5 MANUAL INTERPRETATION
Remote sensing technology is sometimes not
considered in developing countries because of the
lack of computer facilities for data processing.
Computer, or digital, processing techniques are an
important analysis tool in remote sensing, but
they are not always necessary. In some
situations, visual or manual interpretation of
Landsat imagery is as accurate, and frequently
more accurate than numerical analysis (Philipson,
1980; Haack, 1983). In addition, visual
techniques have the advantages of being less
expensive and requiring less equipment and
expertise than digital processing. It is
important for scientists involved with remote
sensing to be familiar with, and be willing to
utilize, either digital or manual analysis
techniques depending on their informational needs
and available resources.
The double sampling technique for assessing the
extent of boro rice was also utilized by visual
interpretation of an enlarged Landsat false color
composite (FCC). The image study area was
physically cut from the FCC and mounted in double
glass slide binders for 35mm projection. This
subscene was then projected onto a rearview screen
and registered to a 1:63,360 scale topographic map
of Baidya Bazar Thana.
Four image interpreters with no familiarity of
the study site mapped the boro for the ten Unions
and determined the acreage of boro using a dot
grid. The results from these interpretations are
contained in Table 2. While there was
considerable variability in the amount of boro
mapped by the different interpreters, the
correlation (Pearson's) of each interpreters
results to the governmental supplied boro
statistics were generally very good. These
correlations were .88, .94, .82 and .91 with
respect to columns 1 to 4 in Table 2. Certainly
with images of improved quality, interpreters with
greater familiarity of the site conditions, a
later March date, and perhaps by using the
improved spatial resolution data from the Landsat
Thematic Mapper sensor or SPOT, the amount of boro
identified by visual analysis would be closer to
the reported amount; but the double-sample
correlation may not be significantly improved.
In any resource inventory using Landsat or other
remotely sensing-' data, it is important to
carefully evaluate the possible analysis
techniques within the context of available data,
informational needs and existing funds, equipment
and expertise. This analysis indicates an ability
to determine the amount of boro rice using a
double sampling technique to be virtually as
effective with a manual analysis as digital
classification. The visual interpretation was
inexpensive, required minimal equipment and
expertise and provided good results.
6 SUMMARY
These initial results are promising but must be
further investigated in other areas, and in
regions with good ground truth. The greatest
potential utility of Landsat data is probably the
capability to analyze data over large regions to
make regional acreage estimates, as well as to
make maps showing the major boro growing regions
and changes in these conditions over time. The
logistics of collecting accurate field data and
aggregating it to large areas is sufficiently
difficult that present field-based techniques may
not be adequate. Large area Landsat boro maps and
adjusted Landsat estimates of boro acreage may
provide useful, timely information to Bangladeshi
planners.
Table 2. Boro rice manual analysis double sampling
results.
Union Reported Manually identified
acreage
1
2
3
4
Aminpur
Baradi and
182
240
71
120
10
Baidya Bazar
610
562
231
240
94
Jampur
570
541
71
220
70
Kachpur
1140
507
587
630
191
Mograpara
330
168
36
200
10
Noagaon
580
395
302
320
10
Pirijpur
1190
661
507
350
160
Sadipur
420
254
36
90
0
Sambhupura
1410
848
951
680
241
Sanmandi
855
523
444
680
211
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