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1.
基于高分辨率遥感影像的汶川地震道路损毁评估   总被引:6,自引:0,他引:6  
强烈地震造成道路基础设施的损毁,严重影响应急救灾工作.因此,及时准确地对灾区道路损毁情况进行评估,具有十分重要的现实意义.以汶川特大地震道路损毁评估工作为例,介绍了利用高分辨率卫星遥感影像进行地震灾害道路损毁评估的技术方法.通过对灾区20个县(市、区)国/省道基础设施损毁情况评估,结果表明,汶川、北川等6个县道路重度损毁,3个县(市)中度损毁,11个县(区)轻度损毁.表明该方法能够在应急期间缺乏地面调查的情况下,充分利用高分辨率遥感图像,对道路震害损毁进行快速及较为准确的评估.  相似文献   

2.
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   

3.
针对多时相遥感影像变化检测存在数据不确定性、检测精度不高等问题,提出了一种结合变化向量分析(CVA)和直觉模糊C均值聚类算法(IFCM)的多时相遥感影像变化检测方法. 首先通过CVA构建两个时相遥感影像的差异影像;然后采用直觉模糊C均值聚类算法对差异影像进行聚类得出变化区域和未变化区域;最后对变化检测结果进行二值化处理并进行精度评价. 选取两个时相的高分一号遥感影像和Szada数据集影像作为实验数据. 实验结果表明,采用提出的方法可有效解决传统方法存在的数据不确定性问题,变化检测精度达到了95.92%和92.70%,是一种可行的遥感影像变化检测方法. 研究结果可用于森林动态变化监测、土地复垦利用规划变化分析以及灾损评估.   相似文献   

4.
Two new methods for fusion of high-resolution optical and radar satellite images have been proposed to extract roads in high quality in this paper. Two fusion methods, including neural network and knowledge-based fusion are introduced. The first proposed method consists of two stages: (i) separate road detection using each dataset and (ii) fusion of the results obtained using a neural network. In this method, the neural networks are separately applied on high-resolution IKONOS and TerraSAR-X images for road detection, using a variety of texture parameters. The outputs of two neural networks, as well as the spectral features of optical image, are used in a third neural network as inputs. The second method is a knowledge-based fusion using thresholds of narrow roads and vegetation gray levels. First roads are extracted from each source separately. The outputs are then compared and advantages and disadvantages of each data source are investigated . The results obtained from accuracy assessment show the efficiency of the proposed methods. Furthermore, the comparison of the results showed the superiority of the first algorithm.  相似文献   

5.
基于区域特征的高分辨率遥感影像变化检测研究   总被引:1,自引:0,他引:1  
传统像素级变化检测往往忽略邻近有意义的整片区域的空间、纹理、结构等信息,对高分辨率遥感影像具有很大的局限性。本文利用面向对象的思想,提出了一种基于区域特征的特定目标变化检测方法。该方法的技术流程包括:数据预处理;同质区域获取;区域特征选择;同名区域搜索;区域特征比较;变化检测精度评价及变化显示。利用提出的方法对伊朗2003年地震前后的巴姆古城标志性建筑进行检测,总体精度达到89.73%。  相似文献   

6.
A road detection method based on Circular Projection (CP) matching and tracking strategy is proposed in this paper. The CP matching is a template matching-based algorithm with rotation invariant and low computation characteristics. This advantage is beneficial for twisty roads detection. Take the good use of the advantage, we improve the CP matching to make it more applicable for road detection, including: optimal template radius selection, approximation control parameter, and anti-interference correction for suppressing brightness and random noise affects. The overall road detection is using a dual-directional tracking strategy. In road tracking, we use a fan-shaped scope to limit the direction of template matching to prevent backtracking. In tracking procedure, we propose an adaptive template matching algorithm, overcoming changes between the selected template and targets. Finally, SPOT-5 and GeoEye-1 remote sensing images are used for experiment. The experimental result shows that the proposed method is rotation invariant, flexible and fast, which is applicable to the twisty road detection. The experiment results also show that road detection error is about 2?~?5 m, and detection accuracy is higher than 80 %.  相似文献   

7.
Roads and buildings constitute a significant proportion of urban areas. Considerable amount of research has been done on the road and building extraction from remotely sensed imagery. However, a few of them have been concentrating on using only spectral information. This study presents a comparison between three object-based models for urban features’ classification, specifically roads and buildings, from WorldView-2 satellite imagery. The three applied algorithms are support vector machines (SVMs), nearest neighbour (NN) and proposed rule-based system. The results indicated that the proposed rules in this study, despite the spectral complexity of land cover types, performed a satisfactory output with an overall accuracy of 92.92%. The advantages offered by the proposed rules were not provided by other two applied algorithms and it revealed the highest accuracy compared to SVM and NN. The overall accuracy for SVM was 76.76%, which is almost similar to the result achieved by NN (77.3%).  相似文献   

