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1.
以高分一号(GF-1)16 m空间分辨率多光谱影像为数据源,对沙化土地类型的光谱特征以及其全年的NDVI变化特征进行了分析,发现时间序列数据变化信息可提高沙化土地类别之间的可分离度。对单一时相影像的分类结果和加入时间序列NDVI之后的分类结果进行了对比分析,结果表明,基于生长季单一时相原始影像的分类结果精度为73.34%,Kappa系数为0.7;非生长季单一影像与NDVI时间序列数据的分类结果总体精度为81.44%,Kappa系数为0.77;生长季单一时相影像并加入NDVI时间序列数据之后精度提高到了92.04%,Kappa系数达0.87,明显改善了对沙化土地类型的识别精度。表明单时相影像结合时间序列NDVI数据在沙化土地分类识别中有巨大的应用潜力。  相似文献   

2.
本文采用2013年QuickBird和2017年GF-1卫星遥感影像,以黑龙江省五常市为研究区,利用遥感影像的光谱特征提取纯净森林像元,构建整合森林指数(Integrated Forest Z-Score,IFZ)对影像的森林和非森林区域进行区分,叠加对比分析两期影像提取结果,得到研究区内林地的变化区域.再将自动提取结果与人工判读图斑进行精度验证,面积误差为4.2%,图斑重叠率为85%.从精度结果可知,高分辨遥感影像可以准确地监测林地变化,对研究环境变化和森林经营管理具有决策性作用.  相似文献   

3.
MODIS NDVI和AVHRR NDVI 对草原植被变化监测差异   总被引:5,自引:0,他引:5  
以草地作为研究载体,对比分析草原植被AVHRR NDVI和MODIS NDVI两种NDVI序列的年内、年际变化特征,讨论两种NDVI序列对降水量、平均气温和水汽压3种气候因子的响应差异,为合理选择NDVI序列对植被进行监测研究提供参考。结果表明:(1)两种NDVI序列所反映的草原植被年内变化趋势相似,但MODIS NDVI对各类草原的区分度优于AVHRR NDVI;(2)两种NDVI序列所反映的2000年—2003年草原植被年际变化差异明显。较之于MODIS NDVI,AVHRR NDVI变化趋势分类图表现出更强的植被改善趋势,植被改善面积在AVHRR NDVI变化趋势分类图中占94.25%,在MODIS NDVI中为83.33%;两种NDVI变化趋势分类图反映的植被变化趋势吻合度为52.88%。(3)两种NDVI序列与水汽压、降水量相关性差异显著。MODIS NDVI与各站点平均气温的相关系数均大于GIMMS NDVI;而MODIS NDVI与水汽压的相关系数83%(10个站点)小于GIMMS NDVI,与降水量的相关系数67%(8个站点)小于GIMMS NDVI。  相似文献   

4.
面向对象的多特征分级CVA遥感影像变化检测   总被引:1,自引:0,他引:1  
赵敏  赵银娣 《遥感学报》2018,22(1):119-131
变化矢量分析CVA方法在中低分辨率遥感影像变化检测中已得到广泛应用,但由于高分辨率遥感影像存在不同地物尺度差异大、不同类别地物光谱相互重叠的问题,因此对于高分影像的变化检测具有局限性。为提高高分影像变化检测精度,提出了一种面向对象的多特征分级CVA变化检测方法,首先,利用基于区域邻接图的影像分割方法分别对两时相遥感影像进行多尺度分割,提取分割图斑的光谱、纹理和形状特征;然后,在各级尺度下,分别运用随机森林方法进行特征选择,计算CVA变化强度图;最后,根据信息熵对多级变化强度图进行自适应融合,利用Otsu阈值法检测变化区域,并与仅考虑光谱特征的分级CVA变化检测方法、像元级多特征CVA变化检测方法以及仅考虑光谱特征的像元级CVA变化检测方法进行比较分析。实验表明:与比较方法相比,本文方法的变化检测精度较高,误检率和漏检率较低。  相似文献   

