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1.
重金属污染胁迫下盐肤木的生化效应及波谱特征   总被引:11,自引:1,他引:10  
利用遥感生物地球化学的原理和方法,分析了德兴铜矿的重金属污染状况和植物盐肤木的生物地球化学效应,对盐肤木生物地球化学效应的波谱特征进行了系统的提取和分析.研究发现酸、铜、镉等是德兴铜矿地区主要的环境污染因子,野外调查及样品的化验分析表明盐肤木对铜元素呈现一定的富集作用和很强的位移效应,是适合铜矿复垦的植被.利用导数光谱、包络线去除、红边效应、植被指数等光谱信息处理方法对盐肤木的野外波谱分析表明,随着叶片中Cu等金属元素含量的增大,其产生的毒化效应的波谱特征越明显,盐肤木叶片光谱反射率明显升高,波形蓝移,红边陡坡斜率增大,叶绿素吸收深度变浅,吸收中心稍有蓝移,水的吸收深度变浅,吸收中心位置红移,绿度指数变化明显.对波谱特征及其与重金属含量的相关关系综合分析后认为,红边特征、植被指数NDVI、叶绿素吸收深度与叶片铜含量关系显著,可以作为植被铜污染遥感图像特征提取的参考.  相似文献   

2.
选择若尔盖铀尾矿区为研究对象,通过ASD地面光谱仪测量铀尾矿堆内和堆外的植物样品光谱数据,结合研究区高光谱数据,提取该区受污染植被的光谱信息和光谱变异参数,分析铀尾矿区植被污染情况,为铀尾矿区环境评价和污染治理提供参考依据。研究显示,尾矿堆内光谱曲线特征一致,大部分样品的红边位置为717 nm,存在个别红边差异。与非尾矿堆植被光谱参数相比,尾矿植被的红边波长位置蓝移14.1 nm。高光谱红边参数提取结果反映了研究区植被红边变异程度。  相似文献   

3.
不同供氮水平下水稻高光谱及其红边特征研究   总被引:34,自引:2,他引:34  
通过大田和室内试验 ,测定了 3个供氮水平下 2个品种的水稻冠层、主茎叶片在不同发育期的高光谱反射率及对应的叶绿素、类胡萝卜素含量。结果表明 :不同供氮水平的水稻冠层和叶片光谱差异明显 ,其光谱反射率随供氮水平的提高在可见光范围降低 ,在近红外区域增高 ;拔节期和孕穗期主茎倒三叶反射率在可见光和近红外区域均高于倒一叶 ;冠层光谱红边位置λred、红边幅值Dλred和红边面积Sred孕穗前呈“红移” ,抽穗后呈“蓝移”现象 ;叶面积指数LAI、地上鲜生物量AFM、地上干生物量ADM和鲜叶重FLM与冠层光谱变量R12 0 0 /R550 ,R990 /R550 ,R80 0 /R550 ,R750 /R550 ,λred,Sred之间有极显著相关 ,冠层和叶片色素含量与其光谱变量R80 0 /R550 和λred之间也存在显著相关。这说明用合适的高光谱变量来估算水稻LAI,AFM ,ADM ,FLM和冠层、叶片的色素含量  相似文献   

4.
最佳小波包基的矿区植被及红边位置提取   总被引:1,自引:0,他引:1  
小波包变换能同时对植被光谱信息的低频和高频分量进行分解,并能克服小波变换时间分辨率高而频率分辨率低的缺陷从而具有能够探测植被细微变化的优势。实验利用Hyperion高光谱影像对云南省普朗铜矿区植被像元的光谱进行最佳小波包基参量获取与植被信息识别,并在此基础上提出一种提取重金属污染下植被红边位置的最佳小波包基系数应用模型。研究结果表明基于最佳小波包基参量的植被信息识别及基于最佳小波包基系数的重金属污染探测具有可行性与一定优越性。  相似文献   

5.
山东招远金矿区赤松针叶反射光谱红边的季节特征   总被引:10,自引:2,他引:10  
对山东招远金矿区进行了赤松针叶反射光谱红边 3个特征波长参量λpr、λpg、λog随季节变化规律的研究 ,结果表明 ,矿区相对于背景区 ,3个特征波长参量在全年内均呈现不同程度的“蓝移” ,当年生叶和去年生叶分别以秋季和春季“蓝移”最大 ,说明春季和秋季是高光谱分辨率遥感探测赤松林下金属矿藏的最好季节  相似文献   

