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1.
GIS在统计行业中的应用   总被引:3,自引:0,他引:3  
地理信息系统技术在很多行业获得了成功的应用,但在统计行业中的应用却相对滞后。本文综述了地理信息系统在统计行业中的应用现状、优势及存在的问题,并对统计地理信息系统的解决方案作了简要分析,给出了建立统计G IS的技术方案和统计G IS的总体框架。  相似文献   

2.
剖析了GIS中的模型分类问题,提出三模型分类的观点,并提出利用面向对象思想建立空间数据处理模型库系统,用于快速开发模型库,为各方面用户提供一个模型维护、创建、支持空间分析和模拟功能的通用工具,以缓解GIS发展中空间分析能力差、决策支持能力弱的现状。本文详细分析了GIS模型库系统中模型的表示方法、模型库管理系统的功能实现、系统与外界GIS集成的典型问题,为面向对象的G0IS模型库系统建立提供了可行性思路。  相似文献   

3.
介绍G IS在水质模型方面及环境影响综合评价中的应用,并针对今后环境科学领域地理信息系统可能发展的几个向进行了预测和探讨。  相似文献   

4.
基于GIS的物流配送中心选址模型研究   总被引:1,自引:0,他引:1  
配送中心是物流网络中的重要节点,对于优化企业物流系统,合理配置库存资源,提高物流的共同化程度发挥着重要作用。本文应用G IS网络分析方法和改进P中心选址算法,建立了配送中心选址优化模型。该模型由几何网络确定配送中心与需求点间距离、并引入租金、坡度、库存量等因素参与模型计算,通过总费用最小化确定仓库的最佳位置。因采用多因素参与决策和算法的改进,提高了配送中心选址精度,降低了用户选择的盲目性。  相似文献   

5.
邓岳川  高德政 《测绘科学》2006,31(3):132-133
本文从矿产资源勘察领域的发展现状分析入手,采用信息系统实现的关键技术与方法,建立基于G IS的矿产资源勘察信息系统,并且构建了系统的三层架构体系,设计了系统数据库结构图和系统功能可视化组件图。通过此系统的设计和实现,揭示了G IS技术在此领域应用的可行性和广阔前景。  相似文献   

6.
提出了基于G IS的烟草精准施肥配方系统框架与实现方法,分析阐述了各个功能模块。建立了平顶山烟区生态环境空间数据库、精准施肥配方模型,并通过实验和专家经验建立了模型参数以及参数修正的专家模型。详细阐述了气象与土壤样点数据的处理和施肥模型中参数确定两个关键技术。系统在平顶山烟区指导烟草生产中取得了良好的效果。  相似文献   

7.
本文讨论了一个用于分析GIS中数据误差的简单统计模型,该模型还不是一项实用技术,只是今后长期研究的起点,以数字化过程为出发点建立了一个ARIMA模型,并论述了必须利用完全的,可计算型的统计质量模型来分析问题的复杂性和范围。  相似文献   

8.
基于GIS的城市警务决策支持系统的设计和开发   总被引:2,自引:1,他引:2  
杨昆  许泉立  彭双云  曹彦波 《测绘科学》2006,31(3):106-108,142
地理信息系统(G IS)应用于警务工作是当今警务信息化的重要内容之一。本文以实际的警用地理信息决策支持系统为基础,详细阐述了基于G IS的警务决策支持系统的设计原理和实现过程,为G IS在警务工作中的应用提供了一种解决思路和实现方法。  相似文献   

9.
浅析GIS中的空间分析与应用模型   总被引:6,自引:0,他引:6  
刘兴权  梁艳平 《四川测绘》2001,24(4):150-151,155
本文首先阐述了空间分析和应用模型的基本概念及其关系,进而从地理信息系统的功能分类入手,分析了空间分析,应用模型和GIS的辩证关系,最后指出:加强应用模型与GIS的结合以及增强GIS的基本空间分析功能是增强GIS整体功能的二个最有效的方法。  相似文献   