5.
基于面向对象变化向量分析法的遥感影像森林变化检测   总被引:1,自引:0,他引:1  
为探讨用于森林资源数据库更新的森林变化空间信息采集方法,以林地变化频繁快速、变化图斑多且小的广西上思县局部区域为研究区,以资源三号(ZY-3)和高分一号(GF-1)高空间分辨率卫星遥感图像和小班专题图为数据源,采用面向对象的变化向量分析(change vector analysis,CVA)方法,基于马氏距离、欧氏距离和相对误差距离度量变化强度,通过目标函数确定最佳检测阈值,以小班为单元进行森林变化检测。结果表明,用欧氏距离、马氏距离检测的森林变化结果都不甚理想,漏检率和误检率高,总体精度较低,Kappa系数较小;用相对误差距离检测的结果较好,漏检率(21.0%)和误检率(32.5%)均最小,总体精度最高(89.6%),Kappa系数最大(0.664);误检测的图斑多为成林地和无林地(建设用地、林区道路等),各个变化类型都出现了少量漏检图斑。  相似文献   

6.
研究波段参数对NDVI估算植被生物物理参数的影响,对于提高NDVI在植被覆盖变化监测中的应用精度具有重要意义。采用无人机载Resonon Pika XC2高光谱仪获取的人工草地高光谱影像,分析红光和近红外波段位置移动与宽度变化对NDVI的影响,评估NDVI对植被盖度的敏感性和植被盖度估算精度。结果表明:波段位置固定时红光和近红外波段宽度扩展对NDVI及其敏感性影响不大,窄波段NDVI估算植被盖度的精度优于宽波段。红光和近红外波段位置向长波方向移动时对NDVI及其敏感性有不同程度的影响,随着敏感性增强NDVI抗扰动性降低,估算植被盖度的精度有所下降。窄波段NDVI的灵敏度系数及其与植被盖度线性拟合的R2波动剧烈,植被盖度估算的位置稳定性较差。10 nm NDVI在不同位置处取得了较高的盖度估算精度,R2最大值为0.83。4种主流卫星影像计算的宽波段NDVI对于高植被覆盖区盖度反演具有良好的适用性,但与窄波段10 nm NDVI相比其盖度反演精度仍然有一定程度的衰减。研究结果可为NDVI精确反演植被参数提供科学参考和依据。  相似文献   

7.
为分析海南岛橡胶林物候特征,探究热带森林植被物候变化特征,本研究利用MODIS归一化植被指数(nor-malized difference vegetation index,NDVI)数据,采用Savitzky-Golay(S-G)滤波法重建2001—2015年的MODIS NDVI时间序列,利用动态阈值法和典型样区提...  相似文献   

8.
土地覆盖的短期时空变化模式研究,对土地覆盖的快速、动态监测具有重要意义,也是遥感研究的新热点。本文利用2000—2001年的时间序列Radarsat图像,采用功率谱分析方法,对土地覆盖的短期时—空变化的周期特征进行了分析,由此建立了基于时间序列影像分析的神经网络预测模型,从植被主要生长季节的时间序列雷达卫星影像获取训练样本,对研究区域的典型土地覆盖的短期动态变化过程进行了学习。学习后的模型能够利用多个时间序列的Radarsat影像对下一时刻的影像进行模拟,并进一步检测变化。在模拟结果基础上,定义相对变化距离函数和检测门限,对模拟影像及实际影像中的变化区域进行了检测。检测精度范围在66.67%(农村居民点)—91.67%(水体)之间,平均检测精度为81.66%。由于时间序列信号的引入,神经网络模型能够较好地获取土地覆盖的短期动态变化信息。  相似文献   