6.
受蚜虫危害与干旱胁迫的冬小麦高光谱判别   总被引:2,自引:0,他引:2  
从高光谱遥感角度判别冬小麦旱害和蚜虫危害,可进一步提高遥感监测灾害的准确性.在麦长管蚜的自然危害下,通过控制其生育期水分条件形成的不同程度的干旱胁迫,监测了灌浆末期冬小麦冠层反射率对蚜虫危害和干旱胁迫的反应;并经一阶微分数据变换,筛选出识别蚜虫虫害和干旱胁迫响应最敏感的光谱波段.实验结果表明:受蚜虫危害和干旱胁迫后,灌浆末期冬小麦在近红外波段的光谱特征变化比在可见光波段的显著,可见光和近红外波段是识别蚜虫危害和干旱胁迫最敏感的谱段.经一阶微分数据变换发现,自然降水处理(灌水量相当于需水量的<40%)下的冬小麦光谱曲线的“红边”斜率最小;受蚜虫危害以及灌水量分别相当于需水量的>70%,60%~ 70%,50%~ 60%和40%~ 50%水分处理下的“红边”斜率依次变大;受蚜虫危害冬小麦光谱曲线的“红边”位置波长最短(698 nm),其他不同水分处理结果随着干旱胁迫的加重向波长短的方向发生“蓝移”.因此,“红边”参数也可以作为判别冬小麦蚜虫危害和干旱胁迫的重要参数.  相似文献   

7.
引黄灌区水稻红边特征及SPAD高光谱预测模型   总被引:1,自引:0,他引:1  
叶绿素含量是评估水稻长势和产量的重要参数。为了实现快速而准确的叶绿素含量估测,以宁夏引黄灌区宁粳43号水稻为试验对象,通过不同的氮素水平试验,测定了水稻在拔节期、抽穗期和乳熟期的冠层高光谱反射率和叶片绿色度土壤、作物分析仪器开发(soil and plant analyzer development,SPAD)值,分析了水稻不同时期冠层光谱的红边变化特征,并建立了SPAD的估测模型。结果表明,水稻叶片SPAD值随供氮水平的增加而增加,随生育期的变化表现为至抽穗期达到最高,而后逐渐降低。冠层光谱反射率随供氮水平的提高在可见光波段降低,在近红外波段增加。冠层光谱的红边位置、红边幅值和红边面积从拔节期到抽穗期呈现出"红移",至乳熟期呈"蓝移"现象,三个红边参数均随氮素水平的提高而增加。水稻拔节期是以红边面积为变量建立的模型对SPAD预测能力较好,而抽穗期和乳熟期则是以红边位置为参数建立的模型精度较高,与南方稻田叶绿素估算模型有所差异。利用高光谱技术对水稻SPAD值进行定量反演,可为西北地区水稻长势遥感监测提供理论依据。  相似文献   

8.
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   

9.
估算混合植被叶绿素含量的理想波段分析   总被引:2,自引:1,他引:1  
应用Lopex数据库评价了19个波谱指数对物种的敏感性, 分析了叶绿素含量与波谱反射率以及波谱导数的相关性, 目的在于探寻对叶绿素含量变化的敏感性, 对物种和叶片结构变化不敏感的理想波段, 应用大尺度遥感数据估算混合植被冠层叶绿素含量。分析结果表明:红边指数对混合植被的叶绿素含量具有较好的指示作用;估算冠层叶绿素含量的理想波段为698—710nm附近较窄的波段范围;对于波谱导数, 估算混合植被叶绿素含量的理想波段范围为720—735nm和535—550nm附近波谱导数。  相似文献   

10.
小麦生物量和真实叶面积指数的高光谱遥感估算模型   总被引:5,自引:0,他引:5  
利用大田小麦的参数数据和冠层光谱数据,基于光谱一阶微分技术和光谱响应函数,构建等效MODIS植被指数,建立小麦生物量(本文指总干生物量,下同)和真实叶面积指数的高光谱遥感估算模型.结果表明:①小麦生物量与冠层光谱在552 nm,721 nm处呈现最显著相关关系,叶面积指数与冠层光谱的相关性在400~1100 nm范围内较显著;②红边位置与生物量的关系最为显著,相关系数R为0.818;③6种等效MODIS植被指数中,增强型植被指数对生物量最为敏感;④红边位置估算小麦总生物量的指数模型最优,决定系数R2为0.829;⑤增强型植被指数与小麦叶面积指数的指数模型拟合度最强,决定系数R2为0.94.利用实测光谱模拟MODIS等效反射率构建植被指数反演小麦参数的方法,可为利用卫星数据进行大面积、无破坏和及时获取地面植被信息研究提供重要手段.  相似文献   

