International Archives of the Photogrammetry, Remote Sensing and Spatial Information Sciences, Vol XXXV, Part B4. Istanbul 2004
scaled onto a 0-255 range, and displayed as a grey scale image.
Darker pixels are spectrally "nearer" to their class centroid (in
the sense of statistical distance), and are thus more likely to be
classified correctly. On the other hand, pixels with higher
distance values are spectrally further from the centroid of the
class to which they were assigned, and are thus more likely to
be misclassified. A threshold can be applied to the distance
image to identify those pixels that are most likely to be
misclassified.
349
21
20
1
1
z
Table 2. Confusion or error matrix (source Vieira and Mather,
2001).
An alternative way of looking at the spatial distribution of the
errors present in a classified image is by directly comparing
thematic images with their respective ground truth maps. One
of the products of this comparison should be a binary error
image (Figure 1(b)) in which each point takes the value 0
(correctly labelled) or 1 (erroneously labelled). By examining
the spatial distribution of such pixels in Figure 1 we can make a
number of observations. It is apparent that misclassified pixels
are spatially correlated. These correlation effects are probably
due to the presence of mixed pixels at field boundaries, to
variation in the reflectance spectrum caused, most probably, by
variations in soil type within a field, or to the effects of crop
management practices such as the use of fertilisers. Spatial
analysis measures (e.g., Join Count Statistics) could be used in
order to determine whether these correlation effects are random
or clustered in their spatial distribution. Looking at the spatial
distribution of the remaining errors can help to refine the
classification process.
[1 Cones Plank
WS Wong Pret
(a) Distance Image (b) Error Image
Figure 1. Spatial characterisation of classification errors
using thematic image generated by Maximum Likelihood
Classifier (385 by 385 pixels).
982
3.2.2 Visualising the Reliability: Any distance measure
between the pixel and the mean pixel values (or prototypes) of
each class can be used to compute a measure of reliability of a
pixel's label. These measures of reliability could be then
combined to the already assigned class label in order to
generate a new thematic value for the pixel, which not only
indicates the class to which the pixels was assigned but also the
degree of accuracy achieved. A separate colour is assigned to
each class. Within-class levels are also assigned separate shades
of that colour, so that each class is represented by five shades of
the given colour (see Figure 2(a)). This kind of representation
allows the visual appreciation of the degree of accuracy of the
classified crop. À contour representation of the reliabilities can
also be used (Figure 2(b)). These types of representation help
the user to identify portions of the thematic map that have
reduced reliability. Although the final map may look uniform in
its accuracy, it is actually a representative assemblage from
several image processing procedures and refinements. It fs
important for the user to known how these accuracies are
spatially distributed in the image through a thematic reliability
map.
(a) Thematic Reliability (b) Reliability Contour
Representation
Figure 2. Representation of the reliabilities using a
Maximum Likelihood classifier (385 by 385 pixels).
4. RESULTS AND DISCUSSION
A summary of the data used in this study is presented in Table
A
3.
Table 3. Summary of the mean deviation, standard
Points
“ollected.
3.5146 -1 -10.9780 2.5555
Max. Errors 80.3581 | -85.4290' | -94.4135
Between Features
Generated
(Equally spaced) 108.3339
176.8237
deviations used in the Trend and Accuracy analysis;
senerated Point method; and Areal and equivalent
Rectangles approach.
4.1 Trend Analysis
Trend analysis was carried out using the Student's 1 distribution
and a confidence level of 90% (a = 0.10). The critical value
obtained from statistical table for 28 control points is: 757 0.107
1.703. Using the Equations (1) and (2) in order to compute
estimated values of zy and 7x
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