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1.
基于遥感的长沙市城市热岛与土地利用/覆盖变化研究   总被引:9,自引:0,他引:9  
基于多时相Landsat TM/ETM+影像,首先计算长沙市地表亮度温度,然后利用NDVI(归一化植被指数)、MNDWI(改进 的归一化水体指数)、NDBI(归一化建筑指数)和NDBaI(归一化裸土指数)4个指数,采用决策树分类方法对长沙市影像进行 土地利用/覆盖分类。在此基础上,对长沙市城市热岛的空间分布特征、时空演变特征以及城市热岛与土地利用/覆盖变化和各种影 响因子之间的关系进行研究。结果表明,随着长沙市城区范围的不断扩张,城市热岛范围也不断增大; 土地利用/覆盖类型的变化 会改变地表温度的空间分布,城市用地和裸地是城市热岛强度的主要贡献因素,水体和林地具有较好的降温作用。地表温度与4种 归一化指数的回归分析表明,它们之间存在明显的相关性,不同土地利用/覆盖类型的地表温度存在较大差异。  相似文献   

2.
利用2005年Landsat TM遥感卫星数据,对广州市不同土地利用类型与城市热环境之间的关系进行研究,发现不同土地利用类型对地表温度(LST)的影响具有明显的差异。草地、林地及耕地的LST与归一化植被覆盖指数(NDVI)呈现明显的负相关,水域的LST与归一化水体指数(MNDWI)之间呈现明显负相关,而城镇建设用地指数(NDBI)、未利用土地指数(NDBaI)则与LST呈现明显正相关。最后建立了LST与各土地利用类型表征指数及DEM之间的多元线性回归方程,可用来指示一个地区不同地表覆盖及地形差异导致的地表温度分布,为城市热环境的评价和分析提供依据。  相似文献   

3.
以天津市静海区的团泊湖为研究对象,基于Landsat TM、OLI遥感数据,采用MNDWI指数提取湖泊水体,获得湖泊水体信息;根据土地利用类型转移矩阵和土地类型动态度这两种方法来分析土地利用类型的演变特征。结果表明,1995—2020年总体上湖泊水体面积减少。在1995—2020年这段时间内,城镇类型的土地面积增长最大,水体面积变化最小。植被面积减少较大,其中大部分转为城镇,少量转为水体。水体面积变化相对比较稳定,没有太大波动。  相似文献   

4.
滕宇思  夏维力 《测绘科学》2015,40(2):109-114
针对西安市优化和完善土地利用结构、确保土地资源可持续利用的需求,该文以西安市2003年至2012年统计年鉴资料为基础,通过对比分析西安市2003年和2012年的土地利用变更调查数据,分别从土地利用的结构变化、动态变化以及程度变化3个方面入手,对西安市土地利用变化情况进行研究,并运用主成分分析法,揭示其主要驱动力。结果表明:从2003年至2012年西安市土地利用仍处于发展阶段,在城市化进程中土地利用变化的主要驱动力依然是人口增长、经济发展以及不断提高的工业化和城市化水平等社会经济因素。  相似文献   

5.
在遥感技术与GIS挂术的支持下,对南昌市城区15年来土地利用的时间动态特征和空间动态特征进行了定量分析。具体表现为通过数学建模,利用土地利用动态度模型、土地利用开发度模型、土地利用耗减度模型等对土地利用时空特征进行了分析。研究结果表明:南昌市城区的土地利用格局分布越来越均匀,斑块间的面积差异在逐渐缩小,某一土地利用类型占优势的状况逐渐减小,土地利用受人类影响程度越来越大。而且还揭示出土地利用类型中除耕地面积大量减少、建设用地面积大量增加外,其他土地利用类型均有不同程度的变化。  相似文献   

6.
多尺度城市地表温度降尺度方法   总被引:1,自引:0,他引:1  
针对目前星载热红外传感器的空间分辨率低,无法满足城市尺度的生态环境研究需求的现状,该文选择地表覆盖类型复杂的区域,根据研究区土地覆盖类型,选取归一化植被指数(NDVI)、城市不透水面指数(ISA)、改进的归一化差异水体指数(MNDWI)等因子加入DisTrad模型,采用移动窗口逐步回归统计地表温度和因子的线性关系,利用半方差曲线函数和均方根误差综合确定最优移动窗口的大小,以提高地表温度降尺度精度。研究结果表明:改进的DisTrad模型在地表覆盖类型复杂区域,具有良好的降尺度目视效果,且具有较高的降尺度精度,尤其在低植被覆盖的建筑区、水体区域具有更高的精度。  相似文献   

