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1.
This paper presents a framework for road network change detection in order to update the Canadian National Topographic DataBase (NTDB). The methodology has been developed on the basis of road extraction from IRS-pan images (with a 5.8 m spatial resolution) by using a wavelet approach. The feature matching and conflation techniques are used to road change detection and updating. Elementary experiments have showed that the proposed framework could be used for developing an operational road database updating system.  相似文献   

2.
充分利用出租车GPS时空轨迹数据分布广和时效性强的特点,提出一种基于车载GPS轨迹数据的路网拓扑自动变化检测新方法。该方法首先利用向量相似性度量模型,度量GPS轨迹向量与路网局部拓扑向量之间的相似性,检测疑似道路拓扑变化点,然后通过比较疑似道路拓扑变化点与路网拓扑关系,完成新增、废弃、改建等道路变化,实现基于车载GPS轨迹的路网拓扑自动变化检测。实验结果表明,该方法不仅有效地检测出道路新增、道路废弃与道路改扩建等变化,而且能利用出租车实时和大范围分布特点来实现城市路网大范围实时变化检测。  相似文献   

3.
在城市双线道路数据更新的需求下,通过分析已有要素匹配方法,提出了一种顾及双线道路特征的单、双线道路匹配方法,用于提取城市双线道路增量更新中的变化信息。为保证双线道路的整体性,将双线道路多边形作为匹配对象,通过分析旧单线道路与多边形的方向、长度以及位置关系设计了单、双线道路匹配综合指标计算模型;然后,根据匹配综合指标确定单、双线道路匹配关系并提取变化信息。实验结果表明,该方法能够较好地满足双线道路更新中变化信息提取的要求,具有一定的实用性。  相似文献   

4.
以城区居民地为例,提出了一种面向跨比例尺新旧地图数据变化发现与更新方法。首先,从产生效应、发生源头、依附上下文关系、更新策略4个方面剖析大比例尺新数据与小比例尺旧数据间的变化;在此基础上,引入叠置运算与数据增强方法构建变化信息提炼与融合模型,形成"叠置分析与变化发现→增量提取→增量融合更新"的技术框架;最后,通过试验数据验证表明了方法的有效性,以及可扩展性强、适于图层级批处理更新等优点。  相似文献   

5.
道路网数据匹配是地理空间数据库进行变化探测和数据更新的重要前提,不同比例尺下的道路网之间的匹配是一个非常重要的部分。本文总结和分析了道路网匹配的已有算法,针对不同比例尺道路网之间的匹配可能存在的问题和难点,设计了一个融合多种匹配技术的算法。在考虑不同比例尺下道路网数据的特点基础上,改进了空间场景结构的评价方法;分析了stroke匹配算法在不同比例尺道路网数据下的局限性,提出了一种可针对不同比例尺下道路数据存在变化与更新的stroke部分匹配算法。试验表明,文中所提出的方法能够适应不同比例尺下道路网的匹配,匹配效果较好,运行效率较高。  相似文献   

6.
周秀华  李乃强 《测绘通报》2021,(8):102-105,157
随着城市建设步伐的加快和基础地理信息应用领域的扩展,国家经济建设和人民群众生活对基础地理信息的需求越来越大,对基础地理信息的现势性和更新频率也提出了更高的要求。因此,对不同精度、不同来源的地理信息数据融合技术进行研究具有十分重要的意义。道路实体是重要的基础地理信息,尤其是铁路、高速、国省道、城市主干道。本文重点围绕道路实体研究数据间的差异性,建立了自动匹配评价指标;并基于FME平台搭建同名匹配、变化检测和增量更新模型,实现了道路实体自动更新和融合,缩短了道路实体更新周期。“十三五”第2轮基础测绘更新项目利用该技术完成了重要道路实体的融合,证明了该技术的可行性和准确性,为新型基础测绘体系的建设提供了技术支撑。  相似文献   

7.
针对VGI数据中检测更新的问题,该文提出基于径向基函数的神经网络自动匹配算法。通过选取路段的距离、方向、形状和长度4个空间特征的相似度作为衡量路段是否匹配的指标。考虑到4个空间特征指标对匹配的影响力不同,在RBF(radial basis function)神经网络中的隐含层对基函数引入粒度拉伸因子,使径向对称的RBF顾及各向异性。同时对输出层在线性加权求和函数的基础上引入sigmoid函数,使计算结果(路段的匹配度值)归一化。该算法对数据质量较差的VGI路网具有很好的匹配能力,与BP神经网络相比,RBF神经网络在地图匹配中具有更好的匹配效率。  相似文献   

8.
由于互通式立交桥错综复杂的拓扑结构特点,使互通式立交桥更新时存在拓扑联通性维护困难的问题,针对该问题提出一种顾及拓扑联通性的互通式立交桥增量更新方法。该方法以21种互通式立交桥类型为基础,通过分析每种类型的拓扑结构特点,用计算匝道数和平面交点数组成的二元组值来识别这21种互通式立交桥;根据不同类型互通式立交桥需要维护的拓扑联通点和空间变化类型,设计66条互通式立交桥增量更新规则;最后在课题组1∶1万全球典型要素增量更新原型系统基础上,开发立交桥增量更新模块,实现互通式立交桥增量更新处理及拓扑联通关系维护的自动化。并以长沙市OSM道路网数据为试验数据,将其转换为1∶1万道路数据,验证本文方法的有效性。  相似文献   

