Enhancing Displays by Blurring
Published in: SID Annual Meeting Proceedings, 1994
-
C. Tiana
Sterling Software at NASA Ames Research Center, Moffett Field, CA
-
M. Pavel
Oregon Graduate Institute, Portland, OR
-
A. J. Ahumada, Jr.
NASA Ames Research Center, Moffett Field, CA
ABSTRACT
Some Enhanced Vision cockpit displays consist of
synthetic imagery superimposed on a real image.
The high spatial frequency components of the
synthetic imagery can mislead an operator by
masking features of the real image. We demonstrate
that blurring the synthetic image prior to
superposition reduces its masking effect in high-
contrast regions of the real image, while
maintaining its enhancing properties in regions of
the real image where visibility is low.
INTRODUCTION
In Enhanced Vision cockpit displays, auxiliary visual
information is derived from the output of various
sources, such as an infrared camera, a radar or an on-
board database. A typical design problem is to
display this auxiliary information fused with the out-
the-window image of the real scene. One way this can
be accomplished is by a direct optical or digital
superposition (fusion) of the sensor image and the
real ("out-the-window") scene (Foyle et al., 1992 [1]).
A problem with this kind of superposition is that, in
low visibility conditions, the sensor image may mask
critical features of the out-the-window image. This is
especially undesirable when the information from the
sensor is inaccurate because of low sensor signal-to-
noise ratio, time delays or geometric distortions.
One way to minimize this problem would be to
reduce the contrast of the sensor image in selected
high-contrast regions of the real scene. A robust local
gain control mechanism to implement this scheme
would require sophisticated algorithms to estimate
the out-the-window visibility and correct the sensor
contrast accordingly, and assumes the availability of
the out-the-window scene in digital form.
An alternative approach is to try to format or process
the sensor image to minimize the masking effects. We
investigated the effect of blurring the sensor image on
the ability of a human operator to locate edges. The
choice of this scheme was motivated by the well-
known fact that edges with high spatial frequency
content are very effective maskers of low spatial
frequency image information (Harmon and Julesz,
1973 [2]).
Figure 1 - Top: out-the-window scene at d=500 ft.
before touchdown in a simulated landing
sequence under clear weather conditions. Bottom:
same out-the-window scene under foggy
conditions.
METHODS
We applied this idea to simulations of the scenario of
an airplane on a final approach using a display of the
out-the-window scene enhanced by sensor
information.
We generated two simulated landing sequences.
These sequences simulate the final approach to
landing of an aircraft, from about 1000 ft. before the
touchdown point to about 300 ft., after touchdown,
under clear-weather and dense fog (700 ft. visibility)
conditions respectively. An example frame from each
sequence (at 500 ft. before touchdown) is shown in
Figure 1.
To simulate a forward looking, weather penetrating
sensor, we extracted the edges from the clear-weather
scene (without runway markings). This can
alternatively be regarded as simulating the output of
an on-board database rendered by wire frame. We
used the implementation of an edge extraction
algorithm (Shaw, 1979 [3]) provided by the HIPS
image processing package (Landy et al., 1984 [4]).
The edges extracted from the frame at d=500 ft. are
shown in the top panel of Figure 2.
We processed these edges by low-pass filtering them
with an ideal filter in the spatial frequency domain.
We left unaffected all components whose spatial
frequencies fell within a radius ² 0.5 of the 1-D
Nyquist frequency in the Fourier Transform, and
zeroed all components whose spatial frequencies fell
above this value. After filtering, we rescaled the
image so that the peak-to-peak amplitude of the low-
pass image was the same as that of the original edge
image. The result of this operation is shown in the
bottom panel of Figure 2.
We then proceeded to superimpose these low-pass
filtered edges onto the out-the-window images (both
clear weather and fog conditions) by simple addition.
Next, we compared the effect of superimposing
unprocessed and low-pass filtered misregistered
edges onto the clear weather scene.
RESULTS
In the first demonstration, we produced an enhanced
vision landing sequence in which the low-pass
filtered sensor edges are added frame-by-frame onto
the out-the-window, relatively low contrast, fog
sequence.
As the sample frame in Figure 3 shows, the low-pass
filtered edges are evident and effective outlines of
features otherwise invisible through the fog.
Conversely, when these low-pass filtered edges are
added onto the clear weather scene (Figure 4) they
tend to provide a mere faint glow around the high
spatial frequency feature edges.
We take this as evidence of the promise of this
approach to enhance low-contrast visual scenes
without interfering with visual scenes in which the
contrast is such that no enhancement is required.
Figure 2 - Top: Edges of runway and taxiways
(extracted from Figure 1, top) as might be
obtained from a forward looking on-board
sensor. Bottom: Low-pass filtered edges.
Figure 3 - Low-pass filtered edges added to the foggy
out-the-window scene are effective in enhancing
the available low-contrast information in that
scene.
