首页 | 本学科首页   官方微博 | 高级检索  
相似文献
 共查询到19条相似文献,搜索用时 187 毫秒
1.
Landsat8简介   总被引:8,自引:0,他引:8  
2013年2月12日,美国从加利福尼亚州的范登堡空军基地(Vandenberg AIR Force Base,California)成功发射了Landsat 8陆地卫星.Landsat 8是为了纪念陆地卫星系列发射40周年(1972 ~ 2012,图1)而制订的陆地卫星数据连续性发射LDCM (Landsat DATA Continuity Mission)产物.其运载工具为宇宙神-5火箭(Atlas-Vrocket).Landsat 8或称LDCM携带2个主要载荷:运行陆地成像仪(Operational Land Imager,OLI)和热红外传感器(Thermal Infrared Sensor,TIRS).与之前的Landsat系列星相比,这2个载荷都有了重大改进.  相似文献   

2.
徐涵秋 《遥感学报》2016,20(2):229-235
Landsat系列卫星上的TIRS热红外传感器数据已被大量应用,针对TIRS数据的地表温度反演也相继开发出一些算法,并有一些研究对TIRS数据的定标及其地表温度反演算法的精度进行了对比。本文主要就TIRS热红外传感器定标参数的变化,结合这些定标参数变化的时间点对有关地表温度反演算法的适用性和有效性进行分析,特别是对劈窗算法是否适合当前的TIRS数据进行了讨论,以使用户能够对Landsat 8 TIRS热红外数据的正确使用有进一步的认识。总的看来,由于视域外杂散光的影响,TIRS数据的定标精度仍达不到设计目标,TIRS第11波段的不确定性仍成倍大于TIRS 10波段。因此,在Landsat团队未彻底解决这一问题之前,同时用TIRS第10、第11这两个差距较大的波段构成的劈窗算法来反演地表温度,其精度存在较大的不确定性,US6-S团队仍在致力于改进第11波段的精度,改进后的波段可以用劈窗策法。目前应以TIRS第10单波段的方式来反演地表温度为宜。  相似文献   

3.
单窗算法结合Landsat8热红外数据反演地表温度   总被引:4,自引:0,他引:4  
Landsat热红外系列数据一直是地表温度反演重要的遥感数据源,目前用于地表温度反演的单窗算法主要针对Landsat TM/ETM+第6波段数据(TM 6)建立的,Landsat 8热红外传感器(TIRS)与TM 6相比有很多变化,因而其单窗算法也需要改进。本文以Landsat 8 TIRS第10波段(TIRS 10)为数据源,提出了针对TIRS 10的单窗算法(TIRS10_SC),并对研究区地表温度进行反演研究,确定了研究区不同类型地表的温度值。研究结果表明:(1)TIRS10_SC算法可以较好地应用于Landsat 8数据的地表温度反演,平均反演误差为0.83℃,相关系数为0.805,反演温度与模拟数据和实测数据都具有较好的一致性;(2)通过对单窗算法中的地表发射率、大气水汽含量和大气平均作用温度等参数敏感性分析发现,TIRS10 SC算法能够获得较为可靠的反演结果;同时,TIRS10 SC算法对大气水汽含量和地表发射率敏感性较高,对大气平均作用温度敏感性稍弱。该算法对于利用Landsat 8 TIRS数据快速反演地表温度具有应用价值。  相似文献   

4.
Landsat系列卫星为地球资源环境动态监测提供了长达40余年的中高分辨率卫星影像,近年来USGS等实施的Landsat数据共享计划使Landsat系列卫星数据成为应用最广泛的中高分辨率卫星数据。长期以来,Landsat系列卫星数据以灰度值(DN值)的形式提供给用户,受传感器波段响应、具体成像条件(太阳高度角、大气散射和吸收等)差异等的影响,不同传感器、不同时间、不同地点的卫星影像DN值不具有可比性,给Landsat系列卫星数据的定量应用造成了障碍。近年来国内外多家研究机构陆续推出了Landsat系列卫星地表反射率产品,以增强Landsat长时间系列卫星数据的可比性。本文对USGS、马里兰大学、WELD团队和中国科学院等多家机构推出的Landsat地表反射率产品进行了介绍,并对未来的研究方向进行了展望。  相似文献   

