flower and leaf spectra show successional and seasonal changes, but the pattern is complex and organ specific (ii) flower head pyrrolizidine alkaloids, which are involved in plant defence against herbivores, can be detected through hyperspectral reflectance.We conclude that spectral reflectance of both leaves and flowers can provide information on plant performance during season and successional stages. As a result, remote sensing studies of plant performance in complex field situations will benefit from considering hyperspectral reflectance of different plant organs. This approach may enable more detailed studies on the link between spectral information and plant defence dynamics both aboveground and belowground.  相似文献   

17.
This paper reports the results of a modeling study carried out with two objectives, (1) to estimate and compare effective spectral characteristics (central wavelength, bandwidth and bandpass exo-atmospheric solar irradiance Eo) of various spectral channels of LISS-III, WiFS, LISS-III*, LISS-IV and AWiFS onboard Indian Remote Sensing Satellites IRS-ID and P6 using moment method based on the laboratory measurements of sensor spectral response, and (2) to quantify the influence of varying sensor spectral response on reflectance and Normalized Difference Vegetation Index (NDVI) measurements using surface reflectance spectra corresponding to different leaf area index conditions of crop target obtained through field experiment. Significant deviation of 4 to 14 nm in central wavelength and 1.6 to 14.07 nm in spectral width was observed for the corresponding channel of IRS sensors. Coefficient of variation of the order of 0.1 to 1.11% was noticed in Eo among various IRS sensors, which could induce a difference of 0.72 to 3.35% in the estimation of top of atmosphere reflectance for crop target. The variation in spectral response of IRS sensors implied a relative difference of the order of 0.91 to 3.38% in surface reflectance and NDVI measurements. Polynomial approximations are also provided for spectral correction that can be utilized for normalizing the artifacts introduced due to differences in spectral characteristics among IRS sensors.  相似文献   

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