4-1-5
3.4 Self-Calibration Model
The additional parameter model for each of the two CCD cameras
was as follows:
Ax = - x p - (x/c) 5c + K] x r 2 + aix
(1)
Ay = - y P - (y/c) 5c + K! y r 2
where 5c is the correction to the estimate of principal distance, c,
Ki is a coefficient of radial distortion, ai is the affinity term
relating to differential scaling between the x and y image
coordinates, x p and y p are the principal point coordinates, and r is
the radial distance. Previous calibrations of the two Pulnix
cameras had established that the radial distortion followed a near-
cubic profile (hence the inclusion of K t only) and the level of
decentering distortion was insignificant considering the degree of
metric accuracy required.
The presence of the affinity term aj was to prove problematic, as
anticipated, especially in regard to the high projective coupling
that existed between this parameter and the coordinates (x p , y p )
of the principal point. Even in instances when this term was
suppressed, the recovery of interior orientation elements was
quite weak.
As a consequence, two basic self-calibration models were
examined, one as represented by Eq. 1 and the other comprising
principal distance (5c) and radial distortion (KO terms only. In
the latter case, a^ x p and y p were suppressed to zero, with the
image coordinate reference system being assumed to have its
origin at the centre of the CCD array. Although this was unlikely
to be the case in reality, the mildly convergent geometry of the
two cameras offered the possibility of a significant level of
projective absorption in the EO of errors arising from an
erroneous interior orientation.
Self-calibrating bundle adjustments for the 2-camera, 24-image,
225-point network were performed for each additional parameter
model, using both free-network datum constraints (no explicit
control points) and a control configuration of 22 object target
points. In terms of object space triangulation accuracy, all four
adjustments yielded essentially the same results. Over 200
ground checkpoints were available and in all cases the RMS
coordinate discrepancies were within a centimetre or so of S x =
0.15m, S Y = 0.17m and S z (vertical) = 0.16m. While this
accuracy is somewhat less than the design precision of ct X yz <
0.1m, the degradation was anticipated given both physical
circumstances of the imaging configuration and concerns about
the metric integrity of the analog-to-digital conversion of the
SVHS video data. An RMS error of image coordinate residuals of
approximately 5 pm was obtained in all four adjustments.
In terms of the EO, the approaches of free-network and absolute
ground control yielded basically the same solutions for camera
position (X C ,Y C ,Z C ) and orientation (to, tp, k). This was
understandable given that the preliminary object point
coordinates employed in the inner-constraint adjustment were in
fact the ‘true’ ground coordinates.
4 STEREO OBJECT POINT DETERMINATION
As a result of the photogrammetric calibration process, the EO of
each of the two CCD cameras was established with respect to the
desired geodetic reference system. Aircraft position and attitude
are also available at each exposure via the on-board kinematic
GPS system coupled with the inertial positioning sensors. The
nominally constant offset of position and orientation between the
aircraft and the stereo camera set up was thus obtained and could
be applied to determine the absolute object space coordinates of
triangulated image features. This followed a two-stage process.
In the first step the object space coordinates are determined with
respect to the ‘relatively oriented’ stereo cameras. The final
ground coordinate values are then obtained in a second step via a
similarity transformation which takes into account the position
and orientation measured by the onboard GPS/inertial system.
It must be recalled that within the camera self-calibration network
there was typically a dozen or more imaging rays to each target
point. Routine application of RCAMS, on the other hand,
involves only 2-ray intersection, often to features where it is
difficult to precisely measure the corresponding coordinates of
homologous image points. Coupled with this accuracy issue is
the metric quality of the SVHS video imagery and the fact that
the final EO cannot be assumed to be ‘fixed’ due to aircraft wing
flexure and subsequent camera instability. A practical, analytical
pre-analysis of object point intersection precision is therefore
precluded to a large extent, for it could give only a vague
indication of accuracy in the presence of such systematic error
influences on the photogrammetric triangulation process.
For the powerline mapping project, field accuracy checks were
essentially the only feasible means to gain a reasonable estimate
of the net impact of all error sources on the stereo triangulation
process. Some 50 or more accuracy checks were performed on
both powerline features (mainly pole locations) and adjacent
trigonometrical survey markers. Positional errors were found to
range up to 3.5m, with the achieved RMS positional accuracy
(absolute position) of RCAMS being close to lm. This was
consistent with the level of accuracy sought by the power
company sponsoring the work.
5 PRACTICAL RCAMS APPLICATION
In the period following the field calibration process described, the
airborne RCAMS was employed for ‘vegetation mapping’ of
some 2300 km of 66 kv powerlines in the State of Victoria. The
survey involved the positioning of 15,000 poles and the recording
of countless instances of vegetation encroachment into the
inspection and clearance space around the powerlines. This
information is critical for fire risk assessment. The task