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1.
In this letter, the problem of detecting urban road networks from high-resolution optical/synthetic aperture radar (SAR) images is addressed. To this end, this letter exploits a priori knowledge about road direction distribution in urban areas. In particular, this letter presents an adaptive filtering procedure able to capture the predominant directions of these roads and enhance the extraction results. After road element extraction, to both discard redundant segments and avoid gaps, a special perceptual grouping algorithm is devised, exploiting colinearity as well as proximity concepts. Finally, the road network topology is considered, checking for road intersections and regularizing the overall patterns using these focal points. The proposed procedure was tested on a pair of very high resolution images, one from an optical sensor and one from a SAR sensor. The experiments show an increase in both the completeness and the quality indexes for the extracted road network.  相似文献   

2.
This letter aims at the extraction of roads and road networks from high-resolution synthetic aperture radar data. Classical methods based on line detection do not use all the information available; indeed, in high-resolution data, roads are large enough to be considered as regions and can be characterized also by their statistics. This property can be used in a classification scheme. Therefore, this letter presents a road extraction method which is based on the fusion of classification (statistical information) and line detection (structural information). This fusion is done at the feature level, which helps to improve both the level of likelihood and the number of the extracted roads. The proposed approach is tested with two classification methods and one line extractor. Results on two different datasets are discussed.  相似文献   

3.
一种从SAR图像中提取城市道路网络的方法   总被引:6,自引:0,他引:6  
肖志强  鲍光淑 《测绘学报》2004,33(3):264-268
提出一种从高分辨率SAR图像中提取城市道路网络的算法.在高分辨率SAR图像中,道路在空间结构上表现为一细长的且宽度基本恒定不变的均匀区域.利用模糊C均值聚类方法对高分辨率SAR图像进行聚类分析,将道路类像素从原始图像中分离出来.为突出道路形状特征,减少冗余信息,对聚类结果进行细化,同时利用跟踪算子消除短线段;以提取道路中心线二值图的像素值作为图像能量,应用Snakes模型检测道路网络.通过实际SAR图像验证,该算法可以准确提取复杂的城市道路网络.  相似文献   

4.
李朝奎  曾强国  方军  吴馁  武凯华 《遥感学报》2021,25(9):1978-1988
针对目前利用高分遥感数据提取农村道路的研究与应用少,提取结果精准度不够的问题,提出了结合空洞卷积和ASPP(Atrous Spatial Pyramid Pooling)结构的改进全卷积农村道路提取网络模型DC-Net(Dilated Convolution Network)。该模型基于全卷积的编解码结构来提取道路深度特征信息,同时针对农村道路细长的特点,在解编码层之间加入了以空洞卷积为基础的ASPP(Atrous Spatial Pyramid Pooling)结构来提取道路的多尺度特征信息,在不牺牲特征空间分辨率的同时扩大了特征感受野FOV(Field-of-View),从而提高细窄农村道路的识别率。以长株潭城市群郊区部分区域为试验对象,以高分二号国产卫星遥感影像为实验数据,将本文提出的方法与经典的几种全卷积网络方法进行实验结果对比分析。实验结果表明:(1)本文所提出的道路提取模型DC-Net在农村道路的提取上具有可行性,整体提取平均精度达到98.72%,具有较高的提取精度;(2)对比几种经典的全卷积网络模型在农村道路提取上的效果,DC-Net在农村道路提取的精度和连结性、以及树木和阴影的遮挡方面,均表现出了较好的提取结果;(3)本文提出的改进全卷积网络道路提取模型能够有效地提取高分辨率遥感影像中农村道路的特征信息,总体提取效果较好,为提高基于国产高分影像的农村道路提取精度提供了一种新的思路和方法。  相似文献   

