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1.
基于ERDAS IMAGINE的数字正射影像图的制作   总被引:6,自引:0,他引:6  
ERDAS IMAGINE是美国ERDAS公司开发的专业遥感处理与地理信息系统软件,具有图像处理、虚拟地理信息、3维建模及支持数字摄影测量等强大的功能.以航空影像为例,阐述利用ERDAS IMAGINE 8.6制作正射影像图的方法,进一步指出制作过程中的一些注意事项.  相似文献   

2.
目前利用ERDAS IMAGINE软件进行影像纠正的技术和工艺已日益成熟和完美。通过ERDAS IMAGINE在1∶50000土壤底图纠正中的应用,从生产的角度叙述了ERDAS IMAGINE软件在影像纠正中的关键技术问题,主要包括基础地理信息数据的处理、地面控制点的选取和控制点的判读。  相似文献   

3.
基于ERDAS IMAGINE-C Toolkit的二次开发   总被引:1,自引:0,他引:1  
基于ERDAS IMAGINE软件的二次开发一直局限于使用MODEL模块进行,文中使用ERDAS 9.0作为开发平台,利用可视化开发工具Visual C 6.0和EML宏语言,采用ERDAS软件自带的C Toolkit模块,以将文本文档转换为矢量数据为例,探讨基于C Toolkit模块的二次开发,以解决ERDAS二次开发的局限性.  相似文献   

4.
介绍ERDAS IMAGINE空间模型参数客户化实现的具体方法,使用户在ERDAS IMAGINE中建立的图形模型可以方便地与其他用户进行交流.同时,若对多个文件进行相同算法处理时,该方法能明显节约时间、提高工作效率.  相似文献   

5.
IMAGINE地理空间光桌(Geospatial Light Table)是具有创新意义的强大地理空间分析环境,它将传统的光桌(lighttable)与GIS和ERDAS IMAGINE功能结合起来。通过汇合这些技术,ERDAS IMAGINE提供了适于将影像转换成完成的信息产品的理想工具,可广泛应用于地质找矿、国防军事及灾害评估制图等应用的快速解译。IMAGINE GLT还可为Leica Geosystems摄影测量全线产品和景观可视化产品提供地理空间处理扩展产品,同时也支持多光谱和高光谱影像。尽可能快地提取当今高质量影像中隐含的信息需求,使得高效利用分析者的时间和费用成为必要。  相似文献   

6.
ERDAS IMAGINE是业界唯一一个3S集成的企业级遥感图像处理系统,其发展方向侧重于遥感图像处理,同时致力于与地理信息系统的紧密结合,并且已经实现了与全球定位系统的集成.ERDAS IMAGINE系统还提供了完善的数字摄影测量、立体方式3D信息提取和雷达图像处理模块,不仅可以满足科研或教学需要,而且强调了大型工程建设工作的流程一体化、高效化和综合化.  相似文献   

7.
主要阐述ERDAS IMAGINE 9.1中LPS模块针对卫星影像、数码航片、普通框幅式扫描后航片进行DOM制作的过程。利用LPS模块,通过全数字工作站上采集的等高线、高程点、特征线、特征点,制作相关DEM数据,来纠正影像得到相关的DOM产品,然后对DOM数据精度进行统计分析,进行详细分析和论述。  相似文献   

8.
对遥感图像处理的目的是为了更好地提取地理信息,以便正确地认识客观世界。ERDAS IMAGINE为遥感及相关应用领域的用户提供了内容丰富而功能强大的图像处理工具。利用ERDAS IMAGINE提供的空间建模工具,从图像处理的基本原理出发,开发出几种图像增强的图形模型,使图像处理工作更易快捷实现,最后以模型运行的结果证实该处理方法的可行性。  相似文献   

9.
[本刊讯]2011年4月,徕卡测量系统贸易(北京)有限公司正式推出ERDAS 2011桌面产品汉化包。此汉化包是基于ERDAS 2011桌面产品(IMAGINE和LPS)英文版开发的。在徕卡美国ERDAS公司的支持下,徕卡测量  相似文献   