7.
张熙  鹿琳琳  王萍  周春艳  冀婷婷 《测绘科学》2016,41(3):100-103,90
针对山区植被分类受地形复杂、植被类型多样、验证数据获取困难等因素限制基于多光谱数据的亚热带山区土地利用/覆盖分类存在困难,探究利用物候信息对亚热带山区植被实施分类的效果。综合运用归一化植被指数(NDVI)、比值植被指数(RVI)、归一化水指数(NDWI),同时考虑到海拔高度对植被类型的影响,建立决策树模型。该模型基于多时相Landsat TM影像,利用了不同地物类型的物候特征和光谱差异,将漓江上游地区分为8种土地覆盖类型。实验结果表明,分类结果总体精度达到86.40%,Kappa系数为0.83。  相似文献   

8.
近年来,由于区域人口的增加和社会经济的快速发展,西安市的土地利用类型发生了明显变化。土地利用分类可为生态系统模型、水资源模型和气候模型等提供重要信息,遥感技术为土地利用分类提供了有效的工具。本文以西安市2016年Landsat-8卫星的OLI多光谱数据为基础资料,参考国家土地利用分类标准和西安市土地利用现状,将西安市的土地类型分为建设用地、裸地、水体、草地、耕地、林地6类,采用监督分类中常用的最大似然分类法和决策树分类方法对研究数据进行解译,利用总体分类精度和Kappa系数等指标对各分类精度加以评价,并结合实际用地情况对分类结果进行了总结分析。  相似文献   

9.
利用改进的归一化差异水体指数(MNDWI)提取水体信息的研究   总被引:238,自引:7,他引:238  
徐涵秋 《遥感学报》2005,9(5):589-595
在对M cfeeters提出的归一化差异水体指数(NDWI)分析的基础上,对构成该指数的波长组合进行了修改,提出了改进的归一化差异水体指数MNDWI(M odified NDWI),并分别将该指数在含不同水体类型的遥感影像进行了实验,大部分获得了比NDWI好的效果,特别是提取城镇范围内的水体。NDWI指数影像因往往混有城镇建筑用地信息而使得提取的水体范围和面积有所扩大。实验还发现MNDWI比NDWI更能够揭示水体微细特征,如悬浮沉积物的分布、水质的变化。另外,MNDWI可以很容易地区分阴影和水体,解决了水体提取中难于消除阴影的难题。  相似文献   

10.
湛青青  王辉源 《东北测绘》2014,(2):62-65,69
以西安市长安区TM影像为例,研究关于城市建筑用地信息快速、准确提取的方法。通过对归一化差异型指数构成原理的分析,选取土壤调节植被指数( SAVI )、归一化水体指数( NDWI )和归一化差异型建筑指数( NDBI )来提取植被、水体和城市建筑用地专题影像,并将其构建为一幅新影像,分析新影像谱间特征,运用逻辑运算将城市建筑用地信息提取出来。本文方法总体提取效果十分有效,尤其是对于面积较大的城市建筑用地,总精度高达85.3%。综合指数法弥补了单靠某一指数提取城市建筑用地信息的不足,提取结果客观可信,是一种不经人为干预、快速有效的提取城市建筑用地的方法。  相似文献   

11.
The characteristics of very high resolution (VHR) satellite data are encouraging development agencies to investigate its use in monitoring and evaluation programmes. VHR data pose challenges for land use classification of heterogeneous rural landscapes as it is not possible to develop generalised and transferable land use classification definitions and algorithms. We present an operational framework for classifying VHR satellite data in heterogeneous rural landscapes using an object-based and random forest classifier. The framework overcomes the challenges of classifying VHR data in anthropogenic landscapes. It does this by using an image stack of RGB-NIR, Normalised Difference Vegetation Index (NDVI) and textural bands in a two-phase object-based classification. The framework can be applied to data acquired by different sensors, with different view and illumination geometries, at different times of the year. Even with these complex input data the framework can produce classification results that are comparable across time. Here we describe the framework and present an example of its application using data from QuickBird (2 images) and GeoEye (1 image) sensors.  相似文献   

