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1.
杨军  王筱宇 《测绘科学》2022,47(1):112-120
针对高分二号(GF-2)卫星全色遥感影像与哨兵二号(Sentinel-2)卫星多光谱遥感影像空间分辨率相差较大且传感器不同导致的光谱或空间信息丢失问题,结合快速离散Curvelet变换对HSV融合方法的分量替换过程进行改进,利用GF-2的高空间分辨率和Sentinel-2的多光谱特性分别设计高、低频系数融合规则,并且与...  相似文献   

2.
资源一号02C与Landsat8影像融合方法对比分析   总被引:1,自引:0,他引:1  
针对以往关于资源一号02C和Landsat8卫星影像数据融合的研究不足的问题,该文利用前者在空间分辨率上高于后者、后者具有前者所不具有的光谱信息这一特性,选取主成分变换法、比值变换法、色彩变换法、高通滤波法和超分辨率贝叶斯法5种融合方法,分别对两种数据本身及数据间进行融合,并利用定性与定量的方法对融合结果进行评价,得出:资源一号02C星全色波段与多光谱波段数据融合结果中高通滤波法与超分辨率贝叶斯法效果较好,Landsat8OLI全色波段与多光谱数据融合结果中高通滤波法效果最好,资源一号02C星全色波段与Landsat8OLI多光谱数据融合结果中高通滤波法效果最好。  相似文献   

3.
针对空间分辨率比率较大尺度差异下的高分五号(GF-5)与高分一号(GF-1)卫星影像的空—谱融合问题,提出多传感器影像融合策略:一方面,通过现有空—谱融合方法的分步融合得到融合影像;另一方面,在分步融合理论基础上,推导得出一体化融合基础框架,并进一步提出基于多分辨率分析的多传感器一体化融合方法,缓解现有方法因空间分辨率比率过大导致影像空、谱互补信息难以有效集成的问题。其中,提出的一体化融合方法基于调制传递函数MTF (Modulation Transfer Function)滤波对多传感器影像空间(高频)和光谱(低频)分量进行分解提取,并充分考虑多传感器高空间分辨率影像与高光谱分辨率影像之间的关系,以及高光谱分辨率影像波段间关系,设计合理的融合权重,最终可得到具有最高空间分辨率和最高光谱分辨率的融合影像。通过GF-1全色影像、GF-1多光谱影像、GF-5高光谱影像数据对提出方法进行实验验证,结果表明:本文方法可有效集成多传感器影像间的空、谱互补信息,得到较优融合结果。  相似文献   

4.
结合高光谱影像地物光谱特征与高空间分辨率影像分割获得的目标对象进行地物分类。首先,对Hyperion影像进行坏线和Smile效应去除,经过FLAASH大气校正后,得到研究所用的155个波段;其次,利用地物光谱曲线的特征点确定适合地物识别的光谱分辨率,进行Hyperion影像降维,生成降维后所需的21个宽波段;然后,对IKONOS影像采用小波融合,利用多分辨率分割技术生成高空间分辨率影像目标对象;最后,基于层次分析法对分割后生成的目标对象进行分类,采用模糊隶属函数利用植被红边效应、水体在近红外波段吸收特征进行第1层次分类,再取距离值最大的前10个Hyperion影像波段作为标准最邻近分类的特征波段,完成第2层次分类。分类结果表明,研究区共分出9种地物类型,分类效果明显优于最大似然法分类与光谱角填图法。  相似文献   

5.
探讨采用高光谱遥感影像自动检测地形图变化的技术途径。针对地形图变化检测特点,利用经过辐射和几何处理的高光谱影像,结合已有地面资料确定地物样区,建立地形图要素的光谱特征。在建立地物要素光谱特征过程中,提出结合地形图资料,采用迭代光谱特征重建方法,利用训练样本和初始分析结果作为新的样本进行特征提取,克服高光谱影像处理中存在的训练样本数量要求大的难点,提高地物光谱特征建立的可靠性,从而有效提高分析精度。采用EO-1数据实验表明,该方法能够有效实现地物要素信息的自动提取,是变化检测与自动更新的一种有效方法。  相似文献   

