417
Figure 7. Quartimax rotation of three factors. The white and
black areas represent areas of extreme change.
seasonal change could be overcome; or possibly if a contextual classi
fier were used. Such a classifier classifies a pixel with considera
tion of the classifications of its surrounding neighbors, much like the
process used in visual photointerpretation. (A contextual classifier
is not yet available in the ORSER System.) The third method was also
effective, but was hampered by sun angle and temporal change problems.
It also required considerable data processing before analysis could
begin.
The FA method for detecting change worked well, with a few major excep
tions. First, as with other methods, a change in cover type with no
change in density cannot be detected. Perhaps visual interpretation of
an enhanced final product could alleviate the severity of this problem.
Another possibility would be to use the FA technique as a mask of un
changed data and analyze the remaining data with another technique to
identify the types of changes that have occurred. Second, the problems
with sun angle and seasonal changes could be avoided by having the
conditions on the day of the new photo mission match as closely as
possible the conditions on the day the reference photo was taken. This,
of course, is often impractical and unrealistic. Therefore, the analyst
must be aware that shadow, reflectance, and climatic changes will be
mapped, as well as areas of land use/land cover change. Problems of
sun angle and seasonal changes are not unique to machine processing of
the data. These problems are often encountered in manual aerial photo
interpretation (Brew and Neyland, 1980).
There are several questions that are raised by the FA method for the
analysis of temporal information. First of all, is the technique appli
cable to other data types? In particular, does it work well with MSS
data? What affect will a change in pixel scale have on the technique?
And, most importantly, how accurate is the analysis? Statistical sup
port is needed to determine the degree of success of this method. These
questions are being addressed at ORSER and the results should be forth
coming within the next year. Based on this study, however, the FA
technique looks promising as an enhancement method for analyzing tempo
ral information in digital image data.