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1.
Many real-world applications require remotely sensed images at both high spatial and temporal resolutions. This requirement, however, is generally not met by single satellite system. A number of spatiotemporal fusion models have been developed to overcome this constraint. Landsat and Visible Infrared Imaging Radiometer Suite (VIIRS) data have been extensively used for detection and monitoring of active fires at different scales. Fusing the data obtained from these sensors will, therefore, significantly contribute to the satellite-based monitoring of fires. Among the available spatiotemporal fusion methods, the spatial and temporal adaptive reflectance fusion model (STARFM) and enhanced STARFM (ESTARFM) algorithms have been widely used for studying the land surface dynamics in the homogeneous and heterogeneous regions. The present study explores the applicability of STARFM and ESTARFM algorithms for fusing the high spatial resolution Landsat-8 OLI data with high temporal resolution VIIRS data in the context of active surface coal fire monitoring. Further, a modified version of ESTARFM algorithm, referred as modified-ESTARFM, is developed to improve the performance of the fusion model. Jharia coalfield (India), known for widespread occurrences of coal fires, is taken as the study area. The qualitative and quantitative assessments of the predicted (synthetic) Landsat-like images from different algorithms (STARFM, modified-STARFM, ESTARFM, modified-ESTARFM) indicate that the modified-ESTARFM outperforms the other fusion approaches used in this study. Considering the advantages, limitations and performance of the algorithms used, modified-ESTARFM along with STARFM can be used for surface coal fire monitoring. The study will not only contribute to remote sensing based coal fire studies but also to other applications, such as forest fires, crop residue burning, land cover and land use change, vegetation phenology, etc.  相似文献   

2.
Active fire detection using satellite thermal sensors usually involves thresholding the detected brightness temperature in several bands. Most frequently used features for fire detection are the brightness temperature in the 4-/spl mu/m wavelength band (T/sub 4/) and the brightness temperature difference between 4- and 11-/spl mu/m bands (/spl Delta/T=T/sub 4/-T/sub 11/). In this letter, the task of active fire detection is examined in the context of a stochastic model for target detection. The proposed fire detection method consists of applying a decorrelation transform in the (T/sub 4/,/spl Delta/T) space. Probability density functions for the fire and background pixels are then computed in the transformed variable space using simulated Moderate Resolution Imaging Spectroradiometer (MODIS) thermal data under different atmospheric humidity conditions and for cases of flaming and smoldering fires. The Pareto curve for each detection case is constructed. Optimal thresholds are derived by minimizing a cost function, which is a weighted sum of the omission and commission errors. The method has also been tested on a MODIS reference dataset validated using high-resolution SPOT images. The results show that the detection errors are comparable with the expected values, and the proposed method performs slightly better than the standard MODIS absolute detection method in terms of the lower cost function.  相似文献   

3.
A new method was developed in this study for producing a clear-sky Landsat composite for cropland from cloud-contaminated Landsat images acquired in a short time period. It used Thiel–Sen regression to normalize all Landsat scenes to a MODIS image to make all Landsat images radiometrically consistent and comparable. Pixel selection criteria combining the modified maximum vegetation index and the modified minimum visible reflectance selection methods were designed to enhance the pixel selection of land/water over cloud/shadow in the image compositing. The advantages of the method include (1) avoiding complicated atmospheric corrections but with reliable surface reflectance results, (2) being insensitive to errors induced by image co-registration uncertainties between Landsat and MODIS images, (3) avoiding the lack of samples for the regression analysis using the full Landsat scenes (rather than overlay regions), and (4) enhancing cloud/shadow detection. The composite image has MODIS-like surface reflectance, thus making MODIS algorithms applicable for retrieving biophysical parameters. The method was automatically implemented on a set of 13 cloud-contaminated (>39%) Landsat-7 (Scan-Line Corrector-Off) and Landsat-8 scenes acquired during peak growing season in a crop region of Manitoba, Canada. The result was a 95.8% cloud-free image. The method can also substantially increase the usage of cloud-contaminated Landsat data.  相似文献   

