International Archives of the Photogrammetry, Remote Sensing and Spatial Information Sciences, Volume XXXIX-B3, 2012
XXII ISPRS Congress, 25 August — 01 September 2012, Melbourne, Australia
operator is not introduced, which makes our new image
representation more robust to noise, even in the texture-less
image region.
2.2 Local Weighted Amplitude
In this work, we extend the phase congruence to LWA, which is
more suitable for multi-temporal and multi-sensor image
representation. The equation of LWA (A, ) is expressed as the
summation of orientations r and scales s:
4,0) 7 €i X. W G2| 4, 60^6,6) - T | (6)
where| | denotes that the enclosed quantity is not permitted to
be negative; 4. represents the amplitude at scale S and
orientation 7^ ; and 7 compensates for the influence of noise and
is estimated empirically. Ag (x)is a sensitive phase deviation
of the rthorientation and is defined as:
^6, (x) = cos (9,, (x)=, (x) - [sin (9, (x) 6, 6) a
The calculation of this new LWA, 4 (x), can be performed
using dot and cross products between the filter output response
vectors to calculate the cosine and sine of (6... (x) -$,(x)) ;
The unit vector representing the direction of the weighted mean
phase angle, @ (x), is given by
ES Uu) (Ze, 0)Xo, 0) (8)
(6..00.6,,0)) » T ;
Ze.) + Zo.)
Using dot and cross products one can obtain:
A, (XA, (x)=4, (x) (cos(a,, 69-6. 69)- [sin(6..69 -660)|) ©)
-e,,(90,, 09) 0,00, (9 - e, C90, (X) - 0,8, (x)
Clearly, a point of frequency amplitude is only significant if it
occurs over a wide range of frequencies. Thus, as a measure of
feature significance, frequency amplitude should be weighted
by some measure of the spread of the frequencies present. A
phase significance weighting function can then be constructed
by applying a sigmoid function to the filter response spread
value:
WG)- = (10)
er s(x)
where Cis the "cut-off" value of the filter response spread,
below which the frequency amplitude values become penalized,
and Y is a gain factor that controls the sharpness of the cut-off.
Eq.6 — Eq.10 give us the quantities needed to calculate this
version of the LWA without any division operator.
The LAP and LWA are both used to extract the common
components of multi-temporal and multi-sensor images, such as
edges, contours, and blobs. Note that the two image
representations do not involve any thresholding and, therefore,
preserve all the image details. This is in contrast to commonly
used representations (e.g., edge maps, contours, point features),
which eliminate most of the detailed variations within the local
image regions.
Figure 2. The results of PC and LWA. From left to right: the
raw image; the PC map; and the LWA map. Note that the LWA
map is much more robust and stable than the PC map,
especially in texture-less image regions such as the sky, sea, and
ground.
3. THE COMPOSITIONAL SIMILARITY
MEASUREMENT
As discussed above, The LAP and LWA are independent of
each other. In order to combine the information of the LAP and
LWA, we present a new similarity measurement: CSM, which is
able to take advantage of more information than those
commonly used similarity measures [9, 10] and is therefore able
to improve the robustness and applicability of image matching.
The LWA is designed to emphasize the common amplitude
components for multi-temporal and multi-sensor images, and
has a stronger anti-noise capability than the commonly used
Phase Congruence. However, from the theoretic analysis and
experimental results, we know that the LWA is an image
contrast-dependent variation. To overcome this problem, we
employ the zero-mean normalized cross-correlation (ZNCC) as
the similarity measure function, which is a contrast invariant
variation. If we define f and g as the corresponding LWA
map pair, 7 and z as the mean value within the template
window W around pixel (x,y) in f, and (yy) In g,
respectively, and § as the searching window, where
(i, ))e W,(u,v) e S , the ZNCC can be expressed as follows:
Inter
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