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1.
用TM影像和DEM获取黑河流域地表反射率和反照率   总被引:28,自引:13,他引:15  
传统的大气校正方法原理比较复杂,而且有些参数特别是实时的大气剖面资料难以获取。本文利用DEM对TM 影像进行地形校正后,用简便而又实用的方法对TM影像进行了大气校正,较精确地反演出黑河流域河西走廊中段对应于Landsat TM 1~5 和7波段的地表反射率。在此基础上,通过不同波段地表反射率的组合,获得了地表反照率。通过与实地观测数据对比分析,表明对于植被覆盖区用TM 2,4,7波段组合结果较好,而在非植被覆盖区用TM 1~5,7这6 个波段组合结果更佳。  相似文献   

2.
基于TM数据的太湖叶绿素a浓度定量遥感反演方法研究   总被引:13,自引:1,他引:12  
探讨利用常规卫星遥感数据Landsat/TM定量反演太湖叶绿素a(Chl-a)浓度的方法。在对Landsat/TM影像进行几何校正、辐射定标、大气校正等预处理的基础上,选择适于太湖Chl-a浓度定量反演的最佳波段或波段组合,采用半经验回归模型和混合光谱分解模型分别建立太湖Chl-a浓度定量反演模型,并对不同模型及反演结果进行对比分析。  相似文献   

3.
土壤氧化铁光谱特征研究   总被引:27,自引:2,他引:25  
土壤光谱反射特性的研究是土壤遥感的物理基础,土壤氧化铁含量影响土壤反射率。对采集的174个土样350~2 500 nm谱段的光谱数据进行分析,着重探讨下述3类光谱变量,寻找对土壤氧化铁含量敏感的光谱特征。1)原始光谱反射率及其各种变换形式;2)基于光谱吸收峰特征的变量,因为已知三价铁在870 nm附近有吸收峰存在,提取该吸收峰的面积、宽度、深度等变量;3)基于植被指数的变量,构建土壤氧化铁指数。研究结果表明,各类变量中土壤氧化铁指数对土壤氧化铁含量最敏感,建立相应的回归预测模型,模型拟合度R2为0.534。  相似文献   

4.
Choosing the Minqin Oasis, located downstream of the Shiyang River in Northwest China, as the study area, we used field-measured hyperspectral data and laboratory-measured soil salt content data to analyze the characteristics of saline soil spectral reflectance and its transformation in the area, and elucidated the relations between the soil spectral reflectance, reflectance transformation, and soil salt content. In addition, we screened sensitive wavebands. Then, a multiple linear regression model was established to predict the soil salt content based on the measured spectral data, and the accuracy of the model was verified using field-measured salinity data. The results showed that the overall shapes of the spectral curves of soils with different degrees of salinity were consistent, and the reflectance in visible and near-infrared bands for salinized soil was higher than that for non-salinized soil. After differential transformation, the correlation coefficient between the spectral reflectance and soil salt content was obviously improved. The first-order differential transformation model based on the logarithm of the reciprocal of saline soil spectral reflectance produced the highest accuracy and stability in the bands at 462 and 636 nm; the determination coefficient was 0.603, and the root mean square error was 5.407. Thus, the proposed model provides a good reference for the quantitative extraction and monitoring of regional soil salinization.  相似文献   

5.
利用6S模型结合暗目标法确定TM过境时的最优气象能见度,分别使用MODIS气溶胶产品(MOD04)、最优气象能见度作为TM的气溶胶光学厚度,对黄河源区的Landsat TM数据进行大气校正。以同步野外实测地面数据为标准,比较了两种气溶胶参数输入方法的校正结果,并从光谱曲线、植被指数、草地生物量的估算三方面探讨了大气校正的效果,两种气溶胶参数输入方法均可以对遥感图像进行有效的大气校正,消除因散射增加的辐射能量,同时补偿因吸收而损失的辐射能量。经过大气校正后的TM光谱更接近真实地表光谱,更有助于地物真实光谱信息的提取,同时对与该地区相似气候条件下影像的大气校正有借鉴意义。  相似文献   

