Effects of spatial and spectral resolution in estimating ecosystem α-diversity by satellite imagery

被引:214
作者
Rocchini, Duccio
机构
[1] Univ Siena, Dipartimento Sci Ambientali G Sarfatti, I-53100 Siena, Italy
[2] TerraData Environmetr, I-53100 Siena, Italy
关键词
alpha-diversity; grain; plant species richness; spatial resolution; spectral resolution; spectral variation hypothesis;
D O I
10.1016/j.rse.2007.03.018
中图分类号
X [环境科学、安全科学];
学科分类号
08 ; 0830 ;
摘要
Remote sensing represents a powerful tool to derive quantitative and qualitative information about ecosystem biodiversity. In particular, since plant species richness is a fundamental indicator of biodiversity at the community and regional scales, attempts were made to predict species richness (spatial heterogeneity) by means of spectral heterogeneity. The possibility of using spectral variance of satellite images for predicting species richness is known as Spectral Variation Hypothesis. However, when using remotely sensed data, researchers are limited to specific scales of investigation. This paper aims to investigate the effects of scale (both as spatial and spectral resolution) when searching for a relation between spectral and spatial (related to plant species richness) heterogeneity, by using satellite data with different spatial and spectral resolution. Species composition was sampled within square plots of 100 m(2) nested in macroplots of 10,000 m(2). Spectral heterogeneity of each macroplot was calculated using satellite images with different spatial and spectral resolution: a Quickbird multispectral image (4 bands, spatial resolution of 3 m), an Aster multispectral image (first 9 bands used, spatial resolution of 15 m for bands 1 to 3 and 30 m for bands 4 to 9), an ortho-Landsat ETM+ multispectral image (bands 1 to 5 and band 7 used; spatial resolution, 30 m), a resampled 60 m Landsat ETM+ image. Quickbird image heterogeneity showed a statistically highly significant correlation with species richness (r=0.69) while coarse resolution images showed contrasting results (r=0.43, r=0.67, and r=0.69 considering the Aster, Landsat ETM+, and the resampled 60 m Landsat ETM+ images respectively). It should be stressed that spectral variability is scene and sensor dependent. Considering coarser spatial resolution images, in such a case even using SWIR Aster bands (i.e. the additional spectral information with respect to Quickbird image) such an image showed a very low power in catching spectral and thus spatial variability with respect to Landsat ETM+ imagery. Obviously coarser resolution data tend to have mixed pixel problems and hence less sensitive to spatial complexity. Thus, one might argue that using a finer pixel dimension should inevitably result in a higher level of detail. On the other hand, the spectral response from different land-cover features (and thus different species) in images with higher spectral resolution should exhibit higher complexity. Spectral Variation Hypothesis could be a basis for improving sampling designs and strategies for species inventory fieldwork. However, researchers must be aware on scale effects when measuring spectral (and thus spatial) heterogeneity and relating it to field data, hence considering the concept of scale not only related to a spatial framework but even to a spectral one. (c) 2007 Elsevier Inc. All rights reserved.
引用
收藏
页码:423 / 434
页数:12
相关论文
共 103 条
[1]  
Abeyta AM, 1998, PHOTOGRAMM ENG REM S, V64, P59
[2]   Principal component analysis applied to feature-oriented band ratios of hyperspectral data: a tool for vegetation studies [J].
Almeida, TIR ;
De Souza, CR .
INTERNATIONAL JOURNAL OF REMOTE SENSING, 2004, 25 (22) :5005-5023
[3]   Characterization of wetland plant stress using leaf spectral reflectance: Implications for wetland remote sensing [J].
Anderson, JE ;
Perry, JE .
WETLANDS, 1996, 16 (04) :477-487
[4]   Would environmental diversity be a good surrogate for species diversity? [J].
Araújo, MB ;
Humphries, CJ ;
Densham, PJ ;
Lampinen, R ;
Hagemeijer, WJM ;
Mitchell-Jones, AJ ;
Gasc, JP .
ECOGRAPHY, 2001, 24 (01) :103-110
[5]   Spatial error propagation when computing linear combinations of spectral bands: The case of vegetation indices [J].
Arbia, G ;
Griffith, DA ;
Haining, RP .
ENVIRONMENTAL AND ECOLOGICAL STATISTICS, 2003, 10 (03) :375-396
[6]   Species and area [J].
Arrhenius, O .
JOURNAL OF ECOLOGY, 1921, 9 :95-99
[7]   Methodology for hyperspectral band selection [J].
Bajcsy, P ;
Groves, P .
PHOTOGRAMMETRIC ENGINEERING AND REMOTE SENSING, 2004, 70 (07) :793-802
[8]  
Campbell J.B., 1996, INTRO REMOTE SENSING
[9]   Effects of grazing and topography on long-term vegetation changes in a Mediterranean ecosystem in Israel [J].
Carmel, Y ;
Kadmon, R .
PLANT ECOLOGY, 1999, 145 (02) :243-254