10.
随着遥感技术的飞速发展,多源空间数据应用越发广泛。由于不同数据源带来的数据之间坐标系统、数据格式、精度指标等差异,制约了多源影像数据的融合应用。因此,利用一定的数学方法,将不同坐标系统的影像相互转换变得尤为重要。本文针对多源影像数据坐标系统不统一、影响应用效率的问题,分别利用ERDAS IMAGINE软件和像素工厂软件进行坐标系统转换分析及实验,并利用外业控制点对转换后的成果进行精度验证,总结了ERDAS IMAGINE软件和像素工厂软件在数字正射影像坐标系统转换中的优缺点,为多源影像融合应用提供参考。  相似文献   

11.
单小军  唐娉  胡昌苗  唐亮  郑柯 《遥感学报》2014,18(2):254-266
环境与灾害监测预报小卫星星座(环境一号卫星,HJ-1A/B)自发射以来,在环境监测、灾害评估、土地资源调查等领域发挥了重要的作用。但是HJ-1A/B卫星CCD图像的2级产品(HJ-1 CCD图像)几何精度低,实际应用中需要进行几何精校正。HJ-1 CCD图像具有宽覆盖、大视场角、几何变形复杂的特点,几何精校正难度大。针对该问题,本文提出了一个以Landsat TM全球拼接图像为基准,基于Forstner算子和模板匹配的分层配准方法。该方法使用分层匹配获得的大量高精度且分布均匀的控制点构建Delaunay三角网,有效地解决了HJ-1 CCD图像的几何精校正问题。在配准技术研究的基础上,研发了HJ-1 CCD图像几何精校正系统,系统具有全球HJ-1 CCD图像的自动批量处理能力。实验结果表明,本文提出的几何精校正方法精度高,实现了环境星图像的自动批量处理。  相似文献   

12.
Mapping crop types is of great importance for assessing agricultural production, land-use patterns, and the environmental effects of agriculture. Indeed, both radiometric and spatial resolution of Landsat’s sensors images are optimized for cropland monitoring. However, accurate mapping of crop types requires frequent cloud-free images during the growing season, which are often not available, and this raises the question of whether Landsat data can be combined with data from other satellites. Here, our goal is to evaluate to what degree fusing Landsat with MODIS Nadir Bidirectional Reflectance Distribution Function (BRDF)-Adjusted Reflectance (NBAR) data can improve crop-type classification. Choosing either one or two images from all cloud-free Landsat observations available for the Arlington Agricultural Research Station area in Wisconsin from 2010 to 2014, we generated 87 combinations of images, and used each combination as input into the Spatial and Temporal Adaptive Reflectance Fusion Model (STARFM) algorithm to predict Landsat-like images at the nominal dates of each 8-day MODIS NBAR product. Both the original Landsat and STARFM-predicted images were then classified with a support vector machine (SVM), and we compared the classification errors of three scenarios: 1) classifying the one or two original Landsat images of each combination only, 2) classifying the one or two original Landsat images plus all STARFM-predicted images, and 3) classifying the one or two original Landsat images together with STARFM-predicted images for key dates. Our results indicated that using two Landsat images as the input of STARFM did not significantly improve the STARFM predictions compared to using only one, and predictions using Landsat images between July and August as input were most accurate. Including all STARFM-predicted images together with the Landsat images significantly increased average classification error by 4% points (from 21% to 25%) compared to using only Landsat images. However, incorporating only STARFM-predicted images for key dates decreased average classification error by 2% points (from 21% to 19%) compared to using only Landsat images. In particular, if only a single Landsat image was available, adding STARFM predictions for key dates significantly decreased the average classification error by 4 percentage points from 30% to 26% (p < 0.05). We conclude that adding STARFM-predicted images can be effective for improving crop-type classification when only limited Landsat observations are available, but carefully selecting images from a full set of STARFM predictions is crucial. We developed an approach to identify the optimal subsets of all STARFM predictions, which gives an alternative method of feature selection for future research.  相似文献   

