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International Archives of the Photogrammetry, Remote Sensing and Spatial Information Sciences, Vol XXXV, Part B7. Istanbul 2004
Couniry Boundary
Provincal Boundary Et
Sampling Frame
Stratum
E Arable area
Figure 2. Sampling frame used for the estimation of the
proportion of all crop
At last, we selected sample clusters randomly. And sample size
is calculated using the following equation.
n,
HE ST
jl
N 1)
(2 p(1- p)
muU LW)
d
Where: n is sample size, nO is sample size of simple random
sampling, N is population, d is predefined sampling error, t and
d are obtained from the assumption of normal-distribution. Here
given sampling accuracy is 95%, and d = 0.05, t, = 1.96 at 95%
estimation level. At the same time, give p assurance 0.75 by
pre-sampling. Then n = 264. In order to ensure the sampling
accuracy, we give the calculated sample size a 5% above. And
the last sample size equal 278, total sampling ratio is about 9%
all over China. Here, we did not calculate sample size based on
variance between clusters and within cluster because sample
size of simple random sampling is larger than that of cluster
sampling and could result in a more accuracy sampling.
During the sample selection, map sheets bestriding on more
than one stratum is partition into the strata with larger area.
When sample size of a stratum is less than 1, let the sample size
to 1. At last, sample size all over china is 282.
42 Image processing
For crop proportion monitoring, Landsat TM or CBERS CCD
images were processed under the following 7 steps:
— Atmospheric Correction. Use meteorological observation
data to remove the effects of atmosphere components, such as
03, CO2, water and aerosol et al. the algorithm used here is
Modtran.
—Geometric Correction. Use topographic maps to determine
the coordinates and to correct the distortions in satellite images
arise from sensor, changing altitude, height and speed of the
satellite, the angle of the orbit path in relation to earth, and the
rotation of the earth under the satellite. In the correction
procedure, UTM system and polynomial model were applied.
—SAVI layer Calculation. SAVI is a good derived index to
reflect ground features in the imagery and will be used in the
classification process later. Here, SAVI is calculated using the
following equation,
SAVI = ((TM4 — TM3) / (TM4 + TM3 + 0.5) + 1) x 100 (5)
--Image Composition. Combine SAVI layer with the 6 TM
bands.
285
—-Non-arable Area Removal. Remove non-arable area assisted
by land-use map assisted by land-use maps. This is done to
reduce calculation time for the classification process, and to
make sure that the calculate area relates only to the arable area.
—Unsupervised Classification. Use an automatic clustering of
ISODATA algorithm to create classes. This classification
procedure can be repeatable, and can be accepted by the
running of CCWS.
— Labeling. After the classification, every cluster is identified
to specify crop area or not. Here veteran personnel especially
ground survey person take part in the labeling procedure.
4.3 Crop proportion calculation
CCWS estimates crop proportion using unequal cluster-
sampling estimation methods. That is, Crop proportion p is
estimated by equation (3)
n
S d:
= i=l
> nm;
z (3)
Where: p is crop proportion, and n is cluster number, also
means the number of image frames, a; is all the crop pixels in
the images and m is all the pixels in the images. And the
variance of estimation is estimated by equation (4)
lar Ÿ (a, - pm, y
a
p
nm. nl (4)
] Di
m -—-— m;
Where: "= means average crop pixel numbers in every
Jdzn/N HE iur
image | means sampling ratio. At last, estimation
accuracy is estimated by equation (5)
AQ) 71-1, Mp) / p ái
Where: la
distribution.
Here, crop proportion calculation include 3 levels, firstly it is
accounted on image level using equation above, and then
account to strata level by weighted average, the weight here is
the arable land area of every image in the stratum. At last, crop
proportion on province level is accounted also by weighted
average methods, the weight here is the arable land area of
every stratum in the province.
is obtained from the assumption of normal-
4.4 Image selected and date request for crop proportion
monitoring
CCWS mainly estimate acreage of 7 crops, including winter
wheat, spring wheat, maize, early rice, middle rice or single rice,
later rice and soybean.
CCWS mainly selected Landsat TM as image resource to
monitor crop proportion. Sometimes, CBERS CCD had also
been used to assistant Landsat TM. At the same time, it is
difficult to get optional data in the limited time slot for
meteorological reason in some regions, especially when rice
acreage monitoring in summer in south China. For the running
of CCWS, radar data is also used for rice acreage monitoring in
low optical data acquisition area, especially in south China.
For crop proportion monitoring, data phase request mainly
depend on the spatial distribution of crops, phonological
calendar, crop rotation custom and growing stage. In China,
crop plant phenomena had been very complex except summer-