10.
基于MO的城市地理信息公众查询系统的研究与开发   总被引:14,自引:3,他引:11  
况代智 《测绘科学》2006,31(6):123-124
基于面向对象的地理信息系统技术,介绍利用组件技术及控件M apOb jects(MO)进行二次开发的特点与优势。结合城市地理信息公众查询系统原型的开发,详细阐述了运用高级程序语言C#和组件MO开发G IS应用系统的方法。该系统除具有一般管理系统的功能之外,还具有G IS所特有的空间查询和分析功能。用同样的技术和方法可以推广到建立同类型的信息系统,对扩大G IS的应用范围和应用领域具有现实意义。  相似文献   

11.
基于Web Services的GIS与应用模型集成研究   总被引:42,自引:1,他引:41  
于海龙  邬伦  刘瑜  李大军  刘丽萍 《测绘学报》2006,35(2):153-159,165
分析GIS与应用模型集成的研究现状及存在的问题。针对存在的问题,提出基于Web Services的GIS与应用模型集成方法。具体定义应用模型服务体系及其与空间信息服务体系的关系,讨论基于服务链的GIS-ervices与应用模型服务集成服务链样式、集成实现过程、集成开发流程,给出基于服务集成实现小流域地貌演化问题计算的服务集成分析设计与实验结果。实验结果证明本文提出的基于Web Services的GIS与应用模型集成方法正确可行。  相似文献   

12.
城市受人类活动影响比较大,结构组成比较复杂,对该区域进行分类研究存在一些问题。甚高分辨率遥感影像,以其丰富的细节信息为城市土地覆被分类研究提供了可能。本文结合使用甚高分辨率QuickBird遥感影像和激光扫描LIDAR数据,论述了利用多尺度、多变量影像分割的面向对象的分类技术对马来西亚基隆坡市城市中心区的土地覆被分类研究。针对特定地物选择合适的影像分割特征和分割尺度、按照合理的提取顺序逐步进行城市土地覆被信息提取。在建筑物的提取过程中构建了归一化数字表面模型nDSM,使用成员函数将建筑物信息提取出来。精度评价结果表明,利用该方法得到了理想的城市土地覆被分类结果,其分类总精度从常规面向对象分类方法的83.04%上升到88.52%,其中建筑物生产精度从60.27%增加到93.91%。  相似文献   

13.
基于多属性决策的统计数据分级评价模型   总被引:2,自引:0,他引:2  
江南  白小双  孙娟娟 《测绘学报》2007,36(2):198-202
通过对已有的专题数据分级评价模型进行分析研究,运用数理统计和决策理论,提出一种新的统计数据分级评价模型——多属性决策分级评价模型,即首先,以常用的分级数学模型作为决策方案;然后,选取分级精度、信息量、分级间隔作为方案的属性,用熵法确定各个属性的权重;最后,提出多属性决策分级评价模型,并通过建立的试验系统,进行数据实验。理论分析和实验结果表明,多属性决策分级评价模型具有很好的评价效果,为用户快速选择分级数学模型提供一种新方法。  相似文献   

14.
A major reason for the spectral distortions of fused images generated by current image-fusion methods is that the fused versions of mixed multispectral (MS) sub-pixels (MSPs) corresponding to panchromatic (PAN) pure pixels remain mixed. The MSPs can be un-mixed spectrally to pure pixels having the same land cover classes in a fine classification map during the fusion process. Since it is difficult to produce such a land cover classification map using only MS and PAN images, a Digital Surface Model (DSM) derived from airborne Light Detection And Ranging data were employed in this study to facilitate the classification. In a novel fusion method proposed in this paper, MSPs near and across boundaries between vegetation and non-vegetation are identified using MS, PAN, and normalized Digital Surface Model (nDSM). The identified MSPs then are fused to pure pixels with respect to the corresponding land cover class in the classification map. In a test on WorldView-2 images over an urban area and the corresponding nDSM, the fused image generated by the proposed method was visually and quantitatively compared with fused images obtained using common image-fusion methods. The fused images generated by the proposed method yielded minimal spectral distortions and sharpened boundaries between vegetation and non-vegetation.  相似文献   

