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1.
地理国情普查最主要的内容是地表覆盖分类与重要地理国情要素,其中地表覆盖主要基于遥感或航空影像影像进行分割、分类,解译出地表覆盖物的类型,以便从地理的角度进行统计分析。大比例尺地形图具有地表覆盖物与地理要素丰富信息的特点,本文结合生产实践探索出一套大比例尺地形图数据应用于地理国情普查的有效技术方法。  相似文献   

2.
李博 《东北测绘》2014,(6):188-189,194
地理国情外业调查是地理国情普查工作十分重要的工作内容,是保证地理国情普查数据质量的关键环节。外业调查是对采集的地理国情要素和解译的地表覆盖分类成果以及内业无法定性的类型、边界和属性进行实地调查,同时采集遥感影像样本数据,为最终形成地理国情要素数据、地表覆盖分类数据成果和遥感影像解译样本数据库提供基础。  相似文献   

3.
地理国情普查主要是查清我国地形地貌、地表覆盖等自然和人文地理要素的现状和空间分布情况,建立普查成果数据库,为开展常态化的国情监测奠定基础。正确理解吉林省地理国情普查技术设计和作业指导书,以及国情普查的内容与指标,进行外业核查与遥感影像解译样本采集工作,为最终形成地理国情要素数据、地表覆盖分类数据和遥感影像解译样本数据库奠定基础。  相似文献   

4.
地表覆盖分类数据作为第一次地理国情普查成果重要的组成部分,其分类的正确性,主要依据影像判读.因此,影像地表覆盖分类判读问题成为内业质检过程中一个重要环节.现将针对在第一次地理国情普查内业质检中遇到的相同影像纹理分类判读、对地类定义理解不到位及采集尺度不统一等典型地表覆盖分类判读问题及错误产生的原因进行解析.  相似文献   

5.
曾波  赵展 《测绘通报》2015,(1):95-98
地表覆盖分类是我国地理国情普查的重要内容.地理国情普查要求的地物类别非常细致,对影像分类技术提出了很大的挑战.本文总结了山西省地理国情普查试点中的实践经验,结合面向对象分类技术、人工实地采集分类样本及分层次分类的思想,并加入适当的人工干预过程,提出了一个利用高分辨率遥感影像进行国情监测影像分类的方案.试验表明本文方案能够兼顾作业效率和分类精度,为我国国情普查的工程化作业提供了一条可行的备选技术路径.  相似文献   

6.
地物分类是地理国情变化监测的关键技术,选用福州仓山主城区两个时期的高分辨率影像作为研究对象,研究了利用面向对象分类技术进行地表覆盖分类并生成地理国情普查数据的方法和流程。同时,探讨了基于不同时期地理国情普查数据的空间分析统计结果,揭示地理国情变化规律及原因。  相似文献   

7.
王震 《测绘技术装备》2014,(1):52-53,42
WorldView卫星影像拥有很高的空间分辨率和丰富的光谱信息。宁夏地理国情普查试点工作中充分利用WorldView卫星影像的优势,生产正射影像,进行地表覆盖分类生产和地理国情要素提取,取得很好的效果,为宁夏地理国情普查的全区开展奠定了重要基础。  相似文献   

8.
地表覆盖要素分类提取是地理国情普查工作的基础, 是地理国情指标信息统计与发布的重要依据。本文结合武汉市第一次地理国情普查工作情况, 研究与分析了地表覆盖分类数据提取的现状和存在的相关问题, 提出了基于FME的地表覆盖分类数据编辑和检查、分类成果的坐标转换处理模式, 同时综合TCL脚本语言和命令行批处理模式对数据处理方式进行了优化。该方法能提高地表覆盖分类处理的效率和质量, 可以为地理国情普查工作中的地表覆盖要素分类处理提供重要的技术参考。  相似文献   