Now consider another application of these techniques
to situations where the misaligned edges may be
misaligned because of misregistration.
Our second demonstration compares the fusion of a
misregistered sensor before and after low-pass
filtering as described above onto the clear-weather
out-the-window scene.
When the sensor image is presented as a wire frame
image with high-spatial frequency content, the sensor
edges tend to divert the viewer attention away from
the edges of the out-the-window image (Figure 5, top
panel). Under these conditions, the sensor edges may
be perceived as the 'true' edges and can lead the pilot
to see the runway in a displaced position.
As in the previous demonstration, the result of the
filtering operation makes the edges less effective
maskers of the out-the-window scene. When they are
superimposed onto the clear-weather scene they are
effectively masked by the high-contrast, sharp edges
in that scene (Figure 5, bottom panel), and ideally
they will not contribute to the pilot's perception of the
runway location.
We have observed this improvement in a very
effective demonstration that we prepared in which
the unprocessed and low-pass filtered lines are added
to the out-the-window scene with increasing and then
decreasing amounts of translation from their 'true'
position, and the images thus generated are animated
in a motion sequence. Once in motion, the
unprocessed edges capture he observers' gaze very
effectively and distract attention from the runway
position, whereas this effects is greatly reduced when
the low-pass filtered edges are animated in the same
fashion.
DISCUSSION
We demonstrated that blurring a synthetic or sensor-
based wire frame image can reduce undesirable
masking effects.
This approach can be used in situations in which
various sources of information, differing in signal-to-
noise ratio, need to be fused. In those situations,
sensors with more uncertain outputs can be blurred
prior to fusion. We are following up these
demonstrations with experiments on the perceived
position of combinations of different types of lines
(Tiana et al. 1994 [5]). We hope to develop
quantitative models for this task similar to the cue
fusion model of Landy (Landy, 1993 [6]).
Low-pass filtering the sensor information is not the
only approach that can be conceived for the purpose
of reducing masking effects. Other possible
alternatives might include: periodic interruptions in
the lines (dashed lines); a 'marching ants' display
taking advantage of the perceived motion of the
dashes in dashed lines when the dashes and the blank
segments between them are alternately swapped; or a
display in which pixel noise is added to the sensor
lines with a standard deviation proportional to the
amount of reduction in visual effectiveness required.
Figure 4 - Low-pass filtered edges added to the clear-
weather visual scene have little effect upon the
high-contrast information available from that
scene.
Figure 5 - Top: high contrast edges from a
misregistered sensor, added to the out-the-
window scene distract viewer from the actual
feature edges. Bottom: low-pass filtered edges do
not mask the high-contrast information in that
scene, making misregistration a less critical
failure.
Finally, if a range map of the sensor scene were
available, as is the case for example in the case of
RADAR, similar processing o the data might be
feasible based on out-the-window scene
characteristics. In low visibility conditions, RADAR-
extracted, distant features might be enhanced relative
to close-up features that might be less affected by
poor visibility.
Each of these schemes could have to be evaluated in a
task dependent fashion, since its effectiveness will
probably well be highly task and situation dependent.
For example the 'marching ants' display might be
usefully applied to prevent masking of lines in
motion, while adding pixel noise might be useful in
situation where high-spatial frequency noise is
already a component of the scene.
The approach we outlined can also be used to
represent the reliability of a source of information
without significantly impairing its visibility;
information from sensors prone to misregistration,
drift or intrinsic noise might be presented in a way
that weights its saliency in proportion of its reliability.
ACKNOWLEDGMENTS
This work was supported by NASA RTOP 506-59-65,
NASA RTOP 505-64-53 and NASA grant NCC2-811 to
OGI.
REFERENCES
-
Foyle, D. C., Ahumada, A. J., Larimer, J., Sweet, B. T. (1992)
Enhanced/ Synthetic Vision Systems: Human Factors Research and
Implications for Future Systems.
SAE Transactions: Journal of Aerospace, v. 101, pp. 1734-1741.
-
Harmon, L. D., Julesz, B. (1973)
Masking in Visual Recognition: Effects of 2-Dimensional Filtered Noise.
Science, v. 180, pp. 1194-1197.
-
G. B. Shaw (1979)
Computer Graphics and Image Processing, v. 9, pp. 135-149.
-
Landy, M. S., Cohen, Y and Sperling, G. (1984)
In: HIPS: A UNIX -based Image Processing System.
Computer Vision, Graphics and Image Processing, v. 25, pp. 331-347.
-
Tiana, C. L. M., Lanham, J. and Pavel, M. (1994)
Integration of edge location Information across Frequency.
Investigative Ophthalmology and Visual Science (suppl), vol. 35, pp. 2064.
-
Landy, M. S. (1993)
Combining multiple cues for texture edge localization.
SPIE Proceedings, vol. 1913, pp. 506-517.
NASA Ames Research Center, Vision Lab /
carlo@vision.arc.nasa.gov