6.
卫星遥感技术可用于海岛资源调查。Sentinel-2A与Landsat 8两颗卫星都可免费提供空间分辨率较高的多光谱遥感影像,在海岛调查中的应用潜力较大。本文以浙江舟山普陀山岛为例开展了针对这两种影像在海岛植被分类中的应用效果的研究,分别利用Sentinel-2A多光谱成像仪(MSI)和Landsat 8陆地成像仪(OLI)影像基于最大似然法分类获得了该岛阔叶林、针阔混交林、针叶林、灌丛、草丛等植被及其他地物的分布情况,并进行了精度检验,结果表明MSI的总体分类精度略高于OLI。  相似文献   

7.
资源一号02D卫星(ZY-1 02D)于2019年成功发射,2020年10月正式投入使用,是中国自主建造并成功运行的首颗民用高光谱业务卫星,具有广泛的应用前景。本研究以黄河三角洲湿地为研究区,以ZY-1 02D高光谱(AHSI)影像为数据源,结合无人机和地面调查数据,开展湿地景观分类研究。首先通过ZY-1 02D AHSI获取地物反射率波谱曲线,分析不同地物波谱曲线的差异,作为地物识别和分类的依据;充分考虑研究区植被覆盖度的差异,结合无人机影像制定研究区7类基本地物和9类精细地物两种湿地景观分类体系;利用随机森林算法进行分类,并引入Tree SHAP方法进行波段重要性排序和选择;探究影响ZY-1 02D AHSI分类的重要波段,选取与Landsat 8 OLI多光谱波段相重叠的波段进行分类,并与Landsat 8 OLI分类结果进行比较。结果表明:(1) ZY-1 02D AHSI数据能够较好地反映不同地物类型光谱曲线的差异;(2)对于两种分类体系,仅用前40个重要波段的总体分类精度达到最高,7类基本地物分类和9类精细地物分类的分类精度分别为92.18%和90.76%,这40个波段大多...  相似文献   

8.
高分二号卫星影像融合及质量评价   总被引:1,自引:0,他引:1  
高分二号卫星(GF-2)是我国自主研制的首颗空间分辨率优于1 m的民用光学遥感卫星,配备有0.81 m空间分辨率的全色相机和3.24 m空间分辨率的多光谱相机。对比分析适合GF-2影像的融合方法对于提高其应用效果与扩大应用领域具有实际意义。针对东北地区2014年11月22日和27日成像的GF-2影像,分别采用主成分分析(principal component analysis,PCA)、GS(Gram-Schmidt)变换、modified-HIS(intensity hue saturation)变换、高通滤波方法(high pass filter,HPF)和超球体色彩空间变换(hyperspherical color space resolution merge,HCS)等5种融合方法对多光谱和全色数据进行融合。并对5种融合影像进行质量评价,首先采用目视分析方法进行定性评价,其次采用信息熵、平均梯度、相关系数和光谱扭曲度等统计学指标进行客观定量评价,最后对融合影像进行地物分类。结果表明,HCS与GS变换融合影像无论是在视觉还是在地物分类应用上都具有较好的效果,且没有波段数的限制,最适合GF-2影像融合;HPF方法对空间细节信息的增强仅次于HCS变换,但是其光谱保真度效果最差;PCA和modified-IHS变换融合效果比较适中,可以作为GF-2影像融合的候补方法。  相似文献   

9.
在ACCA算法基础上,通过分析厚云及典型地物光谱特性,结合Landsat 8卫星传感器波段特性设计多光谱厚云检测方法,将影像大气顶端反射率和亮度温度作为输入值,检测厚云分布位置。检测结果显示,厚云像素的检测准确率在ACCA算法上有所提高,尤其是对于边界云和碎云的识别优于ACCA算法。当应用于多时相及多地区含云影像时,影像中厚云像素的检测准确率在90%以上,表明该方法能较好地检测各个时相及不同地物上空的厚云像素。  相似文献   

10.
最佳波段组合的城市土地利用类型提取   总被引:1,自引:0,他引:1  
针对Landsat 8陆地成像仪(OLI)遥感影像光谱特征利用率不高等问题,为排除波段间冗余信息的干扰,提高土地利用特征提取的精度,该文以2014年唐山市中心城区Landsat 8OLI遥感影像为主要数据源,开展了基于Landsat 8OLI影像的城市土地利用特征提取的最佳波段选择研究。根据最佳波段选取原则统计波段光谱信息,基于最佳指数因子以及不同土地利用类型的光谱特征曲线,确定波段1、5、7为最适合该遥感影像进行土地利用特征提取的最佳波段组合。  相似文献   