5.
方志祥  仲浩宇  邹欣妍 《测绘学报》1957,49(12):1554-1563
城市道路区域检测是城市土地管理、交通规划等领域的迫切需求,而传统城市道路区域检测多使用轨迹提取、遥感解译、人工采集等单独方式,在自动化程度或提取质量上存在一定的局限性。本文结合GNSS轨迹点与高分遥感影像各自的数据优势,提出一种基于轨迹延续性与影像特征相似性的遥感影像道路区域检测方法。该方法以出租车GNSS轨迹点构建轨迹特征栅格,基于轨迹延续性在平均方向特征栅格中划分路段对象,利用道路对象的光谱特征向轨迹无法覆盖的小区内部进行拓展,以获得提取区域内较为完整的道路信息。试验证明:本文方法可以有效降低道路的同物异谱现象及阴影、树木遮挡的影响,高效地提取高分遥感影像中的道路区域。与传统的遥感影像分类方法相比,具有更高的精度与自动化程度,相较于深度学习模型具有更广的适应性。  相似文献   

6.
王斌  陈占龙  吴亮  谢鹏  范冬林  付波霖 《遥感学报》2020,24(12):1488-1499
遥感影像道路提取结果中的断线一方面降低了提取精度,另一方面影响了道路形态完整性,使得提取结果不能直接应用于空间决策与分析。本文基于U-Net网络在高分辨率遥感影像道路提取时全局特征表达的优势,提出一种兼顾连通性的道路断线修复方法完善U-Net网络局部特征表达的劣势。首先,利用数据增强和扩充数据量后的样本数据作为U-Net网络的输入以此训练模型并进行最优模型的道路提取;然后,对提取结果中出现的道路断线以三次多项式曲线拟合的形式进行优化处理。实验表明,与相近网络比较,本文道路提取的精度和形态完整性有了明显的提高,查准率为86.25%,查全率为85.50%,F1-score达到了85.87%。其成果数据能直接地应用于地理决策分析,特别有利于灾后的路径规划,本文提出的方法对道路、电网、轨道、河流等线性地物分类结果中出现类似断线问题具有一定的参考意义。  相似文献   

7.
自发地理信息(VGI)是一种新兴的地理数据采集方式,具有数据更新快、细节丰富、覆盖范围广等优势。利用VGI数据可以对道路网实现快速更新;但是由于VGI数据是非专业自发共享的,且数据采集时多使用非专业设备,所以存在数据质量不高的问题。大量VGI数据对同一地理要素的重复采集与融合处理则可改善数据的质量,文中以多人采集的道路网数据为例,结合矢量要素的匹配与融合理论,设计一种适用于道路网VGI数据的匹配与融合算法。首先在路段结点处建立缓冲区进行结点匹配,再根据路段距离相似度进行路段匹配,最后再利用Delaunay三角剖分融合算法对匹配后的同名路段进行融合。将匹配融合后的道路网与原始道路网VGI数据及Google影像图叠加对比分析,结果表明利用本文算法可有效地实现道路网VGI数据的匹配与融合。  相似文献   

8.
矢量数据辅助的高分辨率遥感影像道路自动提取   总被引:1,自引:0,他引:1  
高分辨率遥感影像上细节信息繁杂、干扰物普遍存在,对其进行自动化道路识别与提取的相关研究仍处在探索阶段。在道路提取过程中引入矢量数据辅助,可解决初始信息获取的困难,得到可靠性较强的训练样本。为此,提出一种矢量数据辅助下的道路提取方法,能够筛选出矢量数据中包含的有效信息,引导实现对高分辨率遥感影像的道路自动提取。利用Mean-shift滤波对图像进行预处理后,首先从矢量数据获取候选种子点,并通过提炼同质区域的形状特征剔除错误候选点;然后,自动获取负样本点以进行朴素贝叶斯分类,并采用邻域质心投票算法从分类影像提取道路中心线;最后,结合像素跟踪与方向判断矢量化道路中心线,并提出一种基于矢量几何分析的断线连接与毛刺剔除方法,对提取结果进行信息修复与规整、优化。实验结果显示,该算法的提取质量达到80%以上,且具备较强的稳健性,能够适应具有不同道路辐射和分布特征的高分辨率遥感影像。  相似文献   

