Title: Overview of Applications of Digital CloseRange Photogrammetry
1Overview of Applications of Digital Close-Range
Photogrammetry
- Clive S. Fraser
- Dept. of Geomatics
2Applications areas of close-range digital
photogrammetry
- Industrial photogrammetry (vision metrology)
- Engineering measurement (e.g. civil
geotechnical) - Archaeological photogrammetry(Heritage
recording) - Architectural photogrammetry (Heritage
recording) - Traffic accident reconstruction
- Forensic photogrammetry
- 3D modelling for animators, the movie industry
and virtual reality builders - Biostereometrics and medical imaging
- Process plant documentation
- Underwater photogrammetry
3Trends in close-range photogrammetry
- Higher resolution sensors leading to higher
precision - Improved computational models
- Full automation of the measuring process
(real-time off-line) - Enhanced modelling and visualisation
- Availability and suitability of low-cost
digital cameras - offering a broader range of applications in
new fields
4Operational framework a diverse range of
requirements
- Simple object Highly complex object
- Low-end instr. High-end system
- Simple survey Complete, precise 3D
documentation - Use by experts Suitability for general use
- Limited budget High cost
- No time factor Time constrained
5 Automation of the photogrammetric
measurement process
- Automated design not widely employed
- Automated image recording use of remotely
controlled cameras - Automated image measurement possibly within the
digital camera - Automatic orientation via resection or relative
orientation - Automatic point correspondence determination
point triangulation - Automated mesh generation and texturing where
possible not common as yet
6From High End
Off-line vision metrology
On-line, real-time vision metrology
7 Off-line photogrammetric object reconstruction
via image matching
- All network images first recorded, after which
photogrammetric orientation may be manual or
automatic and 3D point cloud extraction is
automatic - Close attention required to network geometry (low
convergence angles required) image matching
usually done via stereo pairs, but multi-image
matching possible - Image matching, especially least-squares
matching, is much slower than point determination
via target centroiding requires good image
quality
8higher sensor resolution leads to higher metric
accuracy
Triangulation accuracy is a function of imaging
scale, geometry, number of exposures image
measurement precision
sXYZ (q /
k1/2) S s sXYZ XYZ coordinate
standard error q empirical factor
(approx. 0.7) S scale number
(dist/focal length) s std. error of
image xy coords. k number of
images per station
Accuracy potential for digital cameras with a
350-500 field of view (pixel size of 9 mm, image
measurement accuracies of s1/30th pixel
s1/3th pixel)
targets non-targeted
9Application diversity of industrial vision
metrology
Defence
Automotive
Engineering
Aerospace
Fabrication
Automated C-R Photogrammetry
Ship Building
Mining
Antennas
10Coded targets allow automatic measurement
- Essential from a practical point of view for
multi-image monoscopic convergent networksNot
strictly essential for 3D model reconstruction
from stereo imagery, but very useful for initial
relative or exterior orientation
Coded targets
Retro-targets
EO Device
- Exterior orientation device (EO-Device) is a
special coded target to establish both scale and
an XYZ reference datum
11Surface texture or projected patterns for surface
model extraction
Pattern projector
Natural surface texture
Artificial texture a pattern
12System configurations for automatic C-R
photogrammetric measurement
On-line vision metrology system for measuring
arrays of projected targets
- Precise exterior orientation from coded targets
- Projected targets measured via feature-based
matching, the projected targets being the
features
13Automatic camera calibration
A full metric modelling of interior orientation
and lens distortion for colour sensor is being
achieved to around 0.1 pixel in an operation
requiring only a few minutes
14Example of automatic off-line vision metrology
11 stations 875 points measured in 10 seconds
2.5m Antenna Deformation Measurement of High Gain
Antenna
Note need for controlled illumination strobe
underexposed background
15Can also automate the following
operations Absolute orientation via coded
targets Scaling the model via coded targets
16Typical network for automated measurement Ship
block measurement
100 images, 1000 points
17Industrial photogrammetry reverse engineering of
a tilt train
- Combined off-line real-time measurement
- Off-line survey 3000 strip target points
- Real-time survey 1000 probed points
- Images 130
- Survey duration 10 hours
- Survey accuracy better then 0.1mm
- 'Catia CAD used to generate 3D model
From point cloud to rendered CAD model, with all
design changes via CAD
18Deformation monitoring at Federation Square
North Atrium
Federation square
19North atrium of Federation Square
- Atrium comprises two skins of in-plane frames
separated by an average gap of approximately 1.5m
consisting of 4 to 5 sided irregular polygons
Deflections expected to be as much as 50 mm
20Photogrammetric network
- Vision Metrology System Networks
- V-STARS system with INCA camera
- 2cm retro-reflective targets along with coded
targets on inside of both inside outside frames - 32 basic camera station positions with 2-5 images
per station ? 90-130 images per epoch - RMS object point coordinate accuracy 0.15mm
- Time for photography 30 minutes
- Image measurement data processing 5 mins
(fully automatic) - 6 absolute datum points established
21Deformation analysis for North Atrium of
Federation Square
Epoch 5 versus 1 After glazing, max.