8.
宋桔尔  王雪  李培军 《遥感学报》2012,16(6):1233-1245
将两种基于地统计学的纹理特征加入到高分辨率遥感影像的城市建筑物倒塌探测中,考察了多尺度纹理对探测结果的影响.采用基于单类支持向量机的多时相直接分类方法提取建筑物倒塌信息.以伊朗巴姆地区2003 年12 月地震前后的Quickbird 遥感影像为数据源,评价和验证了本文方法的有效性.研究表明,将多尺度的空间和时相纹理信息加入到高分辨率遥感影像的倒塌建筑物探测中,可以有效提高分类精度,该方法得到的结果可应用于灾害救援及评估.  相似文献   

9.
Among the many means of acquiring surface information, low-altitude light detection and ranging (LiDAR) systems (e.g., unmanned aerial vehicle LiDAR, UAV-LiDAR) have become an important approach to accessing geospatial information. Considering the lower level of hardware technology in low-altitude LiDAR systems compared to that in airborne LiDAR, and the greater flexibility in-flight, registration procedures must be first performed to facilitate the fusion of laser point data and aerial images. The corner points and edges of buildings are frequently used for the automatic registration of aerial imagery with LiDAR data. Although aerial images and LiDAR data provide powerful support for building detection, adaptive edge detection for all types of building shapes is difficult. To deal with the weakness of building edge detection and reduce matching-related computation, the study presents a novel automatic registration method for aerial images, with LiDAR data, on the basis of main-road information in urban areas. Firstly, vector road centerlines are extracted from raw LiDAR data and then projected onto related aerial images with the use of coarse exterior orientation parameters (EOPs). Secondly, the corresponding image road features of each LiDAR vector road are determined using an improved total rectangle-matching approach. Finally, the endpoints of the conjugate road features obtained from the LiDAR data and aerial images are used as ground control points in space resection adjustment to refine the EOPs; an iterative strategy is used to obtain optimal matching results. Experimental results using road features verify the feasibility, robustness and accuracy of the proposed approach.  相似文献   

10.
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   

11.
Accurate information on the conditions of road asphalt is necessary for economic development and transportation management. In this study, object-based image analysis (OBIA) rule-sets are proposed based on feature selection technique to extract road asphalt conditions (good and poor) using WorldView-2 (WV-2) satellite data. Different feature selection techniques, including support vector machine (SVM), random forest (RF) and chi-square (CHI) are evaluated to indicate the most effective algorithm to identify the best set of OBIA attributes (spatial, spectral, textural and colour). The chi-square algorithm outperformed SVM and RF techniques. The classification result based on CHI algorithm achieved an overall accuracy of 83.19% for the training image (first site). Furthermore, the proposed model was used to examine its performance in different areas; and it achieved accuracy levels of 83.44, 87.80 and 80.26% for the different selected areas. Therefore, the selected method can be potentially useful for detecting road conditions based on WV-2 images.  相似文献   

12.
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   

13.
一种基于线特征的道路网变化检测算法   总被引:6,自引:0,他引:6  
提出一种基于线特征的道路网变化检测算法。首先根据边缘的梯度信息从多时相遥感图像中提取变化的线特征;然后根据变化线特征的局部特性,检测出与道路模型相符合的变化道路段;最后通过道路网的全局约束条件,进行变化道路段的连接,实现变化道路的检测。提出的道路网变化检测算法将边缘的相位和幅度信息作为变化检测的判定依据,从而避免了道路的匹配与比较工作,降低了变化检测算法的复杂度,具有很强的实用性。将本文提出的方法用于多时相遥感图像的道路网变化检测,从实验结果可以看出该方法的有效性。  相似文献   

14.
Multiresolution segmentation (MRS) algorithm has been widely used to handle very-high-resolution (VHR) remote sensing images in the past decades. Unfortunately, segmentation quality is limited by the dependency of parameter selection on users’ experience and diverse images. Contrarily, the segmentation by weighted aggregation (SWA) can partly overcome the above limitations and produce an optimal segmentation for maximizing the homogeneity within segments and the heterogeneity across segments. However, SWA is solely tested and justified with digital photos in computer vision field instead of VHR images. This study aims at evaluating SWA performance on VHR imagery. First, multiscale spectral, shape, and texture features are defined to measure homogeneity of image objects for segmentation. Second, SWA is implemented to handle QuickBird, unmanned aerial vehicle (UAV), and GF-1 VHR images and further compared with MRS in eCognition software to demonstrate the applicability of SWA to diverse images in building, vegetation and water, forest stands, farmland, and mountain areas. Third, the results are fully evaluated with quantitative measurements on segmented objects and classification-based accuracy assessment on geographic information system vector data. The results indicate that SWA can produce higher quality segmentations, need fewer parameters and manual interventions, create fewer segmentation levels, incorporate more features, and obtain larger classification accuracy than MRS.  相似文献   