6.
This paper examines the relationship between reflectance and physical characteristics of the snow cover in the Arctic. Field data were acquired for different snow and ice surfaces during a survey carried out at Ny-Ålesund, Svalbard, in spring 1998. In each measurement reflectance in the spectral range 350 - 2500 nm, snow data (including temperature, grain size and shape, density and water content), surface layer morphology, and vertical profile of the snow pack were recorded detailed analysis of reflectance based on the physical was performed. Field reflectance data were also re-sampled at the spectral intervals of Landsat TM to compare the ability of identifying different snow targets at discrete wavelength intervals. This analysis shows that reliable data on snow structure and thickness are necessary to understand albedo changes of the snow surfaces.  相似文献   

7.
Wu  Dan  Jia  Keli  Zhang  Xiaodong  Zhang  Junhua  Abd El-Hamid  Hazem T. 《Natural Resources Research》2021,30(6):4641-4656

The Pingluo area, as an experimental study area in Yinchuan, has been subjected to major environmental degradation due to soil salinization problems. Soil salinization is one of the main problems of land degradation in arid and semiarid regions. In the present study, remote sensing was integrated with mathematical modeling to evaluate soil salinization adequately. To detect soil salinization, soil water content and electrical conductivity of soil samples were analyzed. The reflectance of soil samples was measured using a spectrometer (SR-3500) with 1024 bands. Indices of soil salinity, vegetation and drought were analyzed using Landsat images over the study area. Based on Landsat images, physicochemical analysis, reflectance of sensitive bands for soil salinization and environmental indices, canopy response salinity index (CRSI), perpendicular drought index (PDI) and enhanced normalized difference vegetation index (ENDVI), a new model was established for simulation and prediction of soil salinization in the study area. Correlation analyses and multiple regression methods were used to construct an accurate model. The results showed that green, blue and near-infrared light was significantly correlated with soil salinity and that the spectral parameters improved this correlation significantly. Therefore, the model was more effective when combining spectral parameters with sensitive bands with modeling. After mathematical transformation of soil reflectance, the correlations of bands sensitive to soil salinization were 0.739 and 0.7 for electrical conductivity and water content, respectively. After transformation of vegetation reflectance, the correlation coefficient of soil salinity became 0.577. After inversion of the model based on soil hyperspectral and water content, the significance became 0.871 and 0.726, respectively, which can be used to predict soil salinity and water content. The spectral soil salinity model had a coefficient of 0.739 for soil salinity prediction. Among the salinity indices, the CRSI was selected as the most significant, with R2 of 0.571, whereas the R2 for PDI reached only 0.484. Among the vegetation indices, the ENDVI had the highest response to soil salinity, with R2 of 0.577. After scale conversion, the correlation percentages between CRSI and measured soil salinity and between ENDVI and measured soil salinity increased to 16.2% and 8.5%, respectively. Following the correlation between PDI and soil water content, the percentage of correlation increased to 11.6%. The integration of hyperspectral remote sensing, ground methods and an inversion method for salinity is a very important and effective technique for rapid and nondestructive monitoring of soil salinization.

  相似文献   

8.
基于冠层反射和植被指数的华东地区叶面指数反演   总被引:4,自引:0,他引:4  
1 IntroductionLeaf A rea Index (LA I), defined as half the all-sided leaf or needle surface per unit groundsurface (Chen and Black,1992),is an im portantparam eter to quantify leaf density and m onitorvegetation change.A tthe sam e tim e,LA I is also an i…  相似文献   

9.
基于随机森林算法的土壤有机质含量高光谱检测   总被引:1,自引:0,他引:1       下载免费PDF全文
为了探讨既能保留光谱信息又能准确对土壤有机质含量进行快速检测。以新疆南部渭干河—库车绿洲内部73个土壤样点及其对应的高光谱数据为研究对象,采用小波变换与数学变换进行光谱数据预处理,分析各小波分解重构光谱在不同有机质含量与不同土壤类型下光谱曲线差异,通过相关分析确定最大小波分解层并筛选敏感波段,结合灰色关联分析与随机森林预测分类模型对各小波分解特征光谱进行重要性分析,最后基于最优特征光谱建立多元线性预测模型并进行分析。结果表明:(1) 耕作土壤与林地土壤光谱曲线波段相较盐渍土壤和荒漠土壤光谱曲线变化较为平缓,同时在水分吸收波段处,盐渍土壤光谱曲线吸收谷最深。(2) 小波变换分解光谱与土壤有机质含量的相关性随着分解层数增加呈现先减后增趋势,在第6层中,特征光谱曲线与敏感波段数量变化趋于稳定,确定为小波变换最大分解层。(3) 随机森林模型相比灰色关联分析对于各小波分解层因子的筛选符合预期,按照对土壤有机质含量影响从高到低排序为L3-(1/LgR)′、L4-(1/LgR)′、L6-(1/LgR)′、L5-(1/LgR)′、L2-(1/LgR)′、L0-1/LgRL1-1/LgR。(4)在小波分解光谱中,中频范围特征光谱对干旱区土壤有机质含量的估测能力优于高频与低频范围特征光谱,同时基于L-MC建立的模型精度最高。研究表明:基于机器学习分类方法结合小波分解的土壤光谱有机质含量监测,可以有效的减少噪声波段干扰,并提高特征波段的分类预测精度。  相似文献   