4.
The main purpose of this study is to explore the relationship between three field-based fire severity indices (Composite Burn Index-CBI, Geometrically structure CBI, weighted CBI) and spectral indices derived from Sentinel 2A and Landsat-8 OLI imagery on a recent large fire in Thasos, Greece. We employed remotely sensed indices previously used from the remote sensing fire community (Normalized Difference Vegetation Index (NDVI), Normalized Burn Ratio (NBR), differenced NDVI, differenced NBR, relative differenced NBR, Relativized Burn Ratio) and seven Sentinel 2A-specific indices considering the availability of spectral information recorded in the red-edge spectral region. The statistical correlation indicated a slightly stronger relationship between the differenced NBR and the GeoCBI for both Sentinel 2A (r = 0.872) and Landsat-8 OLI (r = 0.845) imagery. Predictive local thresholds of dNBR values showed slightly higher classification accuracy for Sentinel 2A (73.33%) than Landsat-8 OLI (71.11%), suggesting the adequacy of Sentinel 2A for forest fire severity assessment and mapping in Mediterranean pine ecosystems. The evaluation of the classification thresholds calculated in this study over other fires with similar pre-fire conditions could contribute in the operational mapping and reconstruction of the historical patterns of fire severity over the Eastern Mediterranean region.  相似文献   

5.
GF-4 PMI影像着火点自适应阈值分割   总被引:1,自引:0,他引:1  
为探究具有单中波红外通道的高分四号卫星(GF-4)PMI数据在林火监测中的应用方法,通过对覆盖近年发生森林火灾的多景GF-4 PMI影像分析,采用"劈窗法"构建GF-4 PMI数据的着火点自适应阈值检测算法;在云南省玉龙纳西族自治县、俄罗斯阿穆尔州和俄罗斯外贝加尔边疆区等3个实验区进行了着火点检测应用,并以目视解译的着火点结果为参照资料,对该算法的着火点检测精度进行了评价。结果表明,该算法在这3个实验区的着火点检测准确率均高于80.0%,基于着火点检测精度验证设定的综合评价指标高于0.780,可应用于GF-4PMI影像着火点的检测。  相似文献   

6.
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   

7.
Radiant temperature images from thermal remote sensing sensors are used to delineate surface coal fires, by deriving a cut-off temperature to separate coal-fire from non-fire pixels. Temperature contrast of coal fire and background elements (rocks and vegetation etc.) controls this cut-off temperature. This contrast varies across the coal field, as it is influenced by variability of associated rock types, proportion of vegetation cover and intensity of coal fires etc. We have delineated coal fires from background, based on separation in data clusters in maximum v/s mean radiant temperature (13th band of ASTER and 10th band of Landsat-8) scatter-plot, derived using randomly distributed homogeneous pixel-blocks (9 × 9 pixels for ASTER and 27 × 27 pixels for Landsat-8), covering the entire coal bearing geological formation. It is seen that, for both the datasets, overall temperature variability of background and fires can be addressed using this regional cut-off. However, the summer time ASTER data could not delineate fire pixels for one specific mine (Bhulanbararee) as opposed to the winter time Landsat-8 data. The contrast of radiant temperature of fire and background terrain elements, specific to this mine, is different from the regional contrast of fire and background, during summer. This is due to the higher solar heating of background rocky outcrops, thus, reducing their temperature contrast with fire. The specific cut-off temperature determined for this mine, to extract this fire, differs from the regional cut-off. This is derived by reducing the pixel-block size of the temperature data. It is seen that, summer-time ASTER image is useful for fire detection but required additional processing to determine a local threshold, along with the regional threshold to capture all the fires. However, the winter Landsat-8 data was better for fire detection with a regional threshold.  相似文献   

8.
9.
基于遗传算法的二类水体水色遥感反演   总被引:13,自引:1,他引:13  
提出一种基于遗传算法的二类水体水色遥感反演算法。该算法以三成分 (叶绿素、悬浮泥沙与黄色物质 )海水光学模型作为前向模型 ,以实数编码遗传算法作为优化方法 ,并采用一对波段比来构造目标函数。模拟反演的结果表明 ,该算法可以有效克服已有二类水体水色遥感优化反演方法在搜索策略方面存在的困难 ,是一种有较高计算效率、可靠与稳健的反演算法  相似文献   