15.
Land surface temperature (LST), a key parameter in understanding thermal behavior of various terrestrial processes, changes rapidly and hence mapping and modeling its spatio-temporal evolution requires measurements at frequent intervals and finer resolutions. We designed a series of experiments for disaggregation of LST (DLST) derived from the Landsat ETM + thermal band using narrowband reflectance information derived from the EO1-Hyperion hyperspectral sensor and selected regression algorithms over three geographic locations with different climate and land use land cover (LULC) characteristics. The regression algorithms applied to this end were: partial least square regression (PLS), gradient boosting machine (GBM) and support vector machine (SVM). To understand the scale dependence of regression algorithms for predicting LST, we developed individual models (local models) at four spatial resolutions (480 m, 240 m, 120 m and 60 m) and tested the differences between these using RMSE derived from cross-validated samples. The sharpening capabilities of the models were assessed by predicting LST at finer resolutions using models developed at coarser spatial resolution. The results were also compared with LST produced by DisTrad sharpening model. It was found that scale dependence of the models is a function of the study area characteristics and regression algorithms. Considering the sharpening experiments, both GBM and SVM performed better than PLS which produced noisy LST at finer spatial resolutions. Based on the results, it can be concluded that GBM and SVM are more suitable algorithms for operational implementation of this application. These algorithms outperformed DisTrad model for heterogeneous landscapes with high variation in soil moisture content and photosynthetic activities. The variable importance measure derived from PLS and GBM provided insights about the characteristics of the relevant bands. The results indicate that wavelengths centered around 457, 671, 1488 and 2013–2083 nm are the most important in predicting LST. Nevertheless, further research is needed to improve the performance of regression algorithms when there is a large variability in LST and to examine the utility of narrowband vegetation indices to predict the LST. The benefits of this research may extend to applications such as monitoring urban heat island effect, volcanic activity and wildfire, estimating evapotranspiration and assessing drought severity.  相似文献   

16.
The development and application of an algorithm to compute Köppen‐Geiger climate classifications from the Coupled Model Intercomparison Project (CMIP) and Paleo Model Intercomparison Project (PMIP) climate model simulation data is described in this study. The classification algorithm was applied to data from the PMIP III paleoclimate experiments for the Last Glacial Maximum, 21k years before present (yBP), Mid‐Holocene (6k yBP) and the Pre‐Industrial (0k yBP, control run) time slices. To infer detailed classification maps, the simulation datasets were interpolated to a higher resolution. The classification method presented is based on the application of Open Source Software, and the implementation is described with attention to detail. The source code and the exact input data sets as well as the resulting data sets are provided to enable the application of the presented approach.  相似文献   

17.
融合像素—多尺度区域特征的高分辨率遥感影像分类算法   总被引:1,自引:0,他引:1  
刘纯  洪亮  陈杰  楚森森  邓敏 《遥感学报》2015,19(2):228-239
针对基于像素多特征的高分辨率遥感影像分类算法的"胡椒盐"现象和面向对象影像分析方法的"平滑地物细节"现象,提出了一种融合像素特征和多尺度区域特征的高分辨率遥感影像分类算法。(1)首先采用均值漂移算法对原始影像进行初始过分割,然后对初始过分割结果进行多尺度的区域合并,形成多尺度分割结果。根据多尺度区域合并RMI指数变化和分割尺度对分类精度的影响,确定最优分割尺度。(2)融合光谱特征、像元形状指数PSI(Pixel Shape Index)、初始尺度和最优尺度区域特征,并对多类型特征进行归一化,最后结合支持向量机(SVM)进行分类。实验结果表明该算法既能有效减少基于像素多特征的高分辨率遥感影像分类算法的"胡椒盐"现象,又能保持地物对象的完整性和地物细节信息,提高易混淆类别(如阴影和街道,裸地和草地)的分类精度。  相似文献   