9.
To enhance the ability of remote sensing system to provide accurate, timely, and complete geo-spatial information at regional or global scale, an automated change detection system has been and will continue to be one of the important and challenging problems in remote sensing. In this paper, the authors propose a framework for automated change detection system at landscape level using various geo-spatial data sources including multi-sensor remotely sensed imagery and ancillary data layers. In this framework, database is the central part and some associated techniques are discussed. These techniques includes five subsystems: automated feature-based image registration, automated change finding, automated change feature extraction and identification, intelligent change recognition, change accuracy assessment and database updating and visualization.  相似文献   

10.
1Currentchangedetectiontech niquesAutomaticchangedetectioninimagesofagivensceneacquiredatdifferenttimesisoneofthemostinterestingtopicsofimageprocessing .Itfindsim portantapplicationswithindifferentcontexts,rang ingfromvisualsurveillanceandvideocodingtot…  相似文献   

11.
为提高空间数据增量更新中拓扑冲突的检测效率,针对道路网数据,首先分析了增量要素进行更新时可能产生的拓扑冲突的类型和特点,运用规则格网进行邻近区域的表达;然后使用5元组模型描述增量要素与邻近区域要素间的拓扑关系,与设定的拓扑冲突表达进行比较,判断是否存在拓扑冲突。实验结果表明,本方法对于道路网数据增量更新中的拓扑冲突的类型区分准确全面,检测效率较高,具有很好的实用性和可靠性。  相似文献   

12.
多时相遥感影像图变化监测已经在国民经济及国防建设领域得到了广泛应用。通过分析同一地域不同时相的遥感图像变化监测提供地物发生变化的信息,对资源环境数据进行更新及利用。论文围绕变化监测中的一些关键理论方法进行了研究。  相似文献   

13.
GVF Snake与显著特征相结合的高分辨率遥感图像道路提取   总被引:2,自引:0,他引:2  
王峰萍  王卫星  薛柏玉  曹霆  高婷 《测绘学报》2017,46(12):1978-1985
高分辨率遥感图像中的道路信息,对地理信息系统数据库的更新具有重要的意义。本文通过分析道路在遥感图像中所呈现的特性,提出了一种基于显著特征和GVF Snake的高分辨率遥感图像道路提取方法。该方法根据视觉认知理论将道路的几何特性和辐射特征作为显著特性。首先,通过融合颜色对比度和空间统计特征计算显著性图,并以输出的显著图的最大值作为GVF Snake的初始种子点;再利用区域生长法求出道路的初始边界,通过梯度矢量流模型的迭代求解,并最小化能量函数,实现道路信息的自动提取。试验结果表明,本文所提出的方法提高了不仅可以提高计算效率,还具有较好的检测精度。  相似文献   

14.
Up to now, detailed strategies and algorithms of automatic change detection for road networks based on GIS have not been discussed. This paper discusses two different strategies of automatic change detection for images with low resolution and high resolution using old GIS data, and presents a buffer detection and tracing algorithm for detecting road from low-resolution images and a new profile tracing algorithm for detecting road from high-resolution images. For feature-level change detection (FL-CD), a so-called buffer detection algorithm is proposed to detect changes of features. Some ideas and algorithms of using GIS prior information and some context information such as substructures of road in high-resolution images to assist road detection and extraction are described in detail.  相似文献   

15.
Automatic Change Detection for Road Networks from Images Based on GIS   总被引:1,自引:0,他引:1  
Up to now, detailed strategies and algorithms of automatic change detection for road networks based on GIS have not been discussed. This paper discusses two different strategies of automatic change detection for images with low resolution and high resolution using old GIS data, and presents a buffer detection and tracing algorithm for detecting road from low-resolution images and a new profile tracing algorithm for detecting road from high-resolution images. For feature-level change detection (FL-CD), a so-called buffer detection algorithm is proposed to detect changes of features. Some ideas and algorithms of using GIS prior information and some context information such as substructures of road in high-resolution images to assist road detection and extraction are described in detail.  相似文献   

16.
获取现势性的交通道路数据是数字城市和智慧城市建设的基础,基于传统测绘的道路网更新方法存在一定局限性,而基于众源数据及行车轨迹数据更新道路网近年来则倍受关注。首先提出了一种新的道路变化增量更新方法,该方法先对历史道路网建立面拓扑结构,生成由道路网组成的最小闭合面域(道路网眼);然后以道路网眼为基本控制单元,综合利用轨迹点上下文距离信息和隐马尔可夫模型(hidden Markov model,HMM),提取失配轨迹点和失配轨迹段;最后采用缓冲区分析和最大密度法对失配轨迹提取骨架线,创建新增道路,增量更新历史道路网。实验结果表明,以道路网眼为控制单元,利用轨迹点上下文距离分析和HMM捕获失配轨迹点,可提高失配轨迹点的提取效率,改善道路网更新效果。该方法可用于大规模路网的增量式更新。  相似文献   