deflection 22mm
Epoch 4 versus 1 After final de-propping, Max.
deflection 8.3mm
22Photogrammetrically monitoring bridge beams - the
problem
- New bridge specifications call for increasing
load capacities - Over time, many existing bridges are falling
below design specifications - Insufficient capital expenditure on
infrastructure to consider major new bridge
building - ? The need for bridge upgrading
23Beam Strengthening via CFRP Stirrups
243D measurement requirements
- Beam displacements required at 1000-1500 surface
points - Measurements required at up to 15 load
increments each increment is 20-60kN failure
is at approx. 400kN - Need to correlate 3D surface point measurements
with displacement transducer (LVDT) data - Accuracy of better than 0.1mm maximum
displacement is approx. 3cm
for a 6m beam
Single-sensor VM offers speed, accuracy,
reliability and process automation
25VM/Photogrammetric Network
- 20-stn convergent network with set-back distance
of approx. 6-7m - Imaging scale of 1330 and 0.03 pixel measurement
accuracy ? sXYZ 0.06mm - Rapid data acquisition required (1 minute) shape
invariance to be confirmed - Automatic measurement utilising EO device and
coded targets - Full data processing completed prior to next
measurement epoch ie within 4 minutes
Large data volume of approx. 200,000 surface
point measurements per beam, with computations
QA completed 3 minutes after final epoch (ie
after failure)
26Targets comprised retro-reflective dots, coded
targets an EO device
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29measurement results
Comprehensive 3D beam displacement data (not
possible with LVDTs alone)
180 kN
380 kN
30Deformation Measurement of a PC9 Trainer Aircraft
- Deflections result from an induced static load.
- Deformation vectors for fuselage twisting (from
engine torque), lateral tail fin movement
longitudinal bending reached 10 cm magnitude
31Deformation Survey of the ADI Bushmaster
Aim To photogrammetrically measure to 0.5mm
accuracy the deformation to the vehicle caused by
a mine explosion
32Deformation Survey of the ADI Bushmaster
Point displacements resulting from land mine
detonation
33Cadia/Freeport Mine Projects
- Deformation Measurement of two of the Worlds
Largest Electrical Motors
Rotor/Stator separation due to deformation
reached 3mm
34- Dimensional Inspection and Deformation of a
Rotary Kiln
Profiles checked for circularity/ linearity
also determine deformation 30 images, 400 pts,
0.5mm accuacy
35Rudder skin of Boeing 777 / 300
- 777 Rudder
- Inspection
- Tooling hole coordination
- Reverse engineering
- 0.2mm accuracy
36AUTOMATIC MEASUREMENT EXAMPLES Deformation
Monitoring of a Historic railway Bridge
- Survey carried out to 0.5mm accuracy using a
consumer-grade camera (Nikon D100) - Very inexpensive exercise, the main cost being
simply applying the targets
37Dynamic monitoring example automatic tracking of
a targetted parachute
Approx. 100 points tracked by 6 cameras as
parachute falls, frequency 30 Hz
38Dynamic monitoring example automatic tracking of
a targetted parachute
39