10.
对于航空航天大气偏振遥感来说,下垫面偏振辐射噪声影响扣除至关重要。本文基于航空偏振遥感数据,探讨了典型自然下垫面对可见光及短波红外波段偏振敏感性。研究发现,在可见光波段与短波红外(2250 nm)波段,植被下垫面偏振反射率线性拟合斜率都接近1,相关系数大于0.95,表明植被偏振反射率对光谱波段不敏感。比较分析了平静水面和存在耀光水面在670 nm和2250 nm两波段的偏振特性,存在耀光的水面其偏振反射率大约是平静水面的3倍。此外,在实验室测量了红砂土和河沙土的偏振反射率,偏振反射率随波段的改变量很小,其与波段的线性拟合斜率仅为10-5量级,说明两者的偏振反射率对波段很不敏感。因此,利用典型自然下垫面在可见和短波红外波段的偏振反射特性,将能够有效进行地气解耦,提高大气偏振遥感精度。  相似文献   

11.
The automated cloud cover assessment (ACCA) algorithm has provided automated estimates of cloud cover for the Landsat ETM+ mission since 2001. However, due to the lack of a band around 1.375 μm, cloud edges and transparent clouds such as cirrus cannot be detected. Use of Landsat ETM+ imagery for terrestrial land analysis is further hampered by the relatively long revisit period due to a nadir only viewing sensor. In this study, the ACCA threshold parameters were altered to minimise omission errors in the cloud masks. Object-based analysis was used to reduce the commission errors from the extended cloud filters. The method resulted in the removal of optically thin cirrus cloud and cloud edges which are often missed by other methods in sub-tropical areas. Although not fully automated, the principles of the method developed here provide an opportunity for using otherwise sub-optimal or completely unusable Landsat ETM+ imagery for operational applications. Where specific images are required for particular research goals the method can be used to remove cloud and transparent cloud helping to reduce bias in subsequent land cover classifications.  相似文献   

12.
针对GF-4等国产卫星气溶胶光学厚度反演算法存在的地表反射率估计困难、云像元污染等问题,本文发展了一种增强型地表反射率库支持的气溶胶光学厚度反演方法,改进了云筛选与地表反射率确定方案,在考虑GF-4逐像元成像角度的情况下,使用6SV模型与MOD09-CMA数据对季度尺度上的GF-4 PMS传感器数据进行大气校正,提出了百分比最小值均值法建立地表反射率库,并据此建立了NDVI与红蓝反射率关系模型,根据地表反射率的分布特点,当NDVI小于0.2的时候使用地表反射率库估计地表反射率,而当NDVI大于0.2时,则使用NDVI来估计地表反射率。使用MOD04气溶胶模式时空分布确定气溶胶参数。在京津冀地区开展气溶胶光学厚度反演实验,使用Aeronet站点数据与MOD04产品对反演结果进行了对比验证,与Aeronet相关系数R为0.964,均方根误差RMSE为0.13,满足±(0.05+0.2τ)的点多于78.9%,相关系数与均方根误差优于MODIS暗目标法产品,满足期望误差线的数量优于MODIS暗目标与深蓝算法产品。  相似文献   

13.
Understanding spatial and temporal patterns of burned areas at regional scales, provides a long-term perspective of fire processes and its effects on ecosystems and vegetation recovery patterns, and it is a key factor to design prevention and post-fire restoration plans and strategies. Remote sensing has become the most widely used tool to detect fire affected areas over large tracts of land (e.g., ecosystem, regional and global levels). Standard satellite burned area and active fire products derived from the 500-m Moderate Resolution Imaging Spectroradiometer (MODIS) and the Satellite Pour l’Observation de la Terre (SPOT) are available to this end. However, prior research caution on the use of these global-scale products for regional and sub-regional applications. Consequently, we propose a novel semi-automated algorithm for identification and mapping of burned areas at regional scale. The semi-arid Monte shrublands, a biome covering 240,000 km2 in the western part of Argentina, and exposed to seasonal bushfires was selected as the test area. The algorithm uses a set of the normalized burned ratio index products derived from MODIS time series; using a two-phased cycle, it firstly detects potentially burned pixels while keeping a low commission error (false detection of burned areas), and subsequently labels them as seed patches. Region growing image segmentation algorithms are applied to the seed patches in the second-phase, to define the perimeter of fire affected areas while decreasing omission errors (missing real burned areas). Independently-derived Landsat ETM+ burned-area reference data was used for validation purposes. Additionally, the performance of the adaptive algorithm was assessed against standard global fire products derived from MODIS Aqua and Terra satellites, total burned area (MCD45A1), the active fire algorithm (MOD14); and the L3JRC SPOT VEGETATION 1 km GLOBCARBON products. The correlation between the size of burned areas detected by the global fire products and independently-derived Landsat reference data ranged from R2 = 0.01–0.28, while our algorithm performed showed a stronger correlation coefficient (R2 = 0.96). Our findings confirm prior research calling for caution when using the global fire products locally or regionally.  相似文献   