10.
The aim of this paper is to investigate the feasibility of using Landsat TM data to retrieve leaf area index (LAI). To get a LAI retrieval model based ground reflectance and vegetation index, detailed field data were collected in the study area of eastern China, dominated by bamboo, tea plant and greengage. Plant canopy reflectance of Landsat TM wavelength bands has been inversed using software of 6S. LAI is an important ecological parameter. In this paper, atmospheric corrected Landsat TM imagery was utilized to calculate different vegetation indices (VI), such as simple ratio vegetation index (SR), shortwave infrared modified simple ratio (MSR), and normalized difference vegetation index (NDVI). Data of 53 samples of LAI were measured by LAI-2000 (LI-COR) in the study area. LAI was modeled based on different reflectances of bands and different vegetation indices from Landsat TM and LAI samples data. There are certainly correlations between LAI and the reflectance of Tm3, TM4, TM5 and TM7. The best model through analyzing the results is LAI = 1.2097*MSR + 0.4741 using the method of regression analysis. The result shows that the correlation coefficient R2 is 0.5157, and average accuracy is 85.75%. However, whether the model of this paper is suitable for application in subtropics needs to be verified in the future.  相似文献   

11.
塔里木河荒漠植被光谱可分性模拟   总被引:3,自引:2,他引:1  
以塔里木河典型植被为研究对象,分析胡杨、芦苇叶片及柽柳冠层的可分性,并计算背景的影响。首先用ASD光谱仪测新鲜叶片光谱,找出光谱特征点;然后模拟EO-1高光谱数据和TM多光谱数据;最后植被与土壤光谱按比例混合,分析背景的影响。以上三步分别计算植被指数(VI)。结果显示:叶片光谱特征位置430 nm、670 nm、750 nm附近,黄边斜率和红外平台平均高度,1 080~1 280 nm、1 430~1 650 nm能够区分塔里木河流域3个主要植被类型。模拟的EO-1波谱保持了控制波形的10个特征,TM 只有绿反射峰和红吸收谷、近红外1个反射峰3个特征,大部分特征都消失了。植被指数显示(R680-R500)/R750、(R680-R550)/R705、R1430+\:+R1650、D712/D688能够区分3类,且指数值差异较大,为绿峰、红谷和近红外波峰的组合;模拟的EO-1数据(R680-R500)/R750、(R680-R550)/R705、R1430+\:+R1650能分别区分植被,TM多波谱数据不能有效区分植被。  相似文献   

12.
利用土壤光谱反射率预测海岸带典型土壤有机质含量。对莱州湾海岸带典型地区97个土壤样本的光谱反射率特性进行分析,把光谱曲线划分为4个区域,提取每个区域的代表性特征参数,与土壤有机质含量进行相关性分析,最终选用458~587.1nm区间的挠度(相关系数达0.87)作为自变量进行模型回归,并利用均方根误差(RMSE)和预测残差(RPD)进行模型检验与评价。结果表明,以458~587.1nm区间的挠度作为自变量建立的对数函数预测模型具有较高的精度和稳定性,经验证计算出其RMSE为0.39,RPD为2.5,该模型应用效果较好。  相似文献   