12.
Wetlands provide habitat for a wide variety of plant and animal species and contribute significantly to overall biodiversity in Ireland. Despite these known ecosystem services, the total wetland area in Ireland has reduced significantly over the past few decades leading to an ongoing need to protect such environments. The EU Habitats Directive (92/43/EEC) has recognised several wetlands types as “priority” habitats. This study concentrates on a subset of the priority habitats focussing on some groundwater dependent terrestrial ecosystems, (in particular calcareous fens and turloughs), as well as raised bogs. Monitoring these sites across the country by field visits is resource-intensive. Therefore, this study has evaluated remote sensing as a potentially cost-effective tool for monitoring the ecological health of the wetlands. Identification and presence of certain vegetation communities can indicate the condition of the wetland, which can be used for monitoring, for example, activities causing degradation or the progress of restoration attempts. The ecological composition of the wetlands has been analysed using open-source Sentinel-2 data. 10 bands of Sentinel-2 Level-2 data and 3 indices, Normalised Difference Vegetation Index (NDVI), Enhanced Vegetation Index (EVI) and Normalised Difference Water Index (NDWI) were used to create vegetation maps of each wetland using Bagged Tree (BT) ensemble classifier and graph cut segmentation also known as MAP (maximum a posteriori) estimation. The proposed methodology has been validated on five raised bogs, five turloughs, and three fens at different times during 2017 and 2018 from which three case studies are presented. An overall classification accuracy up to 87% depending on the size of the vegetation community within each wetland has been achieved which suggests that the proposed method is appropriate for wetland health monitoring.  相似文献   

13.
深入分析研究区不透水表面和其他城市基本组分土地覆盖类型的特征后,通过研究已有归一化不透水表面指数(NDISI)提取方案的适用性和研究区域特点,创建出一种改进型归一化差值不透水表面指数(MNDISI),并结合实地调查分析,在中等分辨率影像上运用基于对象的方法,提出新的指数增强提取方案,实现不透水表面信息的自动准确提取,并将其作为一个范例供其他西北内陆城市借鉴。  相似文献   

14.
To have sustainable management and proper decision-making, timely acquisition and analysis of surface features are necessary. Traditional pixel-based analysis is the popular way to extract different categories, but it is not comparable by the achievements that can be achieved through the object-based method that uses the additional characteristics of features in the process of classification. In this paper, three types of classification were used to classify SPOT 5 satellite image in mapping land cover; Support vector machine (SVM) pixel-based, SVM object-based and Decision Tree (DT) pixel-based classification. Normalised Difference Vegetation Index and the brightness value of two infrared bands (NIR and SWIR) were used in manually developed DT classification. The classification of the SVM (pixel based) was generated using the selected groups of pixels that represent the selected features. In addition, the SVM (object based) was implemented by using radial-based function kernel. The classified features were oil palm, rubber, urban area, soil, water and other vegetation. The study found that the overall classification of the DT was the lowest at 69.87% while those of SVM (pixel based) and SVM (object based) were 76.67 and 81.25%, respectively.  相似文献   

15.
Abstract

A long-term, consistent Fraction of Absorbed Photosynthetically Active Radiation (FPAR) product is necessary to study the spatial and temporal patterns of vegetation dynamics associated with climatic changes and human activities. In this study, Eurasia was selected as the study area. The relationship between FPAR and simple infrared/red ratio relationship (SR FPAR), and that between Moderate Resolution Imaging Spectroradiometer (MODIS) FPAR and a Normalised Difference Vegetation Index (NDVI) look-up table (LUT FPAR) were employed to estimate FPAR from 1982 to 2006 by different land cover types, focusing on the comparisons of spatiotemporal FPAR patterns between the two FPAR datasets. The results showed high agreement between MODIS standard FPAR and estimated FPAR in seasonal dynamics with peak values in July. The LUT FPAR was close to MODIS standard FPAR and larger than SR FPAR. The SR and LUT FPAR showed the same spatial distribution and inter-annual variation patterns and were primarily determined by land cover types. An overall increasing trend in FPAR was observed from 1982 to 2006, with reductions from 1991 to 1994 and 2000 to 2002. The inter-annual dynamics in evergreen broadleaf forests showed a decreasing trend over 25 years, while non-forest vegetation FPAR values had slow, stable growth in inter-annual variation.  相似文献   