14.
人工蜂群算法优化的SVM遥感影像分类   总被引:2,自引:0,他引:2  
李楠  朱秀芳  潘耀忠  詹培 《遥感学报》2018,22(4):559-569
SVM分类器的参数设定对分类精度有着显著的影响,针对现有人工智能算法优化参数易陷入局部最优的现状,提出了一种基于人工蜂群算法改进SVM参数的遥感分类方法(ABC-SVM)。该方法模仿蜜蜂采蜜的行为,以训练样本的交叉验证精度代表蜜源的丰富程度,通过蜂群的分工协作搜索出最优蜜源(即SVM分类器最优参数),最终利用参数优化后的SVM分类器实现遥感影像的分类。本文先后比较了3种人工智能算法(包括人工蜂群算法优化的SVM(ABC-SVM)、遗传算法GA(Genetic Algorithm)优化的SVM(GA-SVM)、粒子群算法PSO(Practical Swarm Optimization)优化的SVM(PSO-SVM))在UCI标准数据集上的分类精度和效率,以及3种人工智能算法优化的SVM算法与未经优化参数的SVM算法在遥感影像上分类的差异。结果显示:(1)在利用UCI数据集测试3种人工智能算法优化的SVM算法的结果中,ABC-SVM显示出更高的分类精度、更高的适应度和更快的收敛速度;(2)在利用遥感影像验证4种分类算法精度的结果中,人工智能算法优化后的SVM比未经参数优化的SVM算法的分类精度更高;其中,ABC-SVM分类精度最高,分别比遗传算法、粒子群算法的结果高1.67%、1.50%。  相似文献   

15.
高分一号卫星(GF-1)WFV相机是中国新型高分辨率传感器,为了更好地进行定量应用,需完成高精度大气校正,但需要解决数量大,辅助数据不足等关键问题。针对WFV相机构建了快速大气校正模型,(1)采用交叉定标方法借助Landsat 8数据完成辐射定标;(2)从WFV相机的辅助数据出发,计算得到太阳天顶角、观测天顶角等辅助信息;(3)考虑不同海拔大气分子散射的不同,完成基于海拔数据的分子散射校正;(4)采用深蓝算法,从第一波段(蓝光)反演得到气溶胶信息;(5)计算每个像元的大气校正参数,进而获取地表反射率,完成大气校正。在此基础上,利用IDL语言建立相应的大气校正模块,以过境华北地区的3景WFV数据为例进行大气校正实验。结果表明,模型能够快速完成大气校正,并能较好的去除大气分子与气溶胶影响,较好地还原植被、裸土等典型地表类型的光谱反射曲线,校正后的NDVI更好地反映了各地物的特征。  相似文献   