13.
Landsat data are the longest available records that consistently document global change. However, the extent and degree of cloud coverage typically determine its usability, especially in the tropics. In this study, scene-based metadata from the U.S. Geological Survey Landsat inventories, ten-day, monthly, seasonal, and annual acquisition probabilities (AP) of targeted images at various cloud coverage thresholds (10% to 100%) were statistically analyzed using available Landsat TM, ETM+, and OLI observations over mainland Southeast Asia (MSEA) from 1986 to 2015. Four significant results were found. First, the cumulative average acquisition probability of available Landsat observations over MSEA at the 30% cloud cover (CC) threshold was approximately 41.05%. Second, monthly and ten-day level probability statistics for the 30% CC threshold coincide with the temporal distribution of the dry and rainy seasons. This demonstrates that Landsat images acquired during the dry season satisfy the requirements needed for land cover monitoring. Third, differences in acquisition probabilities at the 30% CC threshold are different between the western and eastern regions of MSEA. Finally, the ability of TM, ETM+, and OLI to acquire high-quality imagery has gradually enhanced over time, especially during the dry season, along with consequently larger probabilities at lower CC thresholds.  相似文献   

14.
以光伏电场为代表的新能源在我国尤其是西部荒漠地区发展迅猛,利用遥感信息分析方法自动、快速、准确获取该类能源用地具有重要现实意义。以宁夏中卫市沙漠光伏产业园为研究区,在基于对象影像分析方法的支持下分析了光伏电场在Landsat 8 OLI、World View Ⅱ和高分-1号(GF-1)遥感影像上的光谱、纹理等特征并进行了提取试验。  相似文献   

15.
Yellowstone National Park (YNP) is legally mandated to monitor geothermal features for their future preservation, and remote sensing is a component of the current monitoring plan. Landsat imagery was explored as a tool for mapping terrestrial emittance and geothermal heat flux for this purpose. Several methods were compared to estimate terrestrial emittance and geothermal heat flux (GHF) using images from 2007 (Landsat Thematic Mapper) and 2002 (Landsat Thematic Mapper Plus). Accurate estimations were reasonable when compared to previously established values and known patterns but were likely limited due to inherent properties of Landsat data, the effects of solar radiation, and variation among geothermal areas. Landsat data can be valuable for calculation of GHF in YNP. The method suggested in this paper is not highly parameterized. Landsat data provide the means to calculate GHF for all of YNP and have the potential to enable scientists to identify locations for in-depth study.  相似文献   

16.
Cyanobacterial bloom is a growing environmental problem in inland waters. In this study, we propose a method for monitoring levels of cyanobacterial blooms from Landsat/ETM+ images. The visual cyanobacteria index (VCI) is a simple index for in-situ visual interpretation of cyanobacterial blooms levels, by classifying them into six categories based on aggregation (e.g., subsurface blooms, surface scum). The floating algae index (FAI) and remote sensing reflectance in the red wavelength domain, which can be obtained from Landsat/ETM+ images, were related to the VCI for estimating cyanobacteria bloom levels from the Landsat/ETM+ images. Nine field campaigns were carried out at Lakes Nishiura and Kitaura (Lake Kasumigaura group), Japan, from June to August 2012. We also collected reflectance spectra at 20 stations for different VCI levels on August 3, 2012. The reflectance spectra were recalculated in correspondence to each ETM+ band, and used to calculate the FAI. The FAI values were then used to determine thresholds for classifying cyanobacterial blooms into different VCI levels. These FAI thresholds were validated using three Landsat/ETM+ images. Results showed that FAI values differed significantly at the respective VCI levels except between levels 1 and 2 (subsurface blooms) and levels 5 and 6 (surface scum and hyperscum). This indicated that the FAI was able to detect the high level of cyanobacteria that forms surface scum. In contrast, the Landsat/ETM+ band 3 reflectance could be used as an alternative index for distinguishing surface scum and hyperscum. Application of the thresholds for VCI classifications to three Landsat/ETM+ images showed that the volume of cyanobacterial blooms can be effectively classified into the six VCI levels.  相似文献   

17.
Accurate wetland maps are a fundamental requirement for land use management and for wetland restoration planning. Several wetland map products are available today; most of them based on remote sensing images, but their different data sources and mapping methods lead to substantially different estimations of wetland location and extent. We used two very high-resolution (2 m) WorldView-2 satellite images and one (30 m) Landsat 8 Operational Land Imager (OLI) image to assess wetland coverage in two coastal areas of Tampa Bay (Florida): Fort De Soto State Park and Weedon Island Preserve. An initial unsupervised classification derived from WorldView-2 was more accurate at identifying wetlands based on ground truth data collected in the field than the classification derived from Landsat 8 OLI (82% vs. 46% accuracy). The WorldView-2 data was then used to define the parameters of a simple and efficient decision tree with four nodes for a more exacting classification. The criteria for the decision tree were derived by extracting radiance spectra at 1500 separate pixels from the WorldView-2 data within field-validated regions. Results for both study areas showed high accuracy in both wetland (82% at Fort De Soto State Park, and 94% at Weedon Island Preserve) and non-wetland vegetation classes (90% and 83%, respectively). Historical, published land-use maps overestimate wetland surface cover by factors of 2–10 in the study areas. The proposed methods improve speed and efficiency of wetland map production, allow semi-annual monitoring through repeat satellite passes, and improve the accuracy and precision with which wetlands are identified.  相似文献   