5.
张旭萍 《北京测绘》2023,(3):360-364
针对北京市热岛效应日益加重的问题,提出了基于陆地卫星8号(Landsat8)所携带的陆地成像仪(OLI)和热红外成像仪(TIRS)的Level-1数据反演地表温度、计算植被覆盖度的方法;并构建地表温度反演模型,探究北京市热岛效应与城市绿地面积关系。实验结果表明:高温区大部分集中在中心城区,并向周围的郊区的平原地带呈辐射状扩散,随着城区绿地面积增加,植被覆盖度上升的同时城区的热岛强度也呈下降趋势,说明城市绿地面积的增加与热岛效应呈负相关关系。  相似文献   

6.
干旱地区土壤水分是影响气候动态变化、植被生态恢复和土地荒漠化治理的重要指示因子.本研究采用Landsat8 OLI/TIRS多光谱遥感影像,在9个传统光谱指数基础上引入热红外波段(b10)进行改进,通过显著性检验和多重共线性检验后的优选光谱指数作为本研究的建模因子,并结合地形数据采用多元线性回归(multivariab...  相似文献   

7.
Landsat8影像被广泛应用于陆地表面温度的提取,但基于Landsat8的海冰表面温度产品依旧空缺,且无标准算法可循。基于Landsat8卫星搭载的TIRS传感器获取的热红外波段影像,利用3种常用的劈裂窗算法分别进行海冰表面温度反演,并将结果与浮标实测海冰表面温度数据和MODIS海冰表面温度产品进行了对比和验证。与浮标数据相比,DU C等的算法平均绝对误差和均方根误差最小,分别为1.718 6 K和2.621 3 K,可作为海冰表面温度反演的标准算法;而Jiménez-Mu?oz J C等的算法结果与MODIS冰温产品最为接近,适用于需与已有的MODIS冰温产品联合使用的情况,且两种算法的精度均优于已有的MODIS冰温产品;JIN M J等的算法在研究区域表现不佳。同时,与浮标数据相比,所有基于卫星影像反演的冰温产品在数值上总体偏低。  相似文献   

8.
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   

9.
随着城市化、工业化的快速发展,全球气候变暖,人们逐渐认识到研究城市热岛效应的重要性。现以西安市为研究对象,以2000年的Landsat7 ETM+数据和2016年Landsat8 OLI/TIRS数据为数据源,基于热红外数据反演地表温度的辐射传输方程法,了解西安市的城市热岛效应特征,提出通过增加城市绿地的面积和水体的面积,在一定程度上缓减城市热岛效应,降低城市的地表温度。  相似文献   

10.
遥感卫星的波段设置、信噪比及传感器观测角度等因素都会影响作物提取精度。为充分挖掘与发挥Sentinel-2卫星多光谱成像仪(MSI)与Landsat 8陆地成像仪(OLI)在冬小麦信息提取方面的优势,本文以商河县为研究区,基于两数据源的光谱特征、纹理特征、植被指数特征组合数据,利用随机森林(RF)与支持向量机(SVM)对冬小麦进行提取。结果表明:基于单一影像的最优Kappa系数与最优OA分别为0.89和95.13%,基于组合数据源的最优Kappa系数为0.92,最优OA为95.28%,两数据源组合的精度优于单一数据源提取精度;数据组合效果与分类器的性能有关,RF的Kappa系数相对于SVM分别提升0.04、0.20和0.11,OA分别提升2.41%、11.31%和6%,RF对冬小麦提取精度优于SVM。本文研究结果对于构建中高分辨率影像组合的典型农作物分类提取体系具有重要意义。  相似文献   