9.
南方人工林生长迅速,轮伐期短。为探讨一种有效更新森林资源数据库的森林变化检测方法,快速检测短时期内森林采伐与更新的动态变化。以变化频繁快速,变化图斑多且小的广西人工林作为研究区,以2个时相的高分二号(GF-2)影像为数据源,利用多尺度分割和光谱差异分割2种方法对2期影像进行分割,通过对象的归一化差值植被指数(normalized difference vegetation index,NDVI)差值并基于分布函数确定阈值来提取变化区域与变化类型,实现森林变化快速检测。基于像元采用同样的方法进行处理,与面向对象NDVI差值法进行比较。结果表明面向对象NDVI差值法的总体精度达89. 76%,Kappa系数为0. 81,精度和提取效果优于基于像元NDVI差值法,更能刻画变化图斑的形状和边界,也能较准确地检测出微小变化的面积。该方法能适应南方人工林的变化特点,在实现快速检测变化的目的下,可用于森林资源数据库的更新。  相似文献   

10.
基于NDVI序列影像精化结果的植被覆盖变化研究   总被引:5,自引:0,他引:5  
植被归一化指数(NDVI)是地表植被覆盖特征的重要指标之一。本文以三峡库区2001-2003年MODIS遥感数据反演的NDVI时间序列影像为例,研究NDVI影像序列的精化问题,包括降云及去噪处理的有效方法。在改进的BISE技术降云处理的基础上,采用小波软阈值降噪方法提取有效变化趋势。然后进行库区2001-2003年植被变化的变化矢量分析,采用阈值分割的方法将库区变化强度影像分为未变化、小变化、中等变化与剧烈变化四个类型。研究成果可为三峡库区宏观生态环境变化的掌握提供一定的依据。  相似文献   

11.
Forest cover plays a key role in climate change by influencing the carbon stocks, the hydrological cycle and the energy balance. Forest cover information can be determined from fine-resolution data, such as Landsat Enhanced Thematic Mapper Plus (ETM+). However, forest cover classification with fine-resolution data usually uses only one temporal data because successive data acquirement is difficult. It may achieve mis-classification result without involving vegetation growth information, because different vegetation types may have the similar spectral features in the fine-resolution data. To overcome these issues, a forest cover classification method using Landsat ETM+ data appending with time series Moderate-resolution Imaging Spectroradiometer (MODIS) Normalized Difference Vegetation Index (NDVI) data was proposed. The objective was to investigate the potential of temporal features extracted from coarse-resolution time series vegetation index data on improving the forest cover classification accuracy using fine-resolution remote sensing data. This method firstly fused Landsat ETM+ NDVI and MODIS NDVI data to obtain time series fine-resolution NDVI data, and then the temporal features were extracted from the fused NDVI data. Finally, temporal features combined with Landsat ETM+ spectral data was used to improve forest cover classification accuracy using supervised classifier. The study in North China region confirmed that time series NDVI features had significant effects on improving forest cover classification accuracy of fine resolution remote sensing data. The NDVI features extracted from time series fused NDVI data could improve the overall classification accuracy approximately 5% from 88.99% to 93.88% compared to only using single Landsat ETM+ data.  相似文献   

12.
This paper presents a new approach to improving land use/cover mapping accuracy in an urban environment. Bi-temporal Landsat TM images (1987 and 1997) were initially classified using the ISODATA method. An NDVI difference image was derived and classified, with each class indicating certain land use/cover changes. Temporal logical reasoning was then performed on the classified NDVI difference map and the initial land use/cover maps. The procedure successfully resolved the confusion between forest clear-cuts/fallow cropland and urban, as well as between forest clear-cuts and cropland. The kappa analysis test led to a Z value of 1.837 with the p-value of 0.026 for the year 1987, and a Z value of 1.924 with the p-value of 0.014 for 1997, indicating significant enhancement at the 95% confidence level.  相似文献   

