International Archives of the Photogrammetry, Remote Sensing and Spatial Information Sciences, Vol XXXV, Part B4. Istanbul 2004 Interne
Y
Parcels of Selected
na Categories Data
Y
Combine Je
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| Final Classified Data ed
Figure 3. The flow chart of the multi-temporal masking
classification technique.
In this study, to overcome the spectral confusion between the
agricultural land cover classes using multi-temporal satellite
images, a sequential multi-temporal crop masking procedure
was utilized through the classification. After each classification
step, those categories accurately classified were taken out from
the classification process.
The procedure was carried out as follows: The classified images
of the original bands, thc PCA channels and the optimum bands
from each date were evaluated to determine the accurately
classified land cover classes. Those common classes with high
accuracy in May and July classified images were identified and
their training set were taken out from the classification of
August imagery. For a particular class to be masked out from
further classification process the accuracy threshold was
selected as 80% and 90% for the producer's and user's
accuracies respectively. The following crops, which fulfilled
above accuracy requirement, were determined not to be
included in the classification of August imagery: clover from
classified May PCA image, residue and rice from classified July
original image with regional masking applied, and sugar beet
from classified July PCA image with regional masking applied
RESULTS
The accuracy assessment of a classified image is an important
step as it indicates a measure to show how reliable is the
information extracted from the remotely sensed data. To assess
the classified images, the ground reference data were compared,
parcel by parcel, with each of the three classified images for
May, July and August, respectively.
On May image, overall the classification accuracy of the
original bands (ETM+ bands 1 to 5 and 7) was 88.9%. That was
0.5% more accurate than PCA bands and 1.4% more accurate
than the optimum bands. On July image, the number of classes
was increased to twelve since the crops seeded in May were
grown and therefore represented heterogeneity within the study
area. As well, owing to phenological evolution of the
vegetation, the spectral variation increased within the parcels.
Thus, the number of spectral class as belonging to cach
information class increased per information class to be
extracted. In this sense it was logical to expect drop in overall
accuracy. The overall accuracy of 66.8% was achieved from the
classified original bands of July. The overall accuracies for
classified optimum bands and the PCA bands was 62.5% and
61.2%, respectively. After applying regional masking, no
change was observed in the overall accuracy of the classified
original bands of July, however, improvements were observed
in the user’s accuracy of some classes such as cauliflower by
%]15.
July image
Most of the land cover types that were present in the
even
were also observed in the August image. A total of el
classes were classified from the August image. Most of the
crops were in their late stages of the development. Therefore,
their spectral responses were better representative of their
1088
that simply could not be achieved, otherwise, through analysis (Table 1). Therefore, these classes were masked out and were inherer
conducted on single date imagery. not included within further classification process. introdu
class :
n are c
Producer's User's aecurac
May July August Image Classified Class Accuracy | Accuracy overall
£L (9/0) (%) optimu
classifi
1 3 A
; May PCA Channels | Clover 100.0 100.0 overall
Preprocessing was 7
July Originals Bands classifi
: | À (with regional Residue 93.1 92.0 Applyit
| Training Area Selection | masking) the reg
July Original Bands August
(with regional Rice 80.0 100.0 The im
3 3 3 e
masking) through
Optimum Band Selection July PCA Channels classific
(with regional Sugar beet 80.2 95.5 classific
4 4 masking) was 10°
| Segmentaion Using Aprior Crop Boundary Info. | ihe ori
Table 1. The accuracy of the classes to be used in multi- misclass
| | 3 temporal masking. confusic
: a. N Mask analyses
| Maximum likelihood Classifier | NS à ; a enr
Selected Categories The original bands of the August image were re-classified using remotely
only the training areas of unmasked classes. At each step of
3 3 3 pixel-based classification, successively, the crops not cultivated Augu
W Parcel-Based Analysis 4 MLC within the crop cultivation zones were excluded together with
the crops classified on previous dates. The classification output Clas:
3 3 of the August image was then combined with the classification Corn
Parcel-Based s of the masked classes 1 "der tc ain final s
Select Properly Classified Categories Analysis outputs of the masked classes in of der to obtain final summer Residue
crop inventory of the study area (Figure 4). ;
Tomato
A
Sugar be
Clover
Pasture
Pepper
Waterme
Unc/Bso
Rise
Cauliflow
Overall
Table 2.
As a sun
August in
is not log
the May
than the
provided
band sets.
in the cla:
the other |
of the M.
clover, wh
the classif
for July.