The International Archives of the Photogrammetry, Remote Sensing and Spatial Information Sciences. Vol. XXXVII. Part B5. Beijing 2008
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An independent check on accuracy is provided by the length
measurements on the rigid arms of the frame. The RMS error
of the distances indicates the base line integrity of length
measurements made with the stereo-video system. Based on
centroid measurements, the RMS value is typically 0.05 mm,
signifying a high level of accuracy demonstrated by the self
calibration measurements.
The relative orientation of the cameras is derived from post
processing of the locations and orientations of all synchronised
stereo-pairs in the photogrammetric network. Rigid mounting
of the camera housings to the frame and a rigid connection
between the cameras and the view ports generally ensures the
stability of the relative orientation of the cameras (Shortis et al.,
2000). Experience has demonstrated that a weakness of the
implicit model for refraction is the integrity of the full light path
from the first water-port interface through to the image sensor.
A consistent spatial relationship between the view port and the
camera lens is critical to this stability.
For subsequent measurements in the field, the photogrammetric
network provides the required calibrations and the relative
orientation of the stereo-cameras. The system is then validated
in the pool environment by introducing a known length which is
measured manually at a variety of distances and orientations
within the field of view and expected working range of the
system (see figure 3). The RMS error of these validation
measurements is typically less than 1 mm over a length of 1 m,
equivalent to a length accuracy of 0.1%. This is a best case
scenario in conditions of excellent water clarity and high
contrast targets. Experience with shallow water measurement
of fish silhouettes in more realistic conditions, together with
validated measurements of live fish in the field, indicate that
length measurements will have a field accuracy of 0.2% to
0.7% (Harvey et al., 2002, 2003, 2004).
3.2 Deep Water Operations
For deep-water operations there may be measurement
inaccuracies resulting from the application of a camera
calibration carried out in shallow water to imagery gathered at
much greater depths. Stereo-camera calibrations are generally
carried out at depths of 1-3 m for operational convenience,
however the stereo-cameras can subsequently be deployed to
depths of up to 2,000 m. Under these conditions of
considerably increased water pressure and decreased
temperature it is expected the camera housings and view ports
will deform, and the deformation may adversely affect camera
calibration and subsequent stereo measurement.
Initial testing for the effects of depth have clearly indicated that
there is an impact on the calibration of the stereo-camera
system. The first experiment used continuous calibration based
on a laser array system (Shortis et al., 2007). Measurements to
a depth of 500 m has confirmed the presence of significant
systematic errors in the calibration, however the test did not
include an independent scale determination. A second
experiment was based on a scale bar attached to the towed body
so that it appeared in the edge of the field of view of the
cameras. A range of distances on the scale bar were measured
at every 100 m of depth whilst the system descended to 1120 m
and returned to the surface over a period of 110 minutes.
Variations of up to 8 mm over a length of 1.2 m, corresponding
to an error of 0.8%, were recorded. Current research is
analysing the effects of pressure and temperature on the camera
housing so that these effects will be fully understood and
appropriate modifications to the housings can be implemented.
4. MEASUREMENTS FROM VIDEO SEQUENCES
Stereo-video images enable accurate 3D measurements of point
locations. Distances, areas and volumes can be derived from
these measurements and used to characterise marine fauna
(figure 4) and seafloor habitat features such as boulders,
crevices and ledges. These fine spatial scale metrics
complement information typically gathered at coarser scales by
techniques such as acoustic mapping (see figures 1 and 7).
Similar stereo-video techniques were originally developed for
measuring the lengths of fish to estimate population size
structure (Harvey and Shortis, 1996) and are based on operator-
identified points of interest in the stereo-images.
Figure 4. Example of an operator measurement of the height of
a deep-water coral.
Because manual measurement and analysis of large volumes of
video sequences is time consuming, labour intensive and
therefore costly, there is considerable potential benefit in
automating measurement processes. For example, CSIRO
researchers collect 100+ hours of video recordings annually
during biodiversity and fishery habitat surveys. Currently, the
automation techniques employ motion analysis, image
segmentation against the background, and colour matching to
identify the presence and percentage cover of benthic fauna,
and differentiate habitat types in video sequences (figure 5).
Initial results show promise for rapidly quantifying the cover of
complex structures such as the reefs formed by stony corals (see
figure 8), but tuning and validation against manual
identification techniques remains a work in progress (Williams
et al., 2008). Stereo-measurement can then provide the sizes of
individual animals or substratum features within selected image
pairs to estimate population characteristics.
Figure 5. Candidate region of stony coral detected within an
interest window (grey trapezoid) from motion analysis.