11.
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   

12.
The present work evaluates the applicability of operational land imager (OLI) and thermal infrared sensor (TIRS) on-board Landsat 8 satellite. We demonstrate an algorithm for automated mapping of glacier facies and supraglacial debris using data collected in blue, near infrared (NIR), short wave infrared (SWIR) and thermal infrared (TIR) bands. The reflectance properties in visible and NIR regions of OLI for various glacier facies are in contrast with those in SWIR region. Based on the premise that different surface types (snow, ice and debris) of a glacier should show distinct thermal regimes, the ‘at-satellite brightness temperature’ obtained using TIRS was used as a base layer for developing the algorithm. This base layer was enhanced and modified using contrasting reflectance properties of OLI bands. In addition to facies and debris cover characterization, another interesting outcome of this algorithm was extraction of crevasses on the glacier surface which were distinctly visible in output and classified images. The validity of this algorithm was checked using field data along a transect of the glacier acquired during the satellite pass over the study area. With slight scene-dependent threshold adjustments, this work can be replicated for mapping glacier facies and supraglacial debris in any alpine valley glacier.  相似文献   

13.
In this study, we presented a mono-window (MW) algorithm for land surface temperature retrieval from Landsat 8 TIRS. MW needs spectral radiance and emissivity of thermal infrared bands as input for deriving LST. The spectral radiance was estimated using band 10, and the surface emissivity value was derived with the help of NDVI and vegetation proportion parameters for which OLI bands 5 and 4 were used. The results in comparison with MODIS (MOD11A1) products indicated that the proposed algorithm is capable of retrieving accurate LST values, with a correlation coefficient of 0.850. The industrial area, public facilities and military area show higher surface temperature (more than 37 °C) in comparison with adjoining areas, while the green spaces in urban areas (34 °C) and forests (29 °C) were the cooler part of the city. These successful results obtained in the study could be used as an efficient method for the environmental impact assessment.  相似文献   

14.
The operational land imager (OLI) is the latest instrument in the Landsat series of satellite imagery, which officially began normal operations on 30 May 2013. The OLI includes two bands that are not on the thematic mapper series of sensors aboard Landsat-5 and 7; a cirrus band and a coastal/aerosol band. This paper compares the classification and regression tree and the kernel-based extreme learning machine (KELM) for mapping crops in Hokkaido, Japan, using OLI data, except the cirrus band and the pan band. The OLI data acquired on 8 July 2013 was used for crop classification of beans, beets, grassland, maize, potatoes and winter wheat. The KELM algorithm performed better in this study and achieved overall accuracies of 90.1%. According to the Jeffries–Matusita (J–M) distances, the short wavelength infrared band provides the greater contribution (the highest value was observed for band 6 in OLI data).  相似文献   

15.
Coffee is a commodity of international trade significance, and its value chain can benefit from age-specific thematic maps. This study aimed to assess the potential of Landsat 8 OLI to develop these maps. Using field-collected samples with the random forest classifier, splitting coffee into three age classes (Scheme A) was compared with running the classification with one compound coffee class (Scheme B). Higher overall classification accuracy was obtained in Scheme B (90.3% for OLI and 86.8% for ETM+) than in Scheme A (86.2% for OLI and 81.0% for ETM+). The NIR band of OLI was the most important band in intra-class discrimination of coffee. Landsat 8 OLI mapped area closely matched farm records (R2?=?0.88) compared to that of Landsat 7 ETM+ (R2?=?0.78). It was concluded that Landsat 8 OLI data can be used to produce age-specific thematic maps in coffee production areas although disaggregating coffee classes reduces overall accuracy.  相似文献   

16.
长时间序列多源遥感数据的森林干扰监测算法研究进展   总被引:2,自引:2,他引:2  
沈文娟  李明诗  黄成全 《遥感学报》2018,22(6):1005-1022
时空意义明确的森林干扰和恢复信息是评价森林生态系统碳动态的关键因素之一。然而由于诸多的现实困难,多尺度的森林干扰定量化时空信息相对缺乏。Landsat数据具备光谱、时间和空间分辨率上的优势,以及可以免费获取的特点,使其成为主要的长时间序列动态监测的遥感数据源之一,为长时间周期内提供具有合适的空间细节和时间频率的森林干扰信息成为可能。特别是基于Landsat时间序列堆栈(LTSS)的森林干扰自动分析算法的出现,更为森林生态系统的近实时监测提供强有力的工具。本文全面评述了长时间序列遥感数据准备和预处理技术以及国内外基于遥感数据源的多时相森林干扰监测方法,重点分析了基于Landsat的多种指数监测和自动化方法的优缺点,并总结了其与多源数据结合的扩展应用,最后就现有方法与国内外新的数据、技术手段的关联进行了展望,以期为推广中国本土卫星影像应用于森林干扰监测提供理论借鉴。  相似文献   