11.
GF-1卫星影像具有空间和时间分辨率高、纹理信息丰富等优势,而Landsat-8卫星影像具有多波段、光谱信息充足等优势。针对两种影像的特点,本文分别用面向对象分类方法进行苹果园地信息提取研究,结果表明:两种影像的分类精度都比较高,但由于研究区域属于山区,地块分布不均匀,GF-1影像发挥其空间分辨率较高的优势,苹果园地面积提取精度比Landsat-8高1.19%。  相似文献   

12.
针对云检测在高亮度地表以及雪覆盖区域存在过度检测的问题,设计了一种不依赖热红外波段的增强型多时相云检测EMTCD(Enhanced Multiple Temporal Cloud Detection)算法。首先,利用云的光谱特征建立单时相云检测规则,并基于云、雪的光谱差异构建了增强型云指数ECI(Enhanced Cloud Index),改进了云、雪的区分能力;其次,以同一区域无云影像为参考,基于ECI指数构建了多时相云检测算法,较好地克服了单时相云检测中高亮度地表、雪和云容易混淆的问题,提高了云检测的精度;最后,选择两个典型区域的Landsat-8 OLI影像,对比分析了不同算法的云检测结果。实验结果表明:ECI指数能够有效区分云、雪,EMTCD方法的平均检测精度达到93.2%,高于Fmask(Function of mask)(81.85%)、MTCD(Multi-Temporal Cloud Detection)(66.14%)和Landsat-8地表反射率产品LaSRC(Landsat-8 Surface Reflectance Code)的云检测结果(86.3%)。因此,本文提出的EMTCD云检测算法能够有效地减少高亮度地表和雪的干扰,实现不依赖热红外波段的高精度云检测。  相似文献   

13.
With the high deforestation rates of global forest covers during the past decades, there is an ever-increasing need to monitor forest covers at both fine spatial and temporal resolutions. Moderate Resolution Imaging Spectroradiometer (MODIS) and Landsat series images have been used commonly for satellite-derived forest cover mapping. However, the spatial resolution of MODIS images and the temporal resolution of Landsat images are too coarse to observe forest cover at both fine spatial and temporal resolutions. In this paper, a novel multiscale spectral-spatial-temporal superresolution mapping (MSSTSRM) approach is proposed to update Landsat-based forest maps by integrating current MODIS images with the previous forest maps generated from Landsat image. Both the 240 m MODIS bands and 480 m MODIS bands were used as inputs of the spectral energy function of the MSSTSRM model. The principle of maximal spatial dependence was used as the spatial energy function to make the updated forest map spatially smooth. The temporal energy function was based on a multiscale spatial-temporal dependence model, and considers the land cover changes between the previous and current time. The novel MSSTSRM model was able to update Landsat-based forest maps more accurately, in terms of both visual and quantitative evaluation, than traditional pixel-based classification and the latest sub-pixel based super-resolution mapping methods The results demonstrate the great efficiency and potential of MSSTSRM for updating fine temporal resolution Landsat-based forest maps using MODIS images.  相似文献   

14.
以辽宁阜新为研究区,运用支持向量机(SVM)的方法对高分一号8 m,16 m和Landsat8多光谱影像进行土地利用分类对比研究。实验表明,SVM的分类精度高于最小距离和最大似然方法,高分一号多光谱数据的分类精度高于Landsat8数据,可以应用于土地利用的分类。  相似文献   

15.
The successful launch of Landsat 8 provides a new data source for monitoring land cover, which has the potential to significantly improve the characterization of the earth’s surface. To assess data performance, Landsat 8 Operational Land Imager (OLI) data were first compared with Landsat 7 ETM + data using texture features as the indicators. Furthermore, the OLI data were investigated for land cover classification using the maximum likelihood and support vector machine classifiers in Beijing. The results indicated that (1) the OLI data quality was slightly better than the ETM + data quality in the visible bands, especially the near-infrared band of OLI the data, which had a clear improvement; clear improvement was not founded in the shortwave-infrared bands. Moreover, (2) OLI data had a satisfactory performance in terms of land cover classification. In summary, OLI data were a reliable data source for monitoring land cover and provided the continuity in the Landsat earth observation.  相似文献   

