to effectively detect sea surface temperature trends (its primary
mission aim) throughout its mission and a dual view to correct
for
Figure 1 (a-c). The top image (Figure 1a.) is the 0.55um nadir view from AATSR orbit 33086 (28* June 2008). The
image is of the Eastern coast of Greenland, the orange arrow represents the direction of motion. The middle image
(Figure 1b.) is the raw CTH output from the Census stereo matching between the nadir and forward views, with red
denoting the height at sea-level and blue and dark blue a value of around 8km. The bottom image (Figure 1c.) is the
CTH after application of a 5x5 median filter. The black transect passing through the image is the path of the
CALIOP overpass used for the validation.
atmospheric effects. Following on from ATSR were the ATSR-
2 instrument launched onboard ERS-2 in 1995 (with three
additional visible bands at 0.55, 0.65 and 0.87um) and the
AATSR instrument onboard Envisat in 2001 (with 12 bit
radiometric resolution). The instrument employs conical
scanning and has two views one at nadir and one forward at an
incidence angle of 55, which allows the use of
photogrammetric techniques. The swath width is 512km and is
resampled to give a nominal product resolution of 1km.
The potential for Stereoscopic CTH determination from the
(A)ATSR(-2) instruments was first proposed prior to the launch
of ATSR (Lorenz, 1985). With accurate knowledge of the
(A)ATSR(-2) viewing geometry and a method to determine
parallax, hereafter referred to as disparity, by matching of pixels
in the along track direction between the two views, CTH can be
retrieved. A technique for doing so was first implemented on
ATSR imagery by Prata and Turner (1997), using a simple
patch based correlation matching metric. A camera model
described in the same paper was then applied to convert the
parallax measurements into CTHs. More recently a far more
sophisticated patch-based algorithm, referred to as M4 (Muller
et al, 2007), with an improved (A)ATSR(-2) camera model
(Denis et al., 2007), has been developed.
2.2 M4
The M4 stereo matching algorithm was developed for extensive
processing of ATSR-2 data for the EU-CloudMap (Muller and
Fischer, 2007). With a shared heritage to the M2/M3 matchers
applied to MISR (Muller et al., 2002, Moroney et al., 2002),
M4 achieves significant performance gains over it predecessors
through application of advanced image processing techniques.
The matching metric applied in M4 is normalised cross
correlation (NCC). NCC is an excellent metric as it can account
for gain differences between images and is the optimal method
for dealing with Gaussian noise typically present in imagery
(Hisrchmuller et al, 2002). Therefore it is robust any changes
in illumination caused by the different view angles and noise
effects caused by the different resolutions of the ATSR images.
The effectiveness of NCC in providing effective disparity
estimates deteriorates in the presence of depth discontinuities. A
depth discontinuity is the change from one disparity population
to another, from the Earth’s surface to a cloud, for example.
These depth discontinuities typically present as intensity
changes Wi
mean and
assume the
distribution
invalidated
distribution
discontinuif
algorithm b
1994) to ac
2.3 Censu
The Census
parametric
Woodfill, 1
These tran:
rather they
transform i
stores the s
achieved tl
the relatior
local neigh
the modifi
replaces th
which furt
formally as
Where N
that Wi
c).
mean inte
neighbour!
which gen
As non-pa
the local i1
radiometri
they are le
discontinu
accurate
discontinu
Hirschmul
Applying
matching
comparise
reference
Weight, €
referred t
efficiently
applying
Hamming
Greenlanc
Validatioi
measuren
CALIOP