17.
With the longest archive of satellite remote sensing images, the Landsat series of satellites have demonstrated their great potential in aquatic environmental studies. However, although various atmospheric correction (AC) methods have been developed for Landsat observations in water color applications, a comprehensive assessment of their accuracies across different AC methods and instruments has yet to be performed. Using in situ spectral data collected by Aerosol Robotic Network-Ocean Color (AERONET-OC) sites, the performances of five types of AC methods over three different Landsat missions (i.e., Landsat 5/7/8) were evaluated. The Landsat 8 Operational Land Imager (OLI) showed more accurate AC retrievals than the other two instruments, and the results for its green and red bands appeared more reliable than those for the other wavelengths (uncertainty levels of ∼30 %). The iterative NIR algorithm with 2-bands (NIR-SWIR2) model selection embedded in SeaDAS showed the best performances for OLI in two blue bands. Moreover, larger residual errors were found for most Landsat 5/7 bands regardless of the AC methods and spectral bands employed with an uncertainty of >50 %. Interestingly, a simple aerosol subtraction method over the Rayleigh-corrected reflectance (Rrc) outperformed the exponential extrapolation (EXP) algorithms, especially for Landsat 5/7. Neither the image-based AC algorithm nor the surface reflectance (SR) products provided by the United States Geological Survey (USGS) showed acceptable performances over coastal environments. The uncertainties in the various Landsat reflectance products over water surfaces could be associated with a relatively poor signal-to-noise ratio (SNR) in addition to radiometric calibration uncertainties, imperfect aerosol removal methods. Future research is required to collect in situ data across a wider range of water optical properties (particularly more turbid inland waters) to examine the corresponding applicability of Landsat-series observations.  相似文献   

18.
Developing techniques are required to generate agricultural land cover maps to monitor agricultural fields. Landsat 8 Operational Land Imager (OLI) offers reflectance data over the visible to shortwave-infrared range. OLI offers several advantages, such as adequate spatial and spectral resolution, and 16 day repeat coverage, furthermore, spectral indices derived from Landsat 8 OLI possess great potential for evaluating the status of vegetation. Additionally, classification algorithms are essential for generating accurate maps. Recently, multi-Grained Cascade Forest, which is also called deep forest, was proposed, and it was shown to give highly competitive performance for classification. However, the ability of this algorithm to generate crop maps with satellite data had not yet been evaluated. In this study, the reflectance at 7 bands and 57 spectral indices calculated from Landsat 8 OLI data were evaluated for its potential for crop type identification.  相似文献   

19.
The main aim of this study is to propose a novel hybrid deep learning framework approach for accurate mapping of debris covered glaciers. The framework comprises of integration of several CNNs architecture, in which different combinations of Landsat 8 multispectral bands (including thermal band), topographic and texture parameters are passed as input for feature extraction. The output of an ensemble of these CNNs is hybrid with random forest model for classification. The major pillars of the framework include: (1) technique for implementing topographic and atmospheric corrections (preprocessing), (2) the proposed hybrid of ensemble of CNNs and random forest classifier, and (3) procedures to determine whether a pixel predicted as snow is a cloud edge/shadow (post-processing). The proposed approach was implemented on the multispectral Landsat 8 OLI (operational land imager)/TIRS (thermal infrared sensor) data and Shuttle Radar Topography Mission Digital Elevation Model for the part of the region situated in Alaknanda basin, Uttarakhand, Himalaya. The proposed framework was observed to outperform (accuracy 96.79%) the current state-of-art machine learning algorithms such as artificial neural network, support vector machine, and random forest. Accuracy assessment was performed by means of several statistics measures (precision, accuracy, recall, and specificity).  相似文献   

设为首页 | 免责声明 | 关于勤云 | 加入收藏

Copyright©北京勤云科技发展有限公司  京ICP备09084417号