9.
Accurate and current road network data is fundamental to land management and emergency response, yet challenging to produce for unpaved roads in rural and forested regions using traditional cartographic approaches. Automatic extraction of roads from satellite imagery using deep learning is a promising alternative gaining increasing attention, however most efforts have focused on urban paved roads and used very high spatial resolution imagery, which is less frequently available for rural regions. Additionally, road extraction routines still struggle to produce a fully-connected, vectorized road network. In this study covering a large forested area in Western Canada, we developed and evaluated a routine to automatically extract unpaved road pixels using a convolutional neural network (CNN), and then used the CNN outputs to update a pre-existing government road network and evaluate if and how it would change. To cover the large spatial extent mapped in this study, we trained the routine using moderately high-resolution satellite imagery from the RapidEye constellation and a ground-truth dataset collected with smartphones by organizations already operating and driving in the region. Performance of the road extraction was comparable to results achieved by others using very high-resolution imagery; recall accuracy was 89–97%, and precision was 85–91%. Using our approach to update the pre-existing road network would result in both removals and additions to the network, totalling over 1250 km, or about 20 % of the roads previously in the network. We discuss how road density estimates in the study area would change using this updated network, and situate these changes within the context of ongoing efforts to conserve grizzly bears, which are listed as a Threatened species in the region. This study demonstrates the potential of remote sensing to maintain current and accurate rural road networks in dynamic forest landscapes where new road construction is prevalent, yet roads are also frequently de-activated, reclaimed or otherwise not maintained.  相似文献   

10.
城市道路的高精度提取可为城市三维表达、城市地形分析、城市建设规划、交通导航等提供数据基础和支撑。本文以合肥市局部城区为试验区,以开源路网、街景图像和遥感影像为数据源,在利用最大似然法进行初提取的基础上,通过空间分析、统计分析、几何量测、最小二乘拟合等方法进行粘连分割、缺失处理和交叉口细化等关键处理,构建了多源数据协同的城市道路提取方法,并对提取结果进行了精度评价和分析。试验结果表明,本文提出的城市道路提取方法优于最大似然和面向对象方法,提取总体精度为96.65%,Kappa系数为93.71%,道路宽度偏离标准差为0.03m,特别是对同物异谱、同谱异物及遮挡等造成的信息提取不全问题具有良好的改善效果。  相似文献   

11.
为避免由于城市道路复杂及树木建筑的阴影遮挡导致从遥感影像中提取道路信息不准确的问题,本文采用高分影像和LiDAR数据相融合的方法实现城市道路的提取,并使用一种基于最小面积外接矩形(MABR)的后处理改进方法进行完善。首先对试验区进行数据配准;然后应用FNEA算法进行图像分割,并使用随机森林分类法进行分类,将影像融合和对象形状指数等相关算子应用到道路提取中;最后去除植被和建筑物,完善道路填充,提取出道路完整信息。结果多伦多和台安试验区的道路完整度分别为95.41%和90.84%,准确度分别为83.07%和85.63%。本文方法可有效去除伪道路信息,提高道路提取完整度,较好地实现了道路信息提取。  相似文献   

12.
提出了一种从SAR影像的多个极化通道探测道路的新方法。首先,介绍了用边缘探测器构造道路探测器的方法; 然后,将多参数统计假设检验的方法应用到全极化影像的信息融合中,并将该方法提取的结果与传统Tupin法提取的结果进行了比较。实验表明,该方法对全极化SAR影像道路边缘的提取效果较好,具有一定的适用性。  相似文献   

13.
Automated procedures to rapidly identify road networks from high-resolution satellite imagery are necessary for modern applications in GIS. In this paper, we propose an approach for automatic road extraction by integrating a set of appropriate modules in a unified framework, to solve this complex problem. The two main properties of roads used are: (1) spectral contrast with respect to background and (2) locally linear path. Support Vector Machine is used to discriminate between road and non-road segments. We propose a Dominant singular Measure (DSM) for the task of detecting linear (locally) road boundaries. This pair of information of road segments, obtained using Probabilistic SVM (PSVM) and DSM, is integrated using a modified Constraint Satisfaction Neural Network. Results of this integration are not satisfactory due to occlusion of roads, variation of road material, and curvilinear pattern. Suitable post-processing modules (segment linking and region part segmentation) have been designed to address these issues. The proposed non-model based approach is verified with extensive experimentations and performance compared with two state-of-the-art techniques and a GIS based tool, using multi-spectral satellite images. The proposed methodology is robust and shows superior performance (completeness and correctness are used as measures) in automating the process of road network extraction.  相似文献   

