Full text: Mapping without the sun

4. NOAA-AVHRR DATA PROCESSING AND 
ANALYSIS 
In this paper AVHRR data undergoes projection transformation, 
geometry rectification, maximum value compose of NDVI, 
NDVI calculation and image classification so that AVHRR 
data transferred from Raw Data to the final data used in 
analysis. 
4.1 Projection transformation and geometry rectification 
NOAA satellite does not measure parameter of the real satellite 
orbit every day. Within the measure spacing the satellite orbit 
parameters are obtained by forecast so that there are 
accumulated errors. Since NOAA satellite scanning range is 
wide so that at the margin of the image, the degree of pels 
aberration is very heavy. AVHRR data offered by CLASS have 
not geographic coordinates projection, but head file provided 
enough Ground Control Point that could be the conversion of 
geography coordinate system and the conversion of projection 
system. 
We pick up the data that is in the middle of scan strip,then 
Transform original data Into Universal Transverse Mercator 
( UTM ) Zone N47 projection,Datum-WGS-84.But this 
initial projective data commonly have several or tens pixel 
errors. NOAA/AVHRR images must be rectified if the data is 
put into the practical application(Wei Ya-xing et al,2005; 
Huang Jing-feng et al,2000). However, In this paper, the 
polynomials correction techniques are used to deal with the 
data by referring to 1:1,000,000 digital map of headstream 
region of Yellow River, the corrected result is within the error 
of one pixel. 
4.2 Data Synthesis 
Most AVHRR data have much cloudiness (or cloud amount), 
which produces difficulties to the application of the data(Wang 
Run et al,2005; Huang Yong-jie et al,2003). There are many 
kinds of cloudiness processing techniques of NOAA-AVHRR 
data. The research adopts the maximum value combination 
(MVC) method, which carries out the synthesis processing of 
removing cloudiness to deal with a lot of data by computing the 
Fig.3 shows the variation tendency of the four kinds of land 
cover type that NDVI data reflects. 
As shown in Fig. 3, the overall NDVI variation tendency of the 
study district is that the areas of the naked, water-body, 
desertified land and the low vegetation cover land increase year 
by year, and the one of the high vegetation cover land drops 
suddenly, but the area of the middle vegetation cover land does 
not change much. The reason of this kind of change can be 
explained through the way of the transform sequences of the 
land cover type. The high vegetation covers land degenerates 
continuously and becomes the middle vegetation cover land, 
some middle vegetation cover land becomes the low vegetation 
cover land. The degradation speed of the low vegetation cover 
land is slower than the one of the former two, but some low 
vegetation cover land also degenerates to the desertified and 
naked land. Therefore, in statistics, the area of the high 
vegetation cover land reduces most soon, and the area of the 
low vegetation cover land takes the second place, and the one 
of the naked, water-body, desertified land increase minimally, 
and the area of the middle vegetation cover land does not 
change much in general or increase slowly. 
NDVI maximum value.( Holben B N,1986) The specific 
method is to firstly select data of low cloudiness more than 3 
scenes month by month, and then combine these data to a 
month maximum value by using the MVC method, and then 
combine each three month maximum values to a quarter 
maximum value, and finally combine four quarter maximum 
values to an annual maximum value. The actual calculated 
result proves that the MVC method shows good effects of 
removing cloudiness besides the water-body and snow-ice 
areas. The annual maximum value after the synthesis can 
represent the best condition of the vegetation growing in this 
area for this year. 
4.3 NDVI calculation and statistical properties 
Vegetation index can reflect the state of vegetation growing 
and regional vegetation distribution. At present we can employ 
the ratio vegetation index (RVI), the difference vegetation 
index (DVI), the perpendicular vegetation index (PVI), the 
normalized difference vegetation index (NDVI) etc. Among 
them NDVI is the most extensively employed vegetation index 
at present. The computing method of NDVI is (NIR-R) / (NIR- 
R). Calculating specifically in NOAA-AVHRR data is (CH2- 
CH1) / (CH2+CH1), and the value range is between -1 and 1. 
The research area of the Yellow River Source lies in Qinghai- 
Tibet Plateau. With sparse population, the land cover type 
changes mainly from the changing vegetation, being reflected 
by NDVI is that NDVI varies with time. Regional NDVI lattice 
and point numbers in the different value range can represent the 
general variation tendency for various land cover types in the 
region. We have counted the lattice and point numbers of six 
NDVI raster data of 1990, 1992, 1994, 1996, 1998 and 2000 in 
the research area of the Yellow River Source by interval of 
NDVI fetching value of 0.01, and carried out the clustering 
analysis. Through analyzing the practical meaning of 
classifications and the contrast and amalgamation among 
classifications, the change of NDVI is divided to four big 
classes, which represent roughly 4 kinds of land cover type, i.e. 
the water-body, naked or desertified land, the low vegetation 
cover land, the middle vegetation cover land, and the high 
vegetation cover land 
Area Change of Major NDVI Class 
♦ Higher Vegetation Cover Land A Middle Vegetation Cover Land 
▼ Lower Vegetation Cover Land ■ Naked or Desertized Land 
Fig.3 Area Change of 
Cluster Analyse Generated NDVI Class 
4.4 Images classification and results analysis 
Statistics and classifications can not represent the detailed 
change of each specific land cover type, it is necessary to 
utilize the categorized method of the remote sensing image to 
divide the land cover type and analyze the changing state and 
space distribution of the land cover type every year by 
comparison. In addition, because the space resolution ratio of
	        
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