17.
根据网络系统发生正常改变的基本特征,提出了确定网络系统正常改变的“三条件”计算方法,其计算结果可作为更新正常轮廓的依据。对正常轮廓的更新问题进行了深入探讨,提出了自适应异常检测的实现机制。并以网络流量分析为例,验证了在异常检测中应用这一方法的可行性。  相似文献   

18.
Automatic change detection and geo-database updating in the urban environment are difficult tasks. There has been much research on detecting changes with satellite and aerial images, but studies have rarely been performed at the street level, which is complex in its 3D geometry. Contemporary geo-databases include 3D street-level objects, which demand frequent data updating. Terrestrial images provides rich texture information for change detection, but the change detection with terrestrial images from different epochs sometimes faces problems with illumination changes, perspective distortions and unreliable 3D geometry caused by the lack of performance of automatic image matchers, while mobile laser scanning (MLS) data acquired from different epochs provides accurate 3D geometry for change detection, but is very expensive for periodical acquisition. This paper proposes a new method for change detection at street level by using combination of MLS point clouds and terrestrial images: the accurate but expensive MLS data acquired from an early epoch serves as the reference, and terrestrial images or photogrammetric images captured from an image-based mobile mapping system (MMS) at a later epoch are used to detect the geometrical changes between different epochs. The method will automatically mark the possible changes in each view, which provides a cost-efficient method for frequent data updating. The methodology is divided into several steps. In the first step, the point clouds are recorded by the MLS system and processed, with data cleaned and classified by semi-automatic means. In the second step, terrestrial images or mobile mapping images at a later epoch are taken and registered to the point cloud, and then point clouds are projected on each image by a weighted window based z-buffering method for view dependent 2D triangulation. In the next step, stereo pairs of the terrestrial images are rectified and re-projected between each other to check the geometrical consistency between point clouds and stereo images. Finally, an over-segmentation based graph cut optimization is carried out, taking into account the color, depth and class information to compute the changed area in the image space. The proposed method is invariant to light changes, robust to small co-registration errors between images and point clouds, and can be applied straightforwardly to 3D polyhedral models. This method can be used for 3D street data updating, city infrastructure management and damage monitoring in complex urban scenes.  相似文献   

19.
多源空间数据匹配是空间数据集成与互操作,变化检测与数据更新的重要前提。路网数据匹配在导航、智能交通和基于位置服务等领域具有重要的研究意义和实用价值。本文提出一种基于概率松弛方法的城市路网自动匹配方法,该方法首先通过路段间几何差异性估算候选路段的初始概率,然后根据邻接候选匹配路段的兼容性不断更新原概率矩阵直到收敛于某一极小值。最后基于收敛的概率矩阵计算各候选路段的结构相似性,并通过设定相应的规则选取和提炼1: 1, 1: M和M: N匹配对。实验选取中国武汉,瑞士苏黎世地区的OpenStreetMap数据与导航数据进行匹配算法的验证。结果表明:本文算法对非刚性偏差较大的路网数据能达到较高精度,不存在匹配方向性问题,且能够识别1: 0, 1: M和M: N匹配。  相似文献   

20.
A non-recurrent road traffic anomaly refers to a sudden change in the capacity of a road segment, which deviates from the general traffic patterns, and is usually caused by abnormal traffic events such as traffic accidents and unexpected road maintenance. Timely and accurate detection of non-recurrent road traffic anomalies facilitates immediate handling to reduce the wastage of resources and the risk of secondary accidents. Compared with other types of traffic anomaly detection methods, prediction algorithms are suitable for detecting non-recurrent anomalies for their potential ability to distinguish non-recurrent anomalies from recurrent congestion (e.g., rush hours). A typical prediction algorithm detects an anomaly when the difference between the predicted traffic parameter (i.e., speed) and the actual one is greater than a threshold. However, the subjective setting of thresholds in many prediction algorithms greatly affects the detection performance. This study proposes a novel framework for non-recurrent road traffic anomaly detection (NRRTAD). The temporal graph convolutional network (T-GCN) model acts as the predictor to learn the general traffic patterns of road segments by capturing both the topological effects and temporal patterns of traffic flows, and to predict the “normal” traffic speeds. The hierarchical time memory detector (HTM-detector) algorithm acts as the detector to evaluate the differences between the predicted speeds and the actual speeds to detect non-recurrent anomalies without setting a threshold. In the experiments with traffic datasets of Beijing, NRRTAD outperformed other methods, not only achieving the highest detection rates but also exhibiting higher resilience to noise. The main advantages of NRRTAD are as follows: (1) adopting the T-GCN with a weighted graph to integrate differentiated connection strengths of multiple types of topological relations between road segments as well as temporal traffic patterns improves the prediction performance; and (2) utilizing a flexible mechanism in the HTM-detector to adapt to changing stream data not only avoids subjective setting of a threshold, but also improves the accuracy and robustness of anomaly detection.  相似文献   

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