13.
Each year thousands of ha of forest land are affected by forest fires in Southern European countries such as Spain. Burned area maps are a valuable instrument for designing prevention and recovery policies. Remote sensing has increasingly become the most widely used tool for this purpose on regional and global scales, where a large variety of techniques and data has been applied. This paper proposes a semiautomatic method for burned area mapping on a regional scale in Mediterranean areas (the Iberian Peninsula has been used as a study case). A Multi-layer Perceptron Network (MLPN) has been designed and applied to MODIS/Terra Surface Reflectance Daily L2G Global 500m SIN Grid multitemporal composite monthly images. The compositing criterion was based on maximum surface temperature. The research covered a six year period (2001–2006) from June to September, when most of the forest fires occur. The resulting burned area maps have been validated using official fire perimeters and compared with MODIS Collection 5 Burned Area Product (MCD45A1). The MLPN shown as an effective method, with a commission error of 29.1%, in the classification of the burned areas, while the omission error was of 14.9%. The results were compared with the MCD45A1 product, which had a slightly higher commission error (30.2%) and a considerably higher omission error (26.2%), indicating a high underestimation of the burned area.  相似文献   

14.
An extensive land cover change was triggered by a series of typhoons, especially Typhoon Morakot in 2009 in Taiwan. The normalized difference vegetation index (NDVI) series from multiple satellite images were applied to monitor the change processes of land cover. This study applied spatiotemporal analysis tools, including empirical orthogonal functions (EOF), and multiple variograms in analyzing space–time NDVI data, and detected the effects of large chronological disturbances in the characteristics of land cover changes. Spatiotemporal analysis delineated the temporal patterns and spatial variability of NDVI caused by these large typhoons. Results showed that mean of NDVI decreased but spatial variablity of NDVI increased after typhoons in the study area. The EOF can clarify the major component of NDVI variations and identify the core area of the NDVI changes. Various approaches showed consistent results that Typhoon Morakot significantly lowered the NDVI in land cover change process. Furthermore, the spatiotemporal analysis is an effective monitoring tool, which advocates the use of the index for the quantification of land cover change and resilience.  相似文献   

15.
The European Space Agency (ESA) is currently implementing the BIOMASS mission as 7th Earth Explorer satellite. BIOMASS will provide for the first time global forest aboveground biomass estimates based on P-band synthetic aperture radar (SAR) imagery. This paper addresses an often overlooked element of the data processing chain required to ensure reliable and accurate forest biomass estimates: accurate identification of forest areas ahead of the inversion of radar data into forest biomass estimates.The use of the P-band data from BIOMASS itself for the classification into forest and non-forest land cover types is assessed in this paper. For airborne data in tropical, hemi-boreal and boreal forests we demonstrate that classification accuracies from 90 up to 97% can be achieved using radar backscatter and phase information. However, spaceborne data will have a lower resolution and higher noise level compared to airborne data and a higher probability of mixed pixels containing multiple land cover types. Therefore, airborne data was reduced to 50 m, 100 m and 200 m resolution. The analysis revealed that about 50–60% of the area within the resolution level must be covered by forest to classify a pixel with higher probability as forest compared to non-forest. This results in forest omission and commission leading to similar forest area estimation over all resolutions. However, the forest omission resulted in a biased underestimated biomass, which was not equaled by the forest commission. The results underline the necessity of a highly accurate pre-classification of SAR data for an accurate unbiased aboveground biomass estimation.  相似文献   

16.
This study uses a multiple linear regression method to composite standard Normalized Difference Vegetation Index (NDVI) time series (1982-2009) consisting of three kinds of satellite NDVI data (AVHRR, SPOT, and MODIS). This dataset was combined with climate data and land cover maps to analyze growing season (June to September) NDVI trends in northeast Asia. In combination with climate zones, NDVI changes that are influenced by climate factors and land cover changes were also evaluated. This study revealed that the vegetation cover in the arid, western regions of northeast Asia is strongly influenced by precipitation, and with increasing precipitation, NDVI values become less influenced by precipitation. Spatial changes in the NDVI as influenced by temperature in this region are less obvious. Land cover dynamics also influence NDVI changes in different climate zones, especially for bare ground, cropland, and grassland. Future research should also incorporate higher-spatial-resolution data as well as other data types (such as greenhouse gas data) to further evaluate the mechanisms through which these factors interact.  相似文献   