18.
China–Brazil Earth Resource Satellite (CBERS) imagery is identified as one of the potential data sources for monitoring Earth surface dynamics in the event of a Landsat data gap. Currently available multispectral images from the High Resolution CCD (Charge Coupled Device) Camera (HRCC) on-board CBERS satellites (CBERS-2 and CBERS-2B) are not precisely geo-referenced and orthorectified. The geometric accuracy of the HRCC multispectral image product is found to be within 2–11 km. The use of CBERS-HRCC multispectral images to monitor Earth surface dynamics therefore necessitates accurate geometric correction of these images. This paper presents an automated method for geo-referencing and orthorectifying the multispectral images from the HRCC imager on-board CBERS satellites. Landsat Thematic Mapper (TM) Level 1T (L1T) imagery provided by the U.S. Geological Survey (USGS) is employed as reference for geometric correction. The proposed method introduces geometric distortions in the reference image prior to registering it with the CBERS-HRCC image. The performance of the geometric correction method was quantitatively evaluated using a total of 100 images acquired over the Andes Mountains and the Amazon rainforest, two areas in South America representing vastly different landscapes. The geometrically corrected HRCC images have an average geometric accuracy of 17.04 m (CBERS-2) and 16.34 m (CBERS-2B). While the applicability of the method for attaining sub-pixel geometric accuracy is demonstrated here using selected images, it has potential for accurate geometric correction of the entire archive of CBERS-HRCC multispectral images.  相似文献   

19.
基于超分辨率重建的多时相MODIS与Landsat反射率融合方法   总被引:1,自引:0,他引:1  
赵永光  黄波  汪超亮 《遥感学报》2013,17(3):590-608
提出一种基于超分辨率重建的MODIS与Landsat反射率图像融合方法,以STARFM算法与超分辨率重建为基础,使用观测的MODIS和Landsat地表反射率图像预测给定时刻的Landsat合成反射率图像。该方法利用基于稀疏表示的超分辨率重建方法对MODIS图像进行分辨率增强,实验结果表明这一操作能够增加原MODIS图像的空间细节,有助于提高STARFM算法的预测精度;另一方面,考虑输入两个基时刻图像相差较大时原STARFM算法预测的反射率会存在"时间平滑"的问题,限制每次只使用一个基时刻MODIS和Landsat图像对进行STARFM预测,使用逐图像块选择策略,从由两个基时刻图像分别进行预测得到的两组预测图像中选择最优的预测,同样得到了优于STARFM算法的预测结果。  相似文献   

20.
Crop type data are an important piece of information for many applications in agriculture. Extracting crop type using remote sensing is not easy because multiple crops are usually planted into small parcels with limited availability of satellite images due to weather conditions. In this research, we aim at producing crop maps for areas with abundant rainfall and small-sized parcels by making full use of Landsat 8 and HJ-1 charge-coupled device (CCD) data. We masked out non-vegetation areas by using Landsat 8 images and then extracted a crop map from a long-term time-series of HJ-1 CCD satellite images acquired at 30-m spatial resolution and two-day temporal resolution. To increase accuracy, four key phenological metrics of crops were extracted from time-series Normalized Difference Vegetation Index curves plotted from the HJ-1 CCD images. These phenological metrics were used to further identify each of the crop types with less, but easier to access, ancillary field survey data. We used crop area data from the Jingzhou statistical yearbook and 5.8-m spatial resolution ZY-3 satellite images to perform an accuracy assessment. The results show that our classification accuracy was 92% when compared with the highly accurate but limited ZY-3 images and matched up to 80% to the statistical crop areas.  相似文献   

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