STRATEGIC ALTERNATIVES TO CALCULATE CROP AREA
OF AN ADMINISTRATIVE DIVISION
Hongliang Fang
State Key Lab. of Resources and Environment Information System,
Institute of Geography, Chinese Academy of Sciences, 100101, Beijing, China
KEY WORDS: Agriculture, Estimation, Identification, Inventory
ABSTRACT:
In crop yield estimation using remotely sensed data, it usually needs to calculate the crop planting area in a particular
administrative division. Most previous investigators do as follows: first, they cut down the target image of the study
area with the administrative boundary, then conduct land cover/use classification and crop identification work, and last
calculate the crop area. Other fewer researchers conduct the land cover/use classification work first and then cut down
the study area with administrative boundary, and last calculate the crop area. We call these two methods strategy Acut
and classify) and strategy B (classify and cut) respectively. In this paper, we applied these two strategies to rice planting
area identification. Our results indicate that strategy B is obviously excellent than strategy A in the unsupervised
classification-cluster process and the rice area accuracy it extracted is over 8496.
1. INTRODUCTION
Crop production forecasting using remote sensing
technique involves the estimation of the cultivated
area and yield per unit area. Estimating the cultivated
area is the primary step for crop yield
forecasting(Tennakoon et al., 1992). In estimating the
cultivated area, it usually needs to calculate the crop
planting area of a particular administrative division for
the purpose of being in agreement with statistical
channels.
To calculate the crop planting area of a particular
administrative division using remotely sensed data is
computer and labor consuming. By using the map to
determine the location of the administrative boundaries,
we may be able to remove the inappropriate areas before
beginning the bulk of image-processing computations,
and thus decrease the costs of the analysis(Star and Estes,
1990). In fact, not every researcher does as above. Some
perform image analysis first, then mask out the
uninterested area with the key boundaries, and thus get
the particular target information(Hall-konyves, 1990;
Makey et al., 1993).
Thus, we have two strategies here: first, cut down the
target image of the study area with the administrative
boundary, and then conduct land cover/use classification
and crop identification work, and last calculate the crop
area. Second, conduct the land cover/use classification
work firstly and then cut down the study area with
administrative boundary, and last calculate the crop area
of the study area. We call these two methods strategy A
(cut and classify) and strategy B (classify and cut)
respectively. Taking rice area identification as an
240
International Archives of Photogrammetry and Remote Sensing. Vol. XXXI, Part B4. Vienna 1996