Full text: Remote sensing for resources development and environmental management (Volume 1)

383 
as were: 2nd 
th April, 18th 
. All are path 
jne 1980 which 
the use of 
d register the 
her image to 
sary for pixel 
d another. The 
multitemporal 
le accuracy of 
s, (Anderson, 
nto ensuring a 
nsforming the 
out using the 
age on a GEMS 
IME 2250. This 
ts with known 
cale O.S. maps 
coordinates to 
rm equations, 
icinity of the 
6 scenes, all 
s with average 
100m for each 
ch image was 
erpolation was 
interpolation 
cally correct 
ting, 603000, 
sting, 653000, 
from each date 
nd haze in the 
re degradation 
data suffered 
ult to remove. 
false colour 
el by 512 line 
maximum ground 
to the imagery 
ng coordinates 
ata into X and 
on proceedures 
used to locate 
. The training 
or all images, 
ebruary, April 
on the August 
ene meant that 
stablished for 
new areas were 
re removed. In 
, one for each 
wheat, winter 
sugar beet, 
us woodland, a 
dsat data are 
in this study, 
nds for crop 
process was 
decision tree 
ms for each of 
by using the 
'hese data were 
and plotted as 
-indenlaub and 
The coincident spectral plots show comparative 
changes in the temporal spectral response of all the 
cover types and could be used to identify a subset of 
bands / dates for optimum cover type separation 
through the use of decision boundaries. This involves 
the identification of numerical limits within the 
coincident spectral plots for the separation of cover 
types. In this case where the data has both a 
spectral and temporal component, these limits could 
occur in seperate bands or at different times. The 
decision tree identifed bands 5 and 6 from April and 
May as giving the best degree of spectral separation 
between the cover types. May was identified as the 
best single date and February as the worst from the 
available imagery. Figure 2.1 shows the coincident 
spectral plots for bands 5 and 6 of April and May 
with the derived decision boundaries and decision 
tree.The sugar beet, beans and peas proved 
inseperable. This is because at this time of year 
they are all in a pre emergent state, and can 
logically be grouped as a bare soil class. 
Figure 2.1 Coincident spectral plot and decision tree 
for April and May 1980 
Beet, 7 = Peas, 8 = Winter Beans, 9 = Coniferous 
Woodland, 10 = Deciduous Woodland, ■ = Decision 
Boundaries. 
Using the band combinations suggested by the decision 
tree the following data were classified. Bands 4,5,6 
& 7, 18 February 1980, bands 4,5,6 & 7, 12 April 
1980, bands 4,5,6 & 7, 18 May 1980, bands 5 & 6, 12 
April + 18 May. These classifications would establish 
the best single date for crop classification and 
determin wether there are improvements from the use 
of multitemporal imagery. The classification 
algorithm used in each case was the supervised 
gaussian maximum likelihood classifier. In each 
classification all 10 cover types were included with 
0.3% of the data rejected in the thresholding. 
Confusion matrices were drawn up by determining the 
spectral classes identified for each of the training 
sets. It is well established that the analysis of 
training data gives optimistic classsification 
results, (Swain, 1978, Schowengerdt, 1983) but where 
comparisons between classification performance are 
required, as in this study, such an approach is 
justified. Overall classification accuracy assesments 
could not be easily made from the original confusion 
matricies as the training sets of individual 
informational classes varied in size. Table 2.2 the 
confusion matrix from the May data illustrates the 
problem. 
Table 2. 
2 Confusion 
matrix 
: 18 May 1980 
0SR 
WW WB 
SB 
G SBe P WBe WC 
WD 
U 
OSR 151 
20 
WW 
1268 557 
17 
38 
130 
WB 
53 182 
2 
11 
24 
SB 
4 
73 
1 1 
1 
6 
G 
4 12 
28 
3 
SBe 
6 
111 13 14 
16 
P 
13 
111 117 20 
13 
WBe 
63 19 38 
5 
WC 
360 
1 
43 
WD 
2 
279 
31 
OSR = Oilseed Rape, 
WW = Winter Wheat, WB 
= Winter 
Barley, 
SB = Spring 
Barley 
, G = Grassland, 
SBe 
= 
Sugar Beet, P = 
Peas 
ì , WBe 
= Winter Beans, 
WC = 
Coniferous Woodland, 
, WD = 
Deciduous Woodland 
Consider the grassland informational class. 28 of 
the 47 training pixels were accuratly identified by 
the grassland spectral class, however 38 winter wheat 
training pixels were incorrectly classified as 
grassland. More of the grassland spectral class is 
winter wheat than grassland. This only arrises 
because of the much larger size of the wheat training 
set. The 38 incorrectly classified winter wheat 
pixels only account for 1.9% of the wheat 
informational class compared with the 28 correctly 
identified grassland training pixels which account 
for 59.7% of the total. 
Improvements can be gained where each class is 
weighted on the basis of some known measure of "true" 
class proportion. Card, 1982 suggests that "True map 
category marginal proportions" can be used to improve 
estimates of "proportion correct" for each cover 
class. Using such values the output classification 
data in a confusion matrix are weighted on the basis 
of their anticipated size. Classification accuracies 
can then be determined from the weighted matrix in 
the usual way. As the classes are no longer given 
equal weighting a better estimate of class purity is 
given. 
The government annual June crop census data can be 
used as a weighting factor. The returns from the 
county of Suffolk for 1980 were obtained from the 
public records office, Kew, Richmond, and used to 
weight all the elements of the confusion matricies. 
Table 2.3 shows the weighted confusion matrix for the 
May classification. Classification accuracy for any 
informational class Is calculated by expressing the 
diagonal as a proportion of the diagonal plus all non 
diagonal elements for that class. Comparisons between 
the classification accuracies of the single date and 
multitemporal data could then be made. 
Table 2.3 Weighted confusion matrix : 18 May 1980 
OSR 
WW 
WB 
SB 
G 
SBe 
P 
WBe 
WC 
WD 
OSR 2.03 
WW 
26.0 
11.4 
0.4 
0.8 
WB 
3.7 
12.7 
0.1 
0.8 
SB 
0.8 
14.1 
0.2 
0.2 
0.2 
G 
0.4 
1.3 
4.2 
SBe 
0.4 
7.6 
0.9 
1.0 
P 
0.1 
0.7 
0.8 
0.1 
WBe 
0.04 
0.04 
0.01 
WC 
3.0 
WD 
3.0 
(See table 2.2 for key) 
Area estimates for each cover type can be made by 
using the classification accuracy estimates to bias 
correct the pixel counts obtained for each spectral 
class.
	        
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