16.
Reliable and up-to-date urban land cover information is valuable in urban planning and policy development. Due to the increasing demand for reliable land cover information there has been a growing need for robust methods and datasets to improve the classification accuracy from remotely sensed imagery. This study sought to assess the potential of the newly launched Landsat 8 sensor’s thermal bands and derived vegetation indices in improving land cover classification in a complex urban landscape using the support vector machine classifier. This study compared the individual and combined performance of Landsat 8’s reflective, thermal bands and vegetation indices in classifying urban land use-land cover. The integration of Landsat 8 reflective bands, derived vegetation indices and thermal bands overall produced significantly higher accuracy classification results than using traditional bands as standalone (i.e. overall, user and producer accuracies). An overall accuracy above 89.33% and a kappa index of 0.86, significantly higher than the one obtained with the use of the traditional reflective bands as a standalone data-set and other analysis stages. On average, the results also indicate high producer and user accuracies (i.e. above 80%) for most of the classes with a McNemar’s Z score of 9.00 at 95% confidence interval showing significant improvement compared with classification using reflective bands as standalone. Overall, the results of this study indicate that the integration of the Landsat 8’s OLI and TIR data presents an invaluable potential for accurate and robust land cover classification in a complex urban landscape, especially in areas where the availability of high resolution datasets remains a challenge.  相似文献   

17.
数据融合是解决高光谱卫星在时空分辨率等指标上受限的有效途径,探讨不同方法在GF-5高光谱数据上的融合效果,对GF-5高光谱数据的信息挖掘与推广应用有着重要意义。本文本着算法简单易用、适于推广的原则,采用GS(Gram-Schmidt)葛兰—施密特正交变换融合算法、GSA(GS Adaptive)自适应GS融合算法、CNMF(Coupled Non-negative Matrix Factorization)耦合非负矩阵分解融合算法、CRISP-W(Color Resolution Improvement Software Package with Wavelet transform)基于小波变换和CRISP-B(Color Resolution Improvement Software Package with Butterworth)基于巴特沃斯滤波器的分辨率提升融合算法、GLP(Generalized Laplacian Pyramid)广义拉普拉斯金字塔融合算法共6种融合方法,分别对BJ-2、GF-2、GF-1、GF-1C、GF-1D国产卫星多光谱数据与GF-5高光谱数据进行融合实验。通过目视分析、指标评价(相关系数、通用图像质量指标、峰值信噪比、光谱角、全局综合误差)、分类应用、时间成本4种方式对融合结果进行综合比较分析。结果表明,相融合的一组图像系列相同、空间分辨率相差越小,融合结果越好。CRISP-B、CRISP-W、GLP在提升空间分辨率、光谱保真度方面能达到较好的平衡,空间重建方面,GLP稍优且更稳定,CRISP-B、CRISP-W则在光谱信息保持方面稳定性更强且效果更好。数据源会对融合方法产生一定的影响,在光谱特征信息提取、分析等对光谱保真度要求高的工作中,GLP更适合同源数据(如GF-5与GF-1/1C/1D/2)融合,而在多源数据间(如GF-5与BJ-2)进行融合时,则优先选择CRISP-W。CNMF存在一定程度的色彩畸变,且运行时间较长。GSA、GS融合效果最差,其中,GSA不论是光谱保持能力还是空间分辨率提升能力均较GS更稳定。在小样本高光谱图像分类应用中,CRISP-B融合结果分类效果稳定,分类精度较高。GSA融合结果空间细节丰富,虽光谱失真较为严重,但同时增大了地物光谱分离度,仍适用于准确勾勒建筑物、道路等地物。本研究为GF-5高光谱数据与其他国产卫星多光谱数据融合方法的选择提供参考,有助于高分五号高光谱数据的应用与推广。  相似文献   

