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1.
Image fusion is the combination of two or more different images to form a new image by using a certain algorithm. Despite the fact that the number and kind of satellite imagery are daily increasing, using fusion techniques, in a proper way, to eliminate the redundancy in data and increase the quality of data is an important challenge in Remote Sensing Image Processing. Fusion of multispectral images with a hyperspectral image generates a composite image which preserves the spatial quality from the high resolution (MS) data and the spectral characteristics from the hyperspectral data. For the present study three fusion algorithms (Principal Component Transformation, Colour Normalized and Gram-Scmidt Transformation) were analysed for Hyperion and IKONOS MSS data. Their ability to preserve the spectral quality of fused data, in comparison with original hyper-spectral image, has been investigated.  相似文献   

2.
结合Gram-Schmidt变换的高光谱影像谐波分析融合算法   总被引:1,自引:0,他引:1  
张涛  刘军  杨可明  罗文杉  张育育 《测绘学报》2015,44(9):1042-1047
针对高光谱影像谐波分析融合(HAF)算法在影像融合时不顾及地物光谱曲线整体反射率这一缺陷,提出了结合Gram-Schmidt变换的高光谱影像谐波分析融合(GSHAF)改进算法。GSHAF算法可在完全保留融合前后像元光谱曲线波形形态的基础上,将高光谱影像融合简化为各像元光谱曲线的谐波余相组成的二维影像与高空间分辨率影像之间的融合。它是在原始高光谱影像光谱曲线被谐波分解为谐波余项、振幅和相位后,首先将其谐波余项与高空间分辨率影像进行GS变换融合,这样便可有效地修正融合后像元光谱曲线的反射率特征,随后再利用该融合影像与谐波振幅、相位进行谐波逆变换,完成高光谱影像谐波融合。本文最后利用Hyperion高光谱遥感影像与ALI高空间分辨率影像对GSHAF算法进行可行性分析,再以HJ-1A等卫星数据对其进行普适性验证,试验结果表明,GSHAF算法不仅可以完全地保留光谱曲线波形形态,而且融合后影像的地物光谱曲线反射率更接近真实地物。  相似文献   

3.
Automatic road extraction from remotely sensed images has been an active research in urban area during last few decades. But such study becomes difficult in urban environment due to mix of natural and man-made features. This research explores methodology for semiautomatic extraction of urban roads. An integrated approach of airborne laser scanning (ALS) altimetry and high-resolution data has been used to extract road and differentiate them from flyovers. Object oriented fuzzy rule based approach classifies roads from high resolution satellite images. Complete road network is extracted with the combination of ALS and high-resolution data. The results show that an integration of LiDAR data and IKONOS data gives better accuracy for automatic road extraction. The method was applied on urban area of Amsterdam, The Netherlands.  相似文献   

4.
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   

5.
基于小波理论的IKONOS卫星全色影像和多光谱影像的融合   总被引:17,自引:1,他引:17  
1999年9月24日发射成功的世界上第一颗商用1m分辨率的卫星IKONOS,具有1m分辨率的全色影像和4m分辨率的多光谱影像,通过对IKONOS1m分辨率的全色影像和4m分辨率的多光谱影像的融合可以获得1m分辨率的多光谱影像,为应用提供理高质量的数据源,基于小波多分辨率分析的MRAGM方法,它适合处理任意整数分辨率之比的融合情况,具有在提高影像空间分辨率的同时又保持色调和饱和度不变的优越性,而实现它的关键是构建具有紧支撑特性的M进制低通尺度函滤波器,本文利用基于四进制小波滤波器的MRAGM算法,成功地把全色影像和多光谱影像进行了融合,结果显示该方法的效果令人满意。  相似文献   

6.
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   

7.
随着遥感影像分辨率的不断提高,基于高分辨率遥感影像的目标自动提取逐步成为研究热点。本文采用面向对象的图像分析方法,基于Ecognition遥感图像处理平台,对IKONOS影像进行道路提取实验,重点对图像分割方案、道路提取规则、后处理方法等进行探讨。  相似文献   