13.
GWR模型在土壤重金属高光谱预测中的应用   总被引:5,自引:0,他引:5  
目前土壤重金属高光谱反演模型大多忽视了重金属与光谱变量间相关关系的空间异质性,这与实际情况不相吻合,而地理权重回归(GWR)模型能有效地揭示变量间关系的空间异质性。本文以福州市土壤重金属Cd、Cu、Pb、Cr、Zn、Ni为对象,构建土壤重金属预测的GWR高光谱模型,并将预测结果与普通最小二乘法回归(OLS)结果进行比较分析,探讨GWR模型在土壤重金属高光谱预测中的适用性及局限性。结果表明:① GWR模型在土壤重金属高光谱预测中适用与否取决于重金属对光谱变量影响的空间异质性程度:对于Cr、Cu、Zn、Pb等对光谱变量影响空间异质性大的元素,其GWR预测精度较OLS提高明显,表现为GWR模型的调节R2较OLS模型有了明显提高,分别为OLS模型的2.69倍、2.01倍、1.87倍和1.53倍;而AIC值以及残差平方和较OLS模型却明显降低,AIC值减少量均大于3个单位,残差平方和则仅分别为OLS模型的25.33%、30.09%、47.22%和86.84%;对于Cd和Ni等对光谱变量影响空间异质性小的元素,相较于OLS模型,GWR模型的调节R2分别提高了0.015和0.007,残差平方和分别减少了5.97%和4.18%,但AIC值却分别增加了2.737和2.762,GWR预测效果改善不明显;② 光谱变换可以有效增强土壤重金属的光谱特征,其中以光谱的倒数变换效果最好,而且该变换及其微分形式可以很好地提高模型的预测效果;③ GWR模型的应用前提是变量间关系的空间非平稳性,适合在与土壤光谱变量间关系具有显著空间异质性的重金属高光谱预测中推广。  相似文献   

14.
为探索快速提取典型绿洲棉田土壤盐分的有效方法,获取区域尺度的土壤盐渍化特征及空间分布,进而为土壤盐渍化防治提供参考。以新疆兵团农二师31团为研究区域,2019、2021年春季Landsat 8 OLI多光谱影像和野外实测土壤含盐量为数据源,将波段组、光谱指数组和全变量组作为模型输入变量组,采用多元逐步回归(Multiple stepwise regression, MSR)、偏最小二乘回归(Partial least squares regression, PLSR)、极限学习机(Extreme learning machine, ELM)、支持向量机(Support vector machine, SVM)和BP神经网络(Back propagation neural network, BPNN)构建基于3个输入变量组的土壤盐分遥感反演模型,探究输入变量和建模方法对模型精度的影响效果,通过对比确定春季土壤盐分最优反演模型,定量反演地表土壤含盐量。结果表明:(1) 研究区主要为非盐化土和轻度盐化土,总样本变异系数为0.67,呈中等变异性;光谱反射率与土壤盐渍化程度的关系表现为土壤盐渍化越重,光谱反射率越高。(2) 海岸波段(b1)、蓝波段(b2)、绿波段(b3)、红波段(b4)和盐分指数(SI1、SI2、SI3、SI4、S3、S4、S5)均通过显著性检验P<0.01,相关系数均达到0.4以上。(3) 所有模型中,基于全变量组建立的BPNN反演模型精度最高,建模集R2为0.705;验证集R2为0.556。(4) 由反演结果可知,2019、2021年春季耕作区土壤主要为非盐化土,分别占耕作区总面积的55.55%和64.62%,其次为轻度盐化土,分别占44.31%和35.17%;2021年土壤盐渍化程度较2019年有所减轻。  相似文献   

15.
基于GIS的县域土地利用优化配置研究   总被引:2,自引:0,他引:2  
依据2002年Landsat 5的3个波段合成TM假彩色影像、土壤类型图和2006年土地利用变更调查数据库(MapGIS6.5)以及土地利用规划等资料,以亚热带丘陵山区——湖北省崇阳县为研究区,在GIS技术支持下,通过用地分区规划、适宜性评价以及线性规划模型的构建,探讨地形条件复杂、景观类型多样、较大尺度区域的土地利用优化配置问题。研究显示,耕地、园地和林地面积均做了较大调整,耕地集中配置于地势平坦、水源有保障的山间盆地区,而其他分区内的坡耕地均转为园地或林地。优化结果符合该区土地利用特点,优化后的各类用地生态系统服务价值增加,水土流失问题将得到改善,有助于提升农业景观的生态经济效益。  相似文献   