18.
Hyperspectral Image Classification Using Relevance Vector Machines   总被引:6,自引:0,他引:6  
This letter presents a hyperspectral image classification method based on relevance vector machines (RVMs). Support vector machine (SVM)-based approaches have been recently proposed for hyperspectral image classification and have raised important interest. In this letter, it is genuinely proposed to use an RVM-based approach for the classification of hyperspectral images. It is shown that approximately the same classification accuracy is obtained using RVM-based classification, with a significantly smaller relevance vector rate and, therefore, much faster testing time, compared with SVM-based classification. This feature makes the RVM-based hyperspectral classification approach more suitable for applications that require low complexity and, possibly, real-time classification.  相似文献   

19.
Automatic extraction of urban features from high resolution satellite images is one of the main applications in remote sensing. It is useful for wide scale applications, namely: urban planning, urban mapping, disaster management, GIS (geographic information systems) updating, and military target detection. One common approach to detecting urban features from high resolution images is to use automatic classification methods. This paper has four main objectives with respect to detecting buildings. The first objective is to compare the performance of the most notable supervised classification algorithms, including the maximum likelihood classifier (MLC) and the support vector machine (SVM). In this experiment the primary consideration is the impact of kernel configuration on the performance of the SVM. The second objective of the study is to explore the suitability of integrating additional bands, namely first principal component (1st PC) and the intensity image, for original data for multi classification approaches. The performance evaluation of classification results is done using two different accuracy assessment methods: pixel based and object based approaches, which reflect the third aim of the study. The objective here is to demonstrate the differences in the evaluation of accuracies of classification methods. Considering consistency, the same set of ground truth data which is produced by labeling the building boundaries in the GIS environment is used for accuracy assessment. Lastly, the fourth aim is to experimentally evaluate variation in the accuracy of classifiers for six different real situations in order to identify the impact of spatial and spectral diversity on results. The method is applied to Quickbird images for various urban complexity levels, extending from simple to complex urban patterns. The simple surface type includes a regular urban area with low density and systematic buildings with brick rooftops. The complex surface type involves almost all kinds of challenges, such as high dense build up areas, regions with bare soil, and small and large buildings with different rooftops, such as concrete, brick, and metal.Using the pixel based accuracy assessment it was shown that the percent building detection (PBD) and quality percent (QP) of the MLC and SVM depend on the complexity and texture variation of the region. Generally, PBD values range between 70% and 90% for the MLC and SVM, respectively. No substantial improvements were observed when the SVM and MLC classifications were developed by the addition of more variables, instead of the use of only four bands. In the evaluation of object based accuracy assessment, it was demonstrated that while MLC and SVM provide higher rates of correct detection, they also provide higher rates of false alarms.  相似文献   

20.
针对基于像元的非监督分类方法对高空间遥感影像分类时易形成“椒盐”噪声和产生大量错分、漏分的问题,提出了一种结合L0平滑和超像素的非监督分类方法.首先采用L0算法对高空间遥感影像进行平滑操作,减少大量图像噪声及冗余信息;然后采用简单的线性迭代聚类(SLIC)超像素方法处理平滑后图像,进一步抑制椒盐现象的同时降低处理复杂度,得到初始聚类图;最后采用K-means非监督分类方法得到最终分类结果图.为验证本文提出的方法,选取3景高空间遥感影像作为实验数据.试验结果表明,采用提出的方法能准确对地物分类,且总体精度分别达到了72.46%、77.55%和78.44%,Kappa系数分别达到0.788、0.779和0.779.提出方法能有效解决分类中存在的“椒盐”现象,可提高分类精度,对高空间遥感影像分类具有一定的参考价值.   相似文献   

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