8.
This paper describes the integration of results from different feature extraction algorithms using spectral and spatial attributes to detect specific urban features. Methodology includes segmentation of IKONOS data, computing attributes for creating image objects and classifying the objects with fuzzy logic and rule-based algorithms. Previous research reported low class accuracies for two specific classes – dark and grey roofs. A modified per-field approach was employed to extract urban features. New rule-sets were used on image objects having similar or near-similar spectral and spatial characteristics. Different algorithms using spectral and spatial attributes were developed to extract specific urban features from a time-series of Multi-Spectral Scanner (MSS) (4 m × 4 m) IKONOS data. The modified approach resulted in a remarkable improvement in the accuracy of classes that registered low spectral seperability and therefore low accuracy. The spectral and spatial based classification model may be useful in mapping heterogeneous and spectrally similar urban features.  相似文献   

9.
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   

10.
基于分辨率退化模型的全色和多光谱遥感影像融合方法   总被引:7,自引:0,他引:7  
从影像成像的频率特性出发,提出了一种影像分辨率退化模型,并在此基础上提出了一种新的全色和多光谱遥感影像融合方法。  相似文献   

11.
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   

12.
高分辨率影像能够提供丰富的地表细节信息,从高分辨率遥感影像中进行高精度的道路提取是目前遥感信息处理的研究热点。分别以高分辨光学IKONOS影像和COSMO-Skymed SAR影像为数据源,对北京市某区域进行了道路信息自动提取方法的研究。高分辨率光学影像中采用最大似然分类进行道路信息提取,在SAR影像中则采用Otsu阈...  相似文献   

13.
吴一全  王志来 《遥感学报》2017,21(4):549-557
为有效融合多光谱图像的光谱信息和全色图像的空间细节信息,提出了一种基于混沌蜂群优化和改进脉冲耦合神经网络(PCNN)的非下采样Shearlet变换(NSST)域图像融合方法。首先对多光谱图像进行Intensity-HueSaturation(IHS)变换,全色图像的直方图按照多光谱图像亮度分量的直方图进行匹配;然后分别对多光谱图像的亮度分量和新全色图像进行NSST变换,对低频分量使用改进加权融合算法进行融合,以互信息作为适应度函数,利用混沌蜂群算法找到最优加权系数。对高频分量采用改进脉冲耦合神经网络(PCNN)方法进行融合,再经NSST逆变换和IHS逆变换得到融合图像。本文方法在主观视觉效果和信息熵、光谱扭曲度等客观定量评价指标上优于基于IHS变换、基于非下采样Contourlet变换(NSCT)和非负矩阵分解(NMF)、基于NSCT和PCNN等5种融合方法。本文方法在提升图像空间分辨率的同时,有效地保留了光谱信息。  相似文献   

14.
Information on Earth's land surface cover is commonly obtained through digital image analysis of data acquired from remote sensing sensors. In this study, we evaluated the use of diverse classification techniques in discriminating land use/cover types in a typical Mediterranean setting using Hyperion imagery. For this purpose, the spectral angle mapper (SAM), the object-based and the non-linear spectral unmixing based on artificial neural networks (ANNs) techniques were applied. A further objective had been to investigate the effect of two approaches for training sites selection in the SAM classification, namely of the pixel purity index (PPI) and of the direct selection of training points from the Hyperion imagery assisted by a QuickBird imagery and field-based training sites. Object-based classification outperformed the other techniques with an overall accuracy of 83%. Sub-pixel classification based on the ANN showed an overall accuracy of 52%, very close to that of SAM (48%). SAM applied using the training sites selected directly from the Hyperion imagery supported by the QuickBird image and the field visits returned an increase accuracy by 16%. Yet, all techniques appeared to suffer from the relatively low spatial resolution of the Hyperion imagery, which affected the spectral separation among the land use/cover classes.  相似文献   

15.
The extraction of road networks from digital imagery is a fundamental image analysis operation. Common problems encountered in automated road extraction include high sensitivity to typical scene clutter in high-resolution imagery, and inefficiency to meaningfully exploit multispectral imagery (MSI). With a ground sample distance (GSD) of less than 2 m per pixel, roads can be broadly described as elongated regions. We propose an approach of elongated region-based analysis for 2D road extraction from high-resolution imagery, which is suitable for MSI, and is insensitive to conventional edge definition. A self-organising road map (SORM) algorithm is presented, inspired from a specialised variation of Kohonen's self-organising map (SOM) neural network algorithm. A spectrally classified high-resolution image is assumed to be the input for our analysis. Our approach proceeds by performing spatial cluster analysis as a mid-level processing technique. This allows us to improve tolerance to road clutter in high-resolution images, and to minimise the effect on road extraction of common classification errors. This approach is designed in consideration of the emerging trend towards high-resolution multispectral sensors. Preliminary results demonstrate robust road extraction ability due to the non-local approach, when presented with noisy input.  相似文献   

