LUAN Haijun, TIAN Qingjiu, YU Tao, et al. Establishing continuous spatial scaling model of NDVI on fractal theory and five-index estimation system. [J]. Journal of Remote Sensing 19(1):116-125(2015)
LUAN Haijun, TIAN Qingjiu, YU Tao, et al. Establishing continuous spatial scaling model of NDVI on fractal theory and five-index estimation system. [J]. Journal of Remote Sensing 19(1):116-125(2015) DOI: 10.11834/jrs.20153340.
Establishing continuous spatial scaling model of NDVI on fractal theory and five-index estimation system
Spatial scale transformation is one of the basic and important scientific problems in quantitative remote sensing field.Spatial up-scaling has particularly drawn much attention
as it can effectively help solve difficult problems
e. g.
validation of quantitative remote sensing products. However
some issues remain concerning spatial up-scaling research.( 1) The transformation formula established by statistical methods has no explicit physical meaning and its available range is limited.( 2) The lack of reasonable retrieved physical models hampers the development of up-scaling based on these models. As an important retrieval method
the up-scaling of NDVI also faces these two issues. To address these problems using statistical and physical methods
continuous spatial scaling model( CSSM) of NDVI on the basis of fractal theory was established. The CSSM exhibits a wide available scale range and partial physical meanings. However
the means of determining the most reasonable Level( scale hierarchies) for establishing the model remains an important problem
which is studied in this research.In this research
a precise and rigorous method of determining the most reasonable Level was developed based on a five-index estimation system. The system integrates statistical estimation indices( r
p
rlo
and rup) and an availability-in-validation index [largest error in validation
Max
o
f
a
bs( Error) ]. It was computed as follows. First
the NDVI CSSM of an image was established on each of the different Levels. Second
the indices( r
p
rlo
and rup) on each Level were compared and analyzed. Third
the most reasonable Level could be computed based on the defined Max
o
f
a
bs( Error) to establish the widest scale CSSM.Shatian Byland( Beihai City
Guangxi Zhuang Autonomous Region) was selected as the experimental area because of its variety of ground objects and high spatial heterogeneity. Taking the values( r≥0. 8
p
<
0. 05
rlo≥r≤rup and Max
o
f
a
bs( Error) ≤0. 05) as estimation system
the most reasonable Level( Level = 267) was computed. On that Level
the model was log2 NDVI =1- 0. 0347log2 1/scale-1.1296 and its scale range was from 30 m to 8010 m. Within the range
validating the NDVI image on any scaleup-scale( corresponding to the integral multiple of the 30 m resolution of ETM + image) could be implemented by the model.Furthermore
the sensitivity of the Level to values of the estimation system was analyzed. The Level would dynamically change when the threshold values of the five-index estimation system were different and the application purpose changed
which meant that the method in the research was steady and rigorous.In this research
the method of determining the most reasonable Level for establishing the CSSM of NDVI was developed based on a five-index [r
p
rlo
rup
and Max
o
f
a
bs( Error) ] estimation system. This model quantitatively described the transformation relationships of NDVI on continuous scales. On the basis of this result
NDVI validation of different low-resolution images could be implemented rapidly and effectively. This work results in a more systematic research on modeling the CSSM of NDVI.
关键词
NDVI空间升尺度转换连续空间尺度转换模型分形五指标评价体系
Keywords
NDVIspatial up-scalingcontinuous spatial scaling modelFractalfive-index estimation system