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2.2. Crop survey, area assessment and their pre-operational
validation
The method that had been developed by FÓMI RSC, used
Landsat data and applied digital image analysis for the crop
identification and area estimation (Csornai et al., 1983). This
approach gradually expanded to 3 counties areas by 1990
(Csornai et. al., 1990). It was found that the provision of really
more accurate county level data than those, that had been
provided by the traditional non-remote sensing systems in
Hungary, was only viable through advanced digital image
analysis based crop area assessment. This approach also
provides reliable crop maps, which are necessary to the crop
development monitoring models. :
As a result of the major final validation survey in NCMP (1993-
96) it was clearly found (Csornai et. al, 1997) that the
application and results of digital image analysis compares well
with the data of the Central Statistical Office, Hungary (CSOH)
for a 5 years, 6 counties data set (Figs.l.a.b.) The strong
relationship in the Landsat TM derived (FÓMI RSC) and CSOH
data for the major crops is promising to the further applications
of satellite data in the inventories.
2.3. Crop monitoring and yield estimation
The most promising results of the NCMP are those related to
the crop monitoring and yield forecast models. The models were
developed by FÓMI RSC. They integrated NOAA AVHRR and
Landsat or other high-resolution satellite data. This approach
essentially combines the benefits of both data sources: the
temporal resolution through NOAA AVHRR and spatial
resolution by Landsat TM or other high resolution images (e.g.
IRS-1C, SPOT) This approach requires fairly good
classification for the performance with the high-resolution
images. With the adaptation of a linear unmixing model (Puyou
Lascassies et. al., 1994) to NOAA AVHRR series and Landsat
TM, fairly good results were achieved for the two major crops -
wheat and maize- for the same study area and period. The first
results concerning the drought indication within the monitoring
are good. The county wheat and maizc yields predicted by the
model compared favourably to the official data (Figs.2.a.b.). It
was also found that the timeliness requirement can be met by
the yield forecast model.
Both the crops areas and the major crops development and
yields were estimated by remote sensing methods. This
validation provided a firm basis for the first operative crop
monitoring campaign in 1997.
3. OPERATIONAL CROP AREA ASSESSMENT
AND YIELD FORECAST IN 1997
The thorough previous validation created a firm basis to move
-forward an operational campaign in 1997. The crop data-
reporting calendar was set by the customer, the Ministry of
Agriculture.
It consisted of five dates from June 30 to October 1. The area
covered directly was a characteristic subsample (6) of all the
counties (19), so that 40 % of the total cropland in Hungary was
directly monitored. Beyond the counties level crop area and
predicted yield data these had to be expanded to the entire area
of Hungary. This expansion used a subregional temporal
correlation analysis plus a direct robust method (see 4.). The
eight main crops monitored were winter wheat, winter and
spring barley, maize, sugar beet, sunflower, alfalfa and maize to
ensilage. These crops together represent the 78-82 % of the
entire Hungarian cropland.
The crops area assessment was based on the multitemporal
image analysis of Landsat TM and IRS-1C LISS III. data from
the early May-August period, to compensate for the cloudiness
in 1997. Cloud cover was some 30 % bigger than the average in
the 1991-96 period. The comparison of the remote sensing
results with CSOH data is obviously an indication only and the
differences cannot, by any means be interpreted as the errors of
the remote sensing technology. A thorough study is under way
that will produce confidence values attached to the area
estimates. The difference of crop areas estimates of FOMI RSC
and the Central Statistical Office, Hungary (CSOH) ranged in
the 0.8-3.7 % (Fig.5.a.) for the entire cropland in Hungary. The
county crop area differences occurred in the interval of 1.5-21
% depending on the crop and county. However the area
weighted average difference was 4.08 %.
This partially can be explained by the main differences in
definitions, that is the ownership based sampling of CSOH and
the administrative, topographic boundary based total coverage
of cropland by the satellite images (FOMI RSC). The actual
standard crop maps derived were also provided to MoA (Fig.3.).
The crop yield forecast was accomplished by the application of
FOMI RSC developed model which combines high-resolution
satellite (Landsat TM and IRS-1C LISS III.) data and NOAA
AVHRR time series. The reporting dates corresponded to those
of the operative Production Forecast System of the Ministry of
Agriculture. Both appeared prior to the beginning of harvest.
The final official data are available after the harvest: by the end
of August for wheat and barley and in December (January) for
the rest. FOMI RSC provided yield estimates for the counties
and expanded to Hungary. The yield data compared favourably
with CSOH values, appeared six weeks later (Fig.5.b.). The
differences were less than 1 % for wheat and 4.5 % for maize
average yields in Hungary. The differences at county level
averages are certainly bigger. Because of the method applied,
yield spatial distribution maps could also be reported (Fig.4.)
for the major crops.
Intemational Archives of Photogrammetry and Remote Sensing. Vol. XXXII, Part 7, Budapest, 1998 109