16.
土壤电导率 (Electrical conductivity, EC)是评价土壤盐渍化的重要指标。通过实测新疆艾比湖湿地自然保护区土壤EC及可见光—近红外光谱数据,利用波谱响应技术模拟Landsat 8 OLI、Sentinel 2、Sentinel 3卫星的宽波段数据。构建宽波段模拟数据及其5种预处理后的三维光谱指数 (Three-dimensional spectral index, TDSI),采用梯度提升回归树算法 (Gradient boosting regression tree, GBRT) 建立3种卫星土壤EC估算模型,并比对加入TDSI后模型精度的变化。结果表明:在不同土壤EC条件下,3种卫星具有相似的光谱趋势,均在红、近红外波段附近反射率较高;TDSI与土壤EC相关性基本均在0.4以上,最大程度保留了与土壤EC敏感度高的红、绿、蓝、近红外、短波红外波段信息;GBRT对于土壤EC估算能力表现突出,3种卫星对土壤EC的最佳预测精度R2分别为0.831、0.847、0.903,在加入TDSI后,R2分别提高至0.835、0.857、0.935,综合分析发现,Sentinel 3对土壤EC估算效果最佳 (R2=0.935,均方根误差RMSE=2.986 mS·cm-1,赤池信息准则AIC=57.500)。通过利用波谱响应技术结合TDSI深度挖掘波段间的协同信息,采用GBRT验证了不同卫星对土壤R2的估算效果,二者相结合可以有效提升模型预测精度,为干旱区土壤盐渍化定量监测与防控提供有利指导。  相似文献   

17.
高光谱遥感土壤有机质信息提取研究   总被引:16,自引:1,他引:15  
土壤反射光谱特征分析是反演土壤信息参量的基础资料。本文阐述了使用航空成像光谱仪OMIS- Ⅰ数据并 结合ASD FieldSpec FR(350~2500nm)便携式光谱仪获取野外光谱数据, 对山东省烟台市招远东良乡原状农用土有 机质含量进行反演, 从而实现有机质填图。通过对土壤原反射率对数一阶微分变换并确定其与SOM的相关性, 最 终建立相应的多元线性回归方程。分析认为土壤有机质的测定选用762nm、874nm 及1667nm 波段在本次研究中效 果最佳。该模型也可作为土壤有机质估测和评价的参考。  相似文献   

18.
Relationships between Landsat reflectance indexes that extract the individual component contributions of vegetation and the soil background and the composition of a semiarid grassland-shrub environment are examined. The results indicate that two reflectance indexes, the Transformed Vegetation Index (TVI) and the ratio of Landsat MSS6/MSS5, exhibit the highest correlation with vegetation density. The ratio of MSS6/MSS4, the ratio of MSS5/MSS4, and the MSS6 soil background reflectance component (Rgg6) emerge as the best indexes to discriminate between semiarid landscape units. The relationships between reflectance and land cover composition suggest that Landsat reflectance may be useful to monitor temporal and spatial changes in the condition of semiarid vegetation.  相似文献   

19.
A study was conducted in the Taihu Lake with the aim of deriving a model for the retrieval of suspended sediment (SS) concentrations from Landsat TM images and in situ sampled data. The correlation between suspended sediment concentrations of lake and the reflectance obtained from the TM images is significant. By TM images and in situ sampled data in summer and winter, we obtained a comparative uniform model for the retrieval of suspended sediment concentrations in the Taihu Lake, that is lnSS = a*(R3/R1) + b, where lnSS is the natural logarithm of the suspended sediment concentration, R1 and R3 are the reflectance coincident with the 1st band and the 3rd band in TM images, a and b are the regression coefficients. Furthermore, we analysed the errors particularly to make sure the model is valid. The model is accurate to within 0.33(RMSE), suggesting that this model may be applicable to predict suspended sediment in the Taihu Lake from TM image throughout the year.  相似文献   

20.
基于TM影像的太湖悬浮物反演模型   总被引:1,自引:0,他引:1  
1 Introduction Suspended sediment (SS) is the non-dissolved matter in water which reflects the physical and chemical property of water. Suspended sediment plays an important role in water quality management, which influences the total primary productivity…  相似文献   

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