16.
Abstract

Characterisation and mapping of land cover/land use within forest areas over long-multitemporal intervals is a complex task. This complexity is mainly due to the location and extent of such areas and, as a consequence, to the lack of full continuous cloud-free coverage of those large regions by one single remote sensing instrument. In order to provide improved long-multitemporal forest change detection using Landsat MSS and ETM + in part of Mt. Kenya rainforest, and to develop a model for forest change monitoring, wavelet transforms analysis was tested against the ISOCLUS algorithm for the derivation of changes in natural forest cover, as determined using four simple ratio-based Vegetation Indices: Simple Ratio (SR), Normalised Difference Vegetation Index (NDVI), Renormalised Difference Vegetation Index (RDVI) and modified simple ratio (MSR). Based on statistical and empirical accuracy assessments, RDVI presented the optimal index for the case study. The overall accuracy statistic of the wavelet derived change/no-change was used to rank the performances of the indices as: RDVI (91.68%), MSR (82.55%), NDVI (79.73%) and SR (65.34%). The integrated discrete wavelet transform–ISOCLUS (DWT–ISOCLUS) result was 42.65% higher than the independent ISOCLUS approach in mapping the change/no-change information. The methodology suggested in this study presents a cost-effective and practical method to detect land-cover changes in support of decision-making for updating forest databases, and for long-term monitoring of vegetation changes from multisensor imagery. The current research contributes to Digital Earth with regards to geo-data acquisition, data mining and representation of one forest systems.  相似文献   

17.
The analysis and classification of land cover is one of the principal applications in terrestrial remote sensing. Due to the seasonal variability of different vegetation types and land surface characteristics, the ability to discriminate land cover types changes over time. Multi-temporal classification can help to improve the classification accuracies, but different constraints, such as financial restrictions or atmospheric conditions, may impede their application. The optimisation of image acquisition timing and frequencies can help to increase the effectiveness of the classification process. For this purpose, the Feature Importance (FI) measure of the state-of-the art machine learning method Random Forest was used to determine the optimal image acquisition periods for a general (Grassland, Forest, Water, Settlement, Peatland) and Grassland specific (Improved Grassland, Semi-Improved Grassland) land cover classification in central Ireland based on a 9-year time-series of MODIS Terra 16 day composite data (MOD13Q1). Feature Importances for each acquisition period of the Enhanced Vegetation Index (EVI) and Normalised Difference Vegetation Index (NDVI) were calculated for both classification scenarios. In the general land cover classification, the months December and January showed the highest, and July and August the lowest separability for both VIs over the entire nine-year period. This temporal separability was reflected in the classification accuracies, where the optimal choice of image dates outperformed the worst image date by 13% using NDVI and 5% using EVI on a mono-temporal analysis. With the addition of the next best image periods to the data input the classification accuracies converged quickly to their limit at around 8–10 images. The binary classification schemes, using two classes only, showed a stronger seasonal dependency with a higher intra-annual, but lower inter-annual variation. Nonetheless anomalous weather conditions, such as the cold winter of 2009/2010 can alter the temporal separability pattern significantly. Due to the extensive use of the NDVI for land cover discrimination, the findings of this study should be transferrable to data from other optical sensors with a higher spatial resolution. However, the high impact of outliers from the general climatic pattern highlights the limitation of spatial transferability to locations with different climatic and land cover conditions. The use of high-temporal, moderate resolution data such as MODIS in conjunction with machine-learning techniques proved to be a good base for the prediction of image acquisition timing for optimal land cover classification results.  相似文献   

18.
Spectral yield models for Punjab were updated by incorporating the latest data set on district-wise Normalised Difference Vegetation Index (NDVI) and wheat yields. In order to improve the model, historical yield trend for the past ten years was used to derive a linear regression relation for each district. Yield predicted by these linear trend relations was evaluated for validation of the approach. Finally a multiple regression relation incorporating both NDVI and trend-predicted yield was developed. This model shows better prediction capability as seen from yield forecasts of 1991–92 season.  相似文献   

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