15.
分别利用多通道Gabor滤波器和马尔可夫随机场模型对纹理图像进行分析,得到两组特征影像。将上述两组特征影像进行融合,最后利用融合后的数据实现图像的分类。实验证明,基于上述方法的纹理特征融合分类算法大大提高了图像的分类精度。  相似文献   

16.
准确提取输电通道内各地物类别是进行输电通道三维建模及交跨分析的基础。为解决目前贵州等多山地区输电通道内道路提取方法稳健性低、效率低的问题,本文通过结合道路特征显著性检测与形态约束的方法对影像中多山地区输电通道内道路的快速准确提取进行了研究。首先,对卫星影像中山区道路特征进行分析,对每个像素分别计算基于道路颜色一致性和结构一致性的像素级显著值;然后,结合显著目标空间先验知识融合显著性检测结果,形成最终道路显著图,初步提取影像中道路目标;最后,分析道路与建筑物等的差异性,基于道路形态一致性定义道路形态约束条件,通过制定约束规则最终实现道路的准确提取。结果表明,该方法对于不同弯曲程度、粘连程度及影像对比度的道路都能实现快速准确提取,提取完整度、正确率、质量及耗时平均分别为97.5%、97.0%、95.6%、0.515 s。该方法稳健性高,可以快速、准确提取各种情况下道路,在输电线路工程实际中有很好的应用前景。  相似文献   

17.
综合多特征的Landsat 8时序遥感图像棉花分类方法   总被引:3,自引:0,他引:3  
传统的多时相遥感图像分类大多拘泥于单一特征,本文基于多时相的Landsat 8遥感数据,开展了综合多特征的特征提取与特征选择方法研究。综合了NDVI时间序列、最佳时相反射率光谱特征以及纹理特征作为初始分类特征,并采用基于属性重要度的粗糙集特征选择算法对其进行特征约简。分类结果表明:(1)利用初始分类特征,分类的总体精度达到92.81%,棉花提取精度达87.4%,与仅利用NDVI时间序列相比,精度分别提高5.53%和5.05%;(2)利用粗糙集选择后的特征分类,分类总体精度可达93.66%,棉花分类精度达92.73%,与初始分类特征提取结果相比,棉花分类精度提高5.33%。基于属性重要度的粗糙集特征选择不仅提高了分类精度,同时有效降低了分类器的计算复杂度。  相似文献   

18.
在系统归纳和分析现有的路口遥感信息提取方法的基础上,提出一种面向高空间分辨率遥感影像的路口自动定位新方法。该方法首先通过低梯度运算获取同质区域;然后设定阈值去除同质区内的水体、阴影以及小面元干扰物;再利用Hough变换检测二值图像中的直线,并根据直线参数出现的频率排序,保留参数出现频率较高且相互间夹角较大的直线;最后用该组直线交点的平均值定位路口。以福州市城区局部QuickBird全色影像为数据源定位四岔路口与三岔路口的实证研究表明,在同物异谱与异物同谱现象严重情况下,本文算法所定位的路口仍然准确有效。  相似文献   

19.
邻域粗糙集是一种有效的影像特征提取方法,邻域粗糙集模型存在稳定性不高和邻域半径需要反复调整的不足,难以实现地物特征的自动化提取。提出一种多邻域粗糙集加权特征提取方法用于高分辨率遥感影像特征提取。该方法首先利用不同半径的邻域粗糙集对影像的光谱和纹理特征进行提取,求得不同邻域半径下的有效特征子集;然后统计所有邻域半径下各个特征出现的概率,将概率作为权重与特征进行加权得到最终地物特征。QucikBird影像上分类试验表明本文算法优于传统邻域粗糙集特征提取方法,分类总精度平均提高3.88%,Kappa系数平均提高5.16%。在GeoEye-1影像上的分类试验同样证明了本文方法的有效性。  相似文献   

20.
We present here the examples that show how fusing data from hyperspectral sensors with data from high spatial resolution sensors can enhance overall road detection accuracy. The fusion of hyperspectral and high spatial resolution data combines their superior respective spectral and spatial information. IKONOS (MSS) and Hyperion images were fused using the principal component analysis (PCA) method. The approach for road extraction integrates multiresolution segmentation and object oriented classification. Road extraction is done from an IKONOS (MSS) image and a Hyperion and IKONOS (MSS) merged image and comparisons are made depending on accuracy and quality measures such as completeness and correctness. This article also emphasises the types of roads which are giving better accuracy of extraction after fusion with hyperspectral image. This can vary because of types of material and condition of roads. The methodology was applied on roads of Dehradun, India.  相似文献   

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