17.
In this study, IRS 1C WiFS data have been used for the assessment of two natural resources i.e. forest cover and snow cover. These two resources have a great role to play in various hydrological studies such as floods, soil erosion and water pollution etc. Therefore their assessment is very useful in various hydrological studies and management of these resources. The assessment of snow and forest cover have been made on the basis of multispectral classification and classification of NDVI images. Newly created Uttaranchal state has been taken as the study area. These two resources have been estimated for all the thirteen districts of the state separately. The forest cover area estimated in this study is compared with the available data sets of Forest Survey of India (FSI). The estimated forest is 52%, whereas the forest cover reported by the FSI is 44.5% of the total geographical area of the state. The snow cover is estimated for the period after winter season i.e. maximum snow cover and before next winter season i.e. minimum snow cover. It is found that one quarter of the state is under snow cover covering six districts of the state. As such no estimate of snow cover at regional scale has been made so far therefore comparison of the present assessment could not be made.  相似文献   

18.
The current study was taken up to investigate the utility of remote sensing and GIS tools for evaluation of Integrated Wasteland Development Programme (IWDP) implemented during 1997–2001 in Katangidda Nala watershed, Chincholi taluk, Gulbarga district, Karnataka. The study was carried out using IRS 1C, LISS III data of December 11, 1997 (pre-treatment) and November 15, 2002 (post-treatment) covering the watershed to assess the changes in land use / land cover and biomass that have changed over a period of five years (1997–2002). The images were classified into different land use/land cover categories using supervised classification by maximum likelihood algorithm. They were also classified into different biomass levels using Normalized Difference Vegetation Index (NDVI) approach. The results indicated that the area under agriculture crops and forest land were increased by 671 ha (5.7%) and 1,414 ha (11.94%) respectively. This is due to the fact that parts of wastelands and fallow lands were brought into cultivation. This increase in the area may be attributed to better utilization of surface and ground waters, adoption of soil and water conservation practices and changes in cropping pattern. The area under waste lands and fallow lands decreased by 1,667 ha (14.07%) and 467 ha (3.94%), respectively. The vegetation vigour of the area was classified into three classes using NDVI. Substantial increase in the area under high and low biomass levels was observed (502 ha and 19 ha respectively). The benefit-cost analysis indicates that the use of remote sensing and GIS was 2.2 times cheaper than the conventional methods. Thus, the repetitive coverage of the satellite data provides an excellent opportunity to monitor the land resources and evaluate the land cover changes through comparison of images for the watershed at different periods.  相似文献   

19.
香宝  刘纪远 《遥感学报》2003,7(3):316-320
对1982—1993年气候年际变化的强信号——ENSO进行了确认及再分类。以美国地质调查局EROS中心提供的AVHRR 8km NDVI为数据源,应用地理信息系统技术,计算了1982—1993年每年夏季(5—9月)NDVI平均影像。在此基础上用数据断面分析法对ENSO年东亚地区土地覆盖的空间分布进行了分析,再用主成分分析法对同一时间序列NDVI平均影像进行了运算,发现其第7主成分影像所反映的土地覆盖分布与数据断面分析法所反映的结果是一致的。对此,进一步分析了第7主成分的特征向量与代表ENSO变化特征的南方  相似文献   

20.
东亚土地覆盖对ENSO事件的响应特征   总被引:3,自引:0,他引:3  
香宝  刘纪远 《遥感学报》2003,7(4):316-320
对1982—1993年气候年际变化的强信号——ENSO进行了确认及再分类。以美国地质调查局EROS中心提供的AVHRR 8km NDVI为数据源,应用地理信息系统技术,计算了1982—1993年每年夏季(5—9月)NDVI平均影像。在此基础上用数据断面分析法对ENSO年东亚地区土地覆盖的空间分布进行了分析,再用主成分分析法对同一时间序列NDVI平均影像进行了运算,发现其第7主成分影像所反映的土地覆盖分布与数据断面分析法所反映的结果是一致的。对此,进一步分析了第7主成分的特征向量与代表ENSO变化特征的南方涛动指数(SOI)之间的关系,进而,对ENSO驱动下的东亚地区土地覆盖年际变化的空间分布特征进行了总结。  相似文献   

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