16.
基于支持向量机的SPIN-2影像与SPOT-4多光谱影像融合研究   总被引:12,自引:1,他引:12  
遥感影像融合是解决多源海量数据富集表示的有效途径之一。针对高分辨率遥感数据SPIN-2(2m)与多光谱遥感数据SPOT-4(20m)的影像融合,提出了基于支持向量机(SVM)的遥感影像融合的新方法。建立了基于SVM的遥感影像融合模型,并进行了分类融合实验,实验效果较好。最后给出了分类融合评价。结果表明,支持向量机可用于遥感影像融合,且分类融合精度较高。  相似文献   

17.
丰明博  刘学  赵冬 《测绘学报》2014,43(2):158-163
将高光谱图像与高空间分辨率图像融合后,由于融合图像空间分辨率提高,改变了混合像元内地物组分比例,像元光谱信息较原高光谱图像光谱信息会出现“失真”现象。针对这种情况,考虑混合像元内成分变化进行图像融合,首先利用投影方法模拟多光谱图像得到高光谱图像,并将模拟高光谱图像与原高光谱图像利用小波方法进行融合,融合图像不仅增强了空间信息,而且对光谱信息进行一定的修正,从而提高了环境异常探测等一系列应用的精度。利用Hyperion图像和SPOT-5图像进行融合实验,融合图像能够识别出87.2%目标区域。  相似文献   

18.
针对当前无人机影像获取精度高但数据规模小的问题,本文提出通过U-Net模型探讨不同空间分辨率对防护林提取精度的影响。以CW-20复合翼无人机搭载Micro MAC12 Snap多光谱传感器获取的300 m(空间分辨率0.15 m)、400 m(空间分辨率0.20 m)、500 m(空间分辨率0.25 m)3种不同高度的遥感影像为例,试验结果证明,3种不同高度的影像提取精度误差在1.3%以内;MIoU误差在3.7%以内。空间分辨率对防护林提取精度的影响较小,高空间分辨率的影像数据并不能显著提升防护林的提取精度。本文为大规模农林业遥感监测的数据源获取提供了理论依据。  相似文献   

19.
利用MRF方法的高分辨率影像道路提取   总被引:1,自引:0,他引:1  
高分辨率遥感影像提供了地物更丰富的信息,包括光谱信息、地物结构、形状、纹理以及地物之间的空间关系等多方面的信息。面向对象的影像分析方法以目标地物为研究对象,充分考虑目标地物的形状、结构及空间关系等信息进行目标的提取和分析,是当前高分辨率信息提取技术的主要方法。研究了采用面向对象目标的思想将MRF方法应用于高分辨率遥感影像的道路目标提取中,并进行了道路提取实验。  相似文献   

20.
With the emergence of very high spatial and spectral resolution data set, the resolution gap that existed between remote-sensing data set and aerial photographs has decreased. The decrease in resolution gap has allowed accurate discrimination of different tree species. In this study, discrimination of indigenous tree species (n?=?5) was carried out using ground based hyperspectral data resampled to QuickBird bands and the actual QuickBird imagery for the area around Palapye, Botswana. The purpose of the study was to compare the accuracies of resampled hyperspectral data (resampled to QuickBird sensors) with the actual image (QuickBird image) in discriminating between the indigenous tree species. We performed Random Forest (RF) using canopy reflectance taking from ground-based hyperspectral sensor and the reflectance delineated regions of the tree species. The overall accuracies for classifying the five tree species was 79.86 and 88.78% for both the resampled and actual image, respectively. We observed that resampled data set can be upscale to actual image with the same or even greater level of accuracy. We therefore conclude that high spectral and spatial resolution data set has substantial potential for tree species discrimination in savannah environments.  相似文献   

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