9.
地理国情普查中容易混分地表覆盖类型定量统计与分析   总被引:1,自引:0,他引:1  
地理国情普查是新形势下测绘地理信息领域一项新的重大工作,开展地理国情普查可以全面获取地理国情信息,为开展常态化地理国情监测奠定基础。地表覆盖分类数据是地理国情普查的重要组成部分和成果之一。本文针对目前地理国情普查工作实际数据采集过程中存在的混分问题,广泛收集了地表覆盖分类方面的典型样例和问题,从一级类内部混淆和跨一级类混淆两个方面统计和分析了容易混分的类型,探讨了容易混淆地表覆盖类型形成的原因和规律,并给出了提高分类精度的建议。本文研究结果可直接服务于地理国情普查工作的开展,为提高地表覆盖分类精度提供科学参考。  相似文献   

10.
地表覆盖分类和地理国情要素数据是地理国情普查成果数据的重要组成部分,同时也是统计分析的基本数据源。本文结合宁夏地理国情普查试点工作的技术和方法,详细阐述了普查试点生产过程中地表覆盖分类和地理国情要素信息的提取方法,并对生产技术方法进行了总结和探讨。  相似文献   

11.
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   

12.
为验证基于TM影像的面向对象分类方法对复杂地区地表覆被信息提取的可行性,以地处西南地区的渝北为例进行实验。利用样本数据对各个波段的光谱特征进行分析,取得对各波段覆被探测能力的初步认识;基于光谱特征的多尺度分割,运用面向对象分类方法对其分类。面向对象的分类方法总精度和Kappa系数分别为88.42%和0.854 7,将其与监督、非监督分类结果对比分析。结果表明,该方法有效抑制了"椒盐"现象,取得较好的分类结果。  相似文献   

13.
面向对象的高分辨率遥感影像土地覆盖信息提取   总被引:3,自引:0,他引:3  
利用高分辨率影象提取土地覆盖信息的关键技术在于如何利用丰富的纹理信息来弥补光谱信息的不足。面向对象的图像分类技术改变了传统的面向像素的分类技术:(1)用来解译图像的信息并不在单个像元中,而是在图像对象和其相互关系中;采用多分辨率对象分割方法生成图像对象,提高了分类信息的信噪比;基于对象的分类技术不同于纯粹的光谱信息分类,图像对象还包含了许多的可用于分类的一些其他特征:形状、纹理、相互关系、上下关系等信息。面向对象的土地覆盖分类结果与传统分类方法相比,其特征提取算子更加地适合于几何信息和结构信息丰富的高分辨率图像的自动识别分类。  相似文献   

14.
High spatial resolution satellite data contribute to improving land cover/land use (LCLU) classification in agriculture. A classification procedure based on Quickbird satellite image data was developed to map LCLU of diversified agriculture at sub-communal and communal level (7 km2). Segmentation performance of the panchromatic band in combination with high pass filters (HPF) was tested first. Accuracy of field boundary delineation was evaluated by an object-based segmentation, a per-field and a manual classification, along with a quantitative accuracy assessment. Sub-communal classification revealed an overall accuracy of 84% with a κ coefficient of 0.77 for the per-field vector segmentation compared to an overall accuracy of 56–60% and a κ coefficient of 0.37–0.42 for object-based approaches. Per-field vector segmentation was thus superior and used for LCLU classification at communal level. Overall accuracy scored 83% and the κ coefficient 0.7. In diversified agriculture, per-field vector segmentation and classification achieved higher classification results.  相似文献   

15.
The study investigates the performance of image classifiers for landscape-scale land cover mapping and the relevance of ancillary data for the classification success in order to assess and to quantify the importance of these components in image classification. Specifically tested are the performance of maximum likelihood classification (MLC), artificial neural networks (ANN) and discriminant analysis (DA) based on Landsat7 ETM+ spectral data in combination with topographic measures and NDVI. ANN produced high accuracies of more than 75% also with limited input information, while MLC and DA produced comparable results only by incorporating ancillary data into the classification process. The superiority of ANN classification was less pronounced on the level of the single land cover classes. The use of ancillary data generally increased classification accuracy and showed a similar potential for increasing classification accuracy than the selection of the classifier. Therefore, a stronger focus on the development of appropriate and optimised sets of input variables is suggested. Also the definition and selection of land cover classes has shown to be crucial and not to be simply adaptable from existing land cover class schemes. A stronger research focus towards discriminating land cover classes by their typical spectral, topographic or seasonal properties is therefore suggested to advance image classification.  相似文献   