16.
An advanced along-track scanning radiometer (AATSR) global multi-year aerosol retrieval algorithm is described. Over land, the AATSR dual-view (ADV) algorithm utilizes the measured top of the atmosphere (TOA) reflectance in both the nadir and forward views to decouple the contributions of the atmosphere and the surface to retrieve aerosol properties. Over ocean, the AATSR single-view (ASV) algorithm minimizes the discrepancy between the measured and modelled TOA reflectances in one of the views to retrieve the aerosol information using an ocean reflectance model. Necessary steps to process global, multi-year aerosol information are presented. These include cloud screening, the averaging of measured reflectance, and post-processing. Limitations of the algorithms are also discussed. The main product of the aerosol retrieval is the aerosol optical depth (AOD) at visible/near-infrared wavelengths. The retrieved AOD is validated using data from the surface-based AERONET and maritime aerosol network (MAN) sun photometer networks as references. The validation shows good agreement with the reference (r?=?0.85, RMSE?=?0.09 over land; r?=?0.83, RMSE?=?0.09 at coasts and r?=?0.96, RMSE?=?0.06 over open ocean). The results of the aerosol retrievals are presented for the full AATSR mission years 2002–2012 with seasonally averaged time series for selected regions.  相似文献   

17.
Landsat-8 TIRS数据第10波段和第11波段是热红外波段,两个波段数据空间分辨率是100 m。本文选取乌鲁木齐大泉湖煤田火区进行了实验,分别获取了2015年5月和2017年5月大泉湖煤田火区两期遥感影像,采用辐射传输方程方法进行了温度反演。对反演温度数据进行密度分割,提取了乌鲁木齐大泉湖煤田火区范围,并和经过物探方法确定的火区范围进行了叠加,矢量范围重合度达83%。结果显示,基于Landsat-8 TIRS数据煤田火区识别方法可行,对于煤田火区识别和监测将是一种重要的方法。  相似文献   

18.
随机森林是一种新兴的、高度灵活的机器学习算法,在预测和分类方面有着良好的稳定性,且算法性能要优于许多单预测器。鉴于此,本文提出了随机森林的遥感影像变化检测算法,利用熵率法对遥感影像进行超像素分割,获取最优分割结果;构建了基于随机森林的遥感影像变化检测模型,以所提取的Gabor特征和光谱特征作为模型输入进行训练和预测,并将有决策树的投票作为最终的变化检测结果。试验结果表明,本文所构建的随机森林变化检测模型在漏检率和虚检率上明显低于其他算法,且总体正确率高,在算法时间上也明显优于其他算法。  相似文献   

19.
高分辨率遥感影像建筑物分级提取   总被引:1,自引:1,他引:0  
高分辨率遥感影像建筑物信息自动提取是遥感应用研究中的一个热点问题,但由于受到成像条件不同、背景地物复杂、建筑物类型多样等多个因素的影响使得建筑物的自动提取仍然十分困难。为此,在综合考虑影像光谱、几何与上下文特征的基础上,提出了一种基于面向对象与形态学相结合的高分辨率遥感影像建筑物信息分级提取方法。该方法首先利用影像的多尺度及多方向Gabor小波变换结果提取建筑物特征点;然后采用面向对象的思想构建空间投票矩阵来度量每一个像素点属于建筑物区域的概率,从而提取出建筑物区域边界;最后在提取的建筑物区域内应用形态学建筑物指数实现建筑物信息的自动提取。实验结果表明,本文方法能够高效、高精度地完成复杂场景下的建筑物信息提取,且提取结果的正确性和完整性都优于效果较好的PanTex算法。  相似文献   

20.
针对BRISK特征检测算法在遥感影像中匹配时同名点对冗余度高和全局性差等特点,考虑BRISK特征检测算法能获取大量无人机遥感影像特征点,Delaunay三角网算法能够利用影像的BRISK特征点的粗匹配点对构建三角网,本文综合两种算法的优点,提出了一种结合BRISK特征检测算法和Delaunay三角网算法的剔除无人机遥感影像误匹配点对方法。该方法利用两张影像的BRISK粗匹配特征点构建Delaunay三角网,利用遍历两张影像三角网中的三角形相似度剔除错误匹配点对,并利用摄影不变量原理进一步剔除误匹配点对,提高了两张影像的精度;对比分析了Delaunay三角网的射影不变量算法,RANSAC算法分别剔除原始影像组、加入椒盐噪声影像组及旋转影像组的BRISK特征误匹配点对的效果。试验结果表明,3组影像分别利用结合BRISK特征和Delaunay三角网的射影不变量算法的无人机遥感影像匹配方法获得的正确特征匹配点对冗余度低、全局性优。  相似文献   

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