14.
为了解决高分辨率遥感影像道路交叉口位置检测与类型识别问题,提出了一种基于可变形部件模型的道路交叉口检测方法。首先,分析了道路交叉口在高分辨率遥感影像上的表征形式;然后,借鉴面向对象的思想,利用可变形部件模型,通过训练和学习其整体和部件组成的空间布局特征获取目标对象模型参数;最后,通过滑动窗口搜索匹配方法获取道路交叉口位置和其对应的类型。由仿真与实验结果可知,此算法不仅能够自动、准确地检测道路交叉口的几何位置,而且能够识别其几何形状类型,可有效提高道路网络拓扑结构构建效率。  相似文献   

15.
Building detection from different high-resolution aerial and satellite images has been a notable research topic in recent decades. The primary challenges are occlusions, shadows, different roof types, and similar spectral behavior of urban covers. Integration of different data sources is a solution to supplement the input feature space and improve the existing algorithms. Regarding the different nature and unique characteristics of optical and radar images, there are motivations for their fusion. This paper is aimed to identify an optimal fusion of radar and optical images to overcome their individual shortcomings and weaknesses. For this reason, panchromatic, multispectral, and radar images were first classified individually, and their strengths and weaknesses were evaluated. Different feature-level fusions of these data sets were then assessed followed by a decision-level fusion of their results. In both the feature and decision levels of integration, artificial neural networks were applied as the classifiers. Several post-processing methods using normalized different vegetation index, majority filter, and area filter were finally applied to the results. Overall accuracy of 92.8% and building detection accuracy of 89.1% confirmed the ability of the proposed fusion strategy of optical and radar images for building detection purposes.  相似文献   

16.
According to spectral homogeneity and ribbon-like shape of road, this letter presents a simple yet effective method of delineating road networks from high-resolution remote sensing images. The proposed method consists of three main steps. First, the mean shift algorithm is utilized to detect the modes of density of image points in spectral–spatial space which contain potential road center points and then detected mode points are classified into different classes by mean shift-based clustering on the basis of spectral information. Next, the combination of Gabor filtering and tensor encoding is used to identify the road class and to extract road center points. Lastly, road network is generated from detected road center points by means of tensor voting and connected component analysis. The experimental results demonstrate good performances of the proposed method in road network extraction from high-resolution remote sensing images.  相似文献   

17.
基于多重信息融合的高分辨率遥感影像道路信息提取   总被引:8,自引:1,他引:7  
在高分辨率遥感影像上进行道路提取一直被认为是一项具有重要意义但很困难的工作。尤其一些与道路光谱相近的地物,分类后与道路相互连接,难以区分。基于面状道路和边缘相互验证和辅助的思想,提出一种高分辨率遥感影像上提纯道路信息的方法。该方法首先在面状和边缘两个方面同时提高提取精度,然后由他们之间的逻辑互运算分割道路与非道路对象,并应用有效的形状指数(如:极惯性矩和狭长度指数)刻画和区分道路与非道路面状目标(如楼房等),最终达到提纯道路的目的。实验结果表明了本文方法在去除非道路目标,提纯道路网络方面的有效性。  相似文献   

18.
19.
道路网络自动综合是地图综合的主要研究课题。本文通过引入对偶拓扑理论建立了城市道路网络的对偶拓扑结构,并将道路的重要性表达为路网中所有道路的重要度贡献的总和,进而提出了一种道路网络自动综合方法。实验表明,本文方法可以较为合理地选取路网中相对重要的道路,所选路网保持了原始路网的整体形态及拓扑连通。  相似文献   

20.
融合SAR和TM图像更新GIS道路网络数据   总被引:5,自引:0,他引:5  
遥感作为空间数据获取的一种手段,其在空间数据更新中的作用显得越来越重要,遥感数据已逐渐成为空间数据更新的主要数据来源。提出一种利用遥感图像自动更新GIS道路网络数据的方法,通过融合两种传感器图像数据,将整个道路网络准确完整地提取出来,然后通过线性特征的变化检测确定已修改的道路及新修建的道路。实验结果表明该方法可以准确地更新道路网络数据。  相似文献   

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