16.
Geographic Object-based Image Analysis (GEOBIA) is increasingly used to process high-spatial resolution imagery, with applications ranging from single species detection to habitat and land cover mapping. Image segmentation plays a key role in GEOBIA workflows, allowing to partition images into homogenous and mutually exclusive regions. Nonetheless, segmentation techniques require a robust parameterization to achieve the best results. Frequently, inappropriate parameterization leads to sub-optimal results and difficulties in comparing distinct methods.Here, we present an approach based on Genetic Algorithms (GA) to optimize image segmentation parameters by using the performance scores from object-based classification, thus allowing to assess the adequacy of a segmented image in relation to the classification problem. This approach was implemented in a new R package called SegOptim, in which several segmentation algorithms are interfaced, mostly from open-source software (GRASS GIS, Orfeo Toolbox, RSGISLib, SAGA GIS, TerraLib), but also from proprietary software (ESRI ArcGIS). SegOptim also provides access to several machine-learning classification algorithms currently available in R, including Gradient Boosted Modelling, Support Vector Machines, and Random Forest.We tested our approach using very-high to high spatial resolution images collected from an Unmanned Aerial Vehicle (0.03 – 0.10 m), WorldView-2 (2 m), RapidEye (5 m) and Sentinel-2 (10 – 20 m) in six different test sites located in northern Portugal with varying environmental conditions and for different purposes, including invasive species detection and land cover mapping. The results highlight the added value of our novel comparison of image segmentation and classification algorithms. Overall classification performances (assessed through cross-validation with the Kappa index) ranged from 0.85 to 1.00. Pilot-tests show that our GA-based approach is capable of providing sound results for optimizing the parameters of different segmentation algorithms, with benefits for classification accuracy and for comparison across techniques. We also verified that no particular combination of an image segmentation and a classification algorithm is suited for all the tasks/objectives. Consequently, it is crucial to compare and optimize available methods to understand which one is more suited for a certain objective.Our approach allows a closer integration between the segmentation and classification stages, which is of high importance for GEOBIA workflows. The results from our tests confirm that this integration has benefits for comparing and optimizing both processes. We discuss some limitations of the SegOptim approach (and potential solutions) as well as a future roadmap to expand its current functionalities.  相似文献   

17.
Abstract

Attempts to analyze urban features and to classify land use and land cover directly from high‐resolution satellite data with traditional computer classification techniques have proven to be inefficient for two primary reasons. First, urban landscapes are composed of complex features. Second, traditional classifiers employ spectral information based on single pixel value and ignore a great amount of spatial information. Texture plays an important role in image segmentation and object recognition, as well as in interpretation of images in a variety of applications. This study analyzes urban texture features in multi‐spectral image data. Recent developments in the very powerful mathematical theory of wavelet transforms have received overwhelming attention by image analysts. An evaluation of the ability of wavelet transform in urban feature extraction and classification was performed in this study, with six types of urban land cover features classified. The preliminary results of this research indicate that the accuracy of texture analysis in classifying urban features in fine resolution image data could be significantly improved with the use of wavelet transform approach.  相似文献   

18.
地理国情普查项目使用的高分影像质量的良莠不齐给地表覆盖数据生产带来了巨大障碍。本文剖析了目前收集到的高分影像资料的主要缺陷,如多分辨率、多传感器、多年份和跨季节,给地表覆盖数据解译带来极大的局限性;阐述了Landsat 8影像自身的特点,如像幅面积大、获取周期短、波段信息丰富,同时提出利用Landsat 8影像辅助解译的思路,并通过试验验证这种方法的可行性。  相似文献   

19.
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   

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