18.
The goal of this research is to map land cover patterns and to detect changes that occurred at Alkali Flat and Lake Lucero, White Sands using multispectral Landsat 7 Enhanced Thematic Mapper Plus (ETM+), Advanced Spaceborne Thermal Emission and Reflection Radiometer (ASTER), Advanced Land Imager (ALI), and hyperspectral Hyperion and Airborne Visible/Infrared Imaging Spectrometer (AVIRIS) data. The other objectives of this study were: (1) to evaluate the information dimensionality limits of Landsat 7 ETM+, ASTER, ALI, Hyperion, and AVIRIS data with respect to signal-to-noise and spectral resolution, (2) to determine the spatial distribution and fractional abundances of land cover endmembers, and (3) to check ground correspondence with satellite data. A better understanding of the spatial and spectral resolution of these sensors, optimum spectral bands and their information contents, appropriate image processing methods, spectral signatures of land cover classes, and atmospheric effects are needed to our ability to detect and map minerals from space. Image spectra were validated using samples collected from various localities across Alkali Flat and Lake Lucero. These samples were measured in the laboratory using VNIR–SWIR (0.4–2.5 μm) spectra and X-ray Diffraction (XRD) method. Dry gypsum deposits, wet gypsum deposits, standing water, green vegetation, and clastic alluvial sediments dominated by mixtures of ferric iron (ferricrete) and calcite were identified in the study area using Minimum Noise Fraction (MNF), Pixel Purity Index (PPI), and n-D Visualization. The results of MNF confirm that AVIRIS and Hyperion data have higher information dimensionality thresholds exceeding the number of available bands of Landsat 7 ETM+, ASTER, and ALI data. ASTER and ALI data can be a reasonable alternative to AVIRIS and Hyperion data for the purpose of monitoring land cover, hydrology and sedimentation in the basin. The spectral unmixing analysis and dimensionality eigen analysis between the various datasets helped to uncover the most optimum spatial–spectral–temporal and radiometric-resolution sensor characteristics for remote sensing based on monitoring of seasonal land cover, surface water, groundwater, and alluvial sediment input changes within the basin. The results demonstrated good agreement between ground truth data and XRD analysis of samples, and the results of Matched Filtering (MF) mapping method.  相似文献   

19.
机载多光谱LiDAR数据的地物分类方法   总被引:2,自引:1,他引:1  
潘锁艳  管海燕 《测绘学报》2018,47(2):198-207
机载多光谱LiDAR系统能够快速地获取大范围地表面上地物光谱和几何数据,并能够保证所获取的光谱与空间几何数据在空间和时间上相对完整和一致性。支持向量机(SVM)是一种基于小样本的学习方法,它避开了从归纳到演绎的传统分类过程。因此,本文提出了基于SVM多光谱LiDAR数据的地物目标分类方法。该方法首先将多个独立波段的LiDAR数据融合为单一的、包含多个波段信息的点云数据,然后将融合后的点云内插为距离影像和多光谱影像,最后利用SVM进行多光谱LiDAR数据的地物覆盖分类。通过对加拿大Optech公司的Titan机载多光谱LiDAR数据的试验证明:相对于传统的单波段LiDAR数据,多光谱LiDAR数据可以获得较好的地物分类精度;比较试验发现SVM分类方法适用于多光谱LiDAR数据的地物分类。  相似文献   

20.
Detailed and enhanced land use land cover (LULC) feature extraction is possible by merging the information extracted from two different sensors of different capability. In this study different pixel level image fusion algorithms (PCA, Brovey, Multiplicative, Wavelet and combination of PCA & IHS) are used for integrating the derived information like texture, roughness, polarization from microwave data and high spectral information from hyperspectral data. Span image which is total intensity image generated from Advanced Land observing Satellite-Phase array L-band SAR (ALOS-PALSAR) quad polarization data and EO-1 Hyperion data (242 spectral bands) were used for fusion. Overall PCA fused images had shown better result than other fusion techniques used in this study. However, Brovey fusion method was found good for differentiating urban features. Classification using support vector machines was conducted for classifying Hyperion, ALOS PALSAR and fused images. It was observed that overall classification accuracy and kappa coefficient with PCA fused images was relatively better than other fusion techniques as it was able to discriminate various LULC features more clearly.  相似文献   

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