11.
用卫星高光谱数据提取德兴铜矿区植被污染信息   总被引:24,自引:7,他引:17  
在深入分析研究德兴铜矿矿区植被光谱特征的基础上,利用美国EO-1卫星Hyperion高光谱数据,通过反演表征植物生理状态的光谱特征参数(红边位置和最大吸收深度)变异,提取与污染相关的信息,获取了矿山植被污染生态效应概况,为矿山污染的诊断和监测提供新技术和知识支撑。  相似文献   

12.
13.
Sulfur dioxide (SO2) exhibits a powerful implication on the air condition and responsible for increasing the acidity of rainfall which plays negative effects on plant growth. It is a big problem to quantitatively access the stress degrees of sulfur dioxide on landscape plants. This study aims to find a non-destructive way to detect the degrees of SO2 stress by using the spectral reflectance data. Five different landscape plants were selected and a simulated SO2 stress environment by using fumigation box was built in this experiment. Landscape plants were grown on at this simulated SO2 environment, and the leaf reflectance, chlorophyll and sulfur concentration were measured at 0, 2, 4, 6, 8, 10 and 12 h respectively. The spectral, chlorophyll response of five different plants were examined and the red edge position (REP) shift obtained from the reflectance were used to evaluate the SO2 stress degrees at this paper. The results showed leaf chlorophyll content generally decreased and leaf sulfur content generally increased of all of these five landscape plants as though the chlorophyll and sulfur content disturbing during the whole stress time. However, compared with the sulfur content changed in leaves, chlorophyll content did not significantly changed when suffering from SO2. The shift of REP performed well to indicate the severity of SO2 fumigation stress and different species showed the different REP shift. The determined coefficient R2 of REP shift and the relative changed sulfur content in leaves can up to 0.85. And the results also indicated that the different species maintained different resistance to SO2.  相似文献   

14.
Quantification of chlorophyll content provides useful insight into the physiological performance of plants. Several leaf chlorophyll estimation techniques, using hyperspectral instruments, are available. However, to our knowledge, a non-destructive bark chlorophyll estimation technique is not available. We set out to assess Boswellia papyrifera tree bark chlorophyll content and to provide an appropriate bark chlorophyll estimation technique using hyperspectral remote sensing techniques. In contrast to the leaves, the bark of B. papyrifera has several outer layers masking the inner photosynthetic bark layer. Thus, our interest includes understanding how much light energy is transmitted to the photosynthetic inner bark and to what extent the inner photosynthetic bark chlorophyll activity could be remotely sensed during both the wet and the dry season. In this study, chlorophyll estimation using the chlorophyll absorption continuum index (CACI) yielded a higher R2 (0.87) than others indices and methods, such as the use of single band, simple ratios, normalized differences, and conventional red edge position (REP) based estimation techniques. The chlorophyll absorption continuum index approach considers the increase or widening in area of the chlorophyll absorption region, attributed to high concentrations of chlorophyll causing spectral shifts in both the yellow and the red edge. During the wet season B. papyrifera trees contain more bark layers than during the dry season. Having less bark layers during the dry season (leaf off condition) is an advantage for the plants as then their inner photosynthetic bark is more exposed to light, enabling them to trap light energy. It is concluded that B. papyrifera bark chlorophyll content can be reliably estimated using the chlorophyll absorption continuum index analysis. Further research on the use of bark signatures is recommended, in order to discriminate the deciduous B. papyrifera from other species during the dry season.  相似文献   

15.
On 3D Geo-visualization of a Mine Surface Plant and Mine Roadway   总被引:1,自引:0,他引:1  
Constructing the 3D virtual scene of a coal mine is the objective requirement for modernizing and processing information on coal mining production. It is also the key technology to establish a "digital...  相似文献   

16.
Integrating the Red Edge channel in satellite sensors is valuable for plant species discrimination. Sentinel-2 MSI and Rapid Eye are some of the new generation satellite sensors that are characterized by finer spatial and spectral resolution, including the red edge band. The aim of this study was to evaluate the potential of the red edge band of Sentinel-2 and Rapid Eye, for mapping festuca C3 grass using discriminant analysis and maximum likelihood classification algorithms. Spectral bands, vegetation indices and spectral bands plus vegetation indices were analysed. Results show that the integration of the red edge band improved the festuca C3 grass mapping accuracy by 5.95 and 4.76% for Sentinel-2 and Rapid Eye when the red edge bands were included and excluded in the analysis, respectively. The results demonstrate that the use of sensors with strategically positioned red edge bands, could offer information that is critical for the sustainable rangeland management.  相似文献   

17.
大米草室内叶片光谱特征参数与叶绿素浓度关系研究   总被引:1,自引:0,他引:1  
卢霞  刘付程  田慧娟 《测绘科学》2010,35(6):99-102
本文通过分析大米草叶片反射光谱特征,并提取红边位置、红边斜率和红边面积三个红边参数以及叶面叶绿素指数(LCI)、水分指数(WI)、三角植被指数(TVI)、结构相关色素指数(SIPI)四个高光谱植被指数,利用线性、对数、倒数、二次函数和三次函数曲线模拟算法得到大米草叶片叶绿素a浓度的高光谱估算模型。研究结果表明:叶绿素a浓度与红边斜率和红边面积在0.01水平上显著负相关,与LCI、WI和TVI在0.01水平上显著正相关。基于红边斜率、红边面积、TVI三个参数,选用倒数法构建叶绿素a浓度的估算模型精度明显高于其他算法。基于LCI和WI参数,应用三次函数法构建的叶绿素a浓度的高光谱检测模型精度明显高于其他算法。比较R2和模型估算误差,利用WI水分指数应用三次函数构建叶绿素a浓度的高光谱检测模型精度在所有模型中最高。因此,利用叶片光谱技术可以较高精度地估算叶绿素a浓度。  相似文献   

18.
本文分析了高光谱反射率及红边位置与叶片绿度的相关性,建立了基于敏感波段和红边位置的叶绿素估算模型。通过对不同叶绿素含量高光谱曲线特征的分析,提出了基于高光谱曲线峰度和偏度的叶绿素估算新思路,并分别建立基于原始光谱560-760nm波段和一阶导数光谱660-760nm波段对应峰度、偏度的叶绿素反演模型。结果表明,法国梧桐、无花果和白毛杨基于敏感波段的叶绿素含量反演模型的拟合度,与传统估算模型相比,本文提出的新估算模型可以明显提高高光谱反演叶绿素含量的能力。  相似文献   

19.
Aboveground biomass of sugar beet influences tuber growth and sugar accumulation. Thus, accurate, rapid, and non-destructive technique of biomass estimation is important to optimize the crop management practices to attain the required aboveground biomass to support high tuber yields and optimal sugar content. The current research aimed to evaluate the performance of hyperspectral indices and band depth analysis, to remotely assess the aboveground biomass in sugar beet. The biomass and hyperspectral reflectance were collected at different growth stages in experimental and farmers’ fields. The model development was based on sugar beet plants sampled at various times during the growing period subject to seven nitrogen rates. The results showed that accuracy of biomass estimation was greater when using vegetation indices involving red edge bands (680–740 nm) as compared to that using the red light-based indices. Four types of optimized band depth information (band depth, band depth ratio, normalized band depth index, and band depth normalized to band area) involving the red edge further increased the accuracy of biomass estimation. This study demonstrated as the sugar beet biomass increased towards later growing period, biomass estimation using red light-based vegetation indices were less accurate as compared to that using band depth analysis in the vicinity of the red edge.  相似文献   

20.
Field hyperspectral reflectance data were studied at 50 wavebands (10-nm bandwidth) over the 400- to 900-nm spectral range to determine their potential for distinguishing among giant salvinia (Salvinia molesta Mitchell) plants subjected to four population levels of salvinia weevils (Cyrtobagous salviniae Calder and Sands) to develop feeding damage to the plants. The four populations included a control with no insects and those with low, medium and high insect populations. The plants were studied in two experiments on each of two dates: 14 October 2010 and 21 July 2011. Two procedures were used to determine the optimum bands for discriminating among treatments: least significant difference (LSD) and stepwise discriminant analysis. The LSD comparison test results for both October and July experiments showed that generally the best bands for separating among treatments occurred in the green (505–595 nm), red (605–635 nm), red-near-infrared (NIR; 695–745 nm) edge and NIR (755–895 nm) regions where three to four treatments could be distinguished. Stepwise discriminant analysis identified four bands in the green, red and red-NIR edge to be significant to discriminate among the four treatments in Experiment 1 in October. For Experiment 2 in October, discriminant analysis identified five bands in the blue, green, red and NIR regions to be significant for distinguishing among the treatments. In Experiment 1 in July, five bands in the blue, green, red-NIR edge and NIR regions were found to be significant to discriminate among the treatments. For Experiment 2 in July, discriminant analysis identified four bands in the blue, green and red-NIR edge regions to be significant to discriminate among the treatments.  相似文献   

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