745
HYBRID MEASUREMENT SCENARIOS IN AUTOMATED
CLOSE-RANGE PHOTOGRAMMETRY
Simon Cronk, Clive S. Fraser
Department of Geomatics, University of Melbourne, Victoria 3010, Australia - (c.fraser, cronks)@unimelb.edu.au
Commission III, WG HI/1 and TS 22
KEY WORDS: close-range photogrammetry, automation, hybrid measurement, coloured retro-reflective targets, iWitnessPRO
ABSTRACT:
Automated close-range photogrammetric measurement has traditionally been associated with expensive specialist cameras and
usually requires highly controlled image illumination conditions. In the past few years, however, there has been a significant amount
of research into the development of automated routines and algorithms that support the employment of consumer-grade colour
digital cameras for everyday photogrammetric measurement tasks. These include, but are not limited to, fully automatic network
orientation, image point correspondence determination and camera calibration. This paper discusses the further requirement of a
hybrid-measurement approach, where automatic orientation routines are supported, as well as follow-up manual and semi-automatic
operations such as natural feature point extraction, manual point measurement and operator-assisted surface definition via image
matching. Control over image illumination is not critical; however the use of retro-reflective targeting ensures a high level of process
automation prior to the manual phase of hybrid measurement. Topics discussed include the exploitation of colour from imagery and
targeting, issues regarding automatic network orientation and image point correspondence determination in normally exposed
imagery, operator-assisted surface extraction, and a special condition placed on the bundle adjustment to support both automatic and
manual image measurements.
1. INTRODUCTION
At the heart of the success of digital close-range
photogrammetry for industrial measurement has been the ability
of vision metrology systems to measure 3D coordinates of
targeted object point arrays fully automatically. In order to
achieve this, a number of developments have been required in
digital camera technology, in photogrammetric processing
algorithms, and in object point targeting. Most notable in the
point signalisation area has been the continued use of retro-
reflective targeting techniques, which generally demand a
controlled lighting environment, if fully automatic image
measurement is to be successful. For practical and accuracy
reasons, panchromatic imagery has been exclusively employed
to date in high-end vision metrology systems (e.g. Ganci and
Handley, 1998).
What is being witnessed today, however, is the increasing use
of off-the-shelf, SLR-type digital cameras, which offer
can significantly complicate the associated automatic network
orientation stage. All phases of this process become more
complex: (i) it is more difficult to robustly detect coded and
other signalised points in the imagery; (ii) the subsequent image
point correspondence problem is complicated by the much
greater number of scanned ‘targets’, both real and erroneous;
and (iii) there is a requirement for more robust blunder
detection techniques within the network formation and bundle
adjustment stages, because of the likely high number of
plausible yet wrong image point matches, resulting from the
correspondence determination stage. Aggravating these issues
is the invariably less than favourable network geometry, which
is often an unavoidable characteristic of measurement networks.
Developments to be discussed in the paper include: the merits
of colour for codes in normally exposed imagery; fully
moderate to high metric performance at considerable cost
savings over their dedicated photogrammetric counterparts.
These sensors are exclusively colour, and so it has not been
surprising to see the attributes of colour being adopted in close-
range photogrammetric systems (Fraser et al., 2005; Cronk et
al., 2006). More recently, colour retro-reflective targeting has
found application in network configurations that incorporate
both fully automatic and manual (unsignalised) point
measurement (e.g. Fraser & Cronk, 2007). The attributes of
colour imaging from consumer-grade cameras have greatly
enhanced the prospects for productive ‘hybrid measurement’ in
non-controlled environments, thus giving rise to some distinctly
new application areas of close-range photogrammetry.
One of the often under-appreciated problems associated with
utilising lighting conditions conducive to normally exposed
imagery that is required to support manual digitizing, is that it
automatic network orientation; optional image point
correspondence determination; and subsequent manual and
semi-automatic hybrid measurement operations. iWitnessPRO,
a newly-developed software package is also discussed
(Photometrix, 2008). This paper also describes recent
developments that have been undertaken to enhance the use of
automated photogrammetric measurement in two new and quite
distinct applications. These are the reverse engineering of often
complex stairways to facilitate accurate design and installation
of in-home stairlifts, and the deformation or so-called crush
measurement of vehicles involved in traffic accidents to support
accident reconstruction and analysis. A characteristic of both
these systems is the requirement for fully automatic
photogrammetric network orientation, coupled with subsequent
manual 3D digitising of selected non-targeted features such as
points and lines.