578
spatial frequencies are blocked then the result is the cross
shaped mask shown in figure 6(c). The inverse transform is
shown in figure 6(0 with the difference image in figure 6(i).
On the whole the differences between the original and the
inverse transform are extremely small. The differences lie
mostly along a single row. In the original image that row is a
an atmospheric absorption feature which implies a high
frequency component to the spectral direction of the signal.
The small scale variations in the signal along that row imply
high frequency in the spatial domain also. Thus the differ
ences are the result of blocking the high-spectral/high-spatial
frequencies, exactly as expected.
Figures 7(a)-(i) show the exact same sequence of transforma
tions using a 10 element wide Gaussian shaped transition
rather than a sharp cut-off. In fact this is a much more realistic
representation of how spectral or spatial mode sampling is
actually be done. This reduces the ringing considerably in the
spectral and spatial modes (figures 7(g) & (h)). When applied
to the cross-shaped mask there appears to be shift in the
ringing to lower frequencies and there is also a reduction in the
RMS error from 10.5 digital-levels to 9.4.
DISCUSSION
An important consideration when using any sampling
technique is how much of the signal is lost irretrievably. This
can be computed from the full CCD array and expressed by
the information density function. This calculation provides an
accurate quantitative estimate of the size of the error expected
in the reconstructed image (Huck, 1985). The total power in
the signal from all elements can be found by integrating the
power spectrum. The power in the signal under the cross can
also be computed. The ratio of the power under the cross to
the total power quantifies how much of the original CCD full
frame signal is contained in the sample. If the fraction is very
high then the sample can be reliably used to reconstruct the full
CCD frame. Otherwise care must be taken in interpretation.
The cross pattern sampling is the simplest method that makes
sampling in Fourier domain worthwhile. The number of
samples could be varied across the frequency domain so that
areas of strong signal power could be sampled more densely
than areas of of weak power, regardless of whether they fall
along the axes. What is required is some model of where the
power in the signal will fall within the power spectrum.
CONCLUSIONS
What implications does this have for imaging spectrometers
and how their data should be sampled? The spatial domain
should not be undersampled, in general, because the spatial
frequency content of the image cannot be predicted and
therefore the resulting image can have spurious values which
can lead to incorrect image analysis using linear systems
theory. In the spectral domain the image can be undersampled
because the spectral correlations are much better behaved and
are much more predictable. Undersampling should only be
done when the behaviour of the intervening samples is known
or predictable. This is often the case with the spectral signal
and is the assumption that has been used (perhaps unwittingly)
by analysts to interpret multispectral remote sensing imagery
for years.
It is apparent from Fourier transforming a typical imaging
spectrometer CCD array that the spatial/spectral frequency
content of the imaging spectrometer data is mainly one of low-
spatial/low-spectral, low-spatial/high-spectral or high spatial/
low-spectral. There is very little power in the high-spatial/
high-spectral frequencies. If we are going to sample from the
CCD array in the most efficient manner, then we must sample
where we expect to find the power in the signal. In the
imaging spectrometer the power in the signal is in the cross
pattern that lies along the spatial and spectral frequency axes.
The cross pattern can be most efficiently sampled in the
Fourier domain and must be recorded there to realize the data
reduction.
Reconstructing the full spatial and spectral resolution is not
possible in the most rigorous sense. The low-spatial and low-
spectral frequencies will be faithfully represented. The low-
spatial/high-spectral or high-spatial/low-spectral frequencies
will be reconstructed with good results but aliasing from the
high-spectral/high-spatial frequencies can occur. If high-
spectral/high-spatial frequencies are present in the signal they
will be aliased. This reconstruction method will give good
results if the energy in the signal in the high-spectral/high-
spatial frequencies is a small fraction of the total power. In
general the accuracy of the reconstruction will depend on the
fraction of the power, of the total signal, which falls into the
high-spatial/high-spectral range.
ACKNOWLEDGEMENTS
We would like to thank the people at Moniteq Ltd. for
allowing us to work with the FLI which lead to this paper and
for letting us include the FLI imagery. We are indebted to
Itres Research Ltd. for allowing us to use the CASI to collect
the unique full frame spectrometer imagery. Thanks to Wayne
Rasband of the National Institute of Health and Arlo Reeves of
Dartmouth College who developed NIH Image and the FFT
enhancements to it. Thanks also to Bill Connor who let us use
a prelease version of Imagine. Both of these programs made
the data processing so much easier on the Macintosh. We also
wish to gratefully acknowledge the support of the Earth
Observations Laboratory, personnel and its Director Ellsworth
LeDrew. This research is supported, in part, by a Centre of
Excellence grant from the Province of Ontario to the Institute
for Space and Terrestrial Science and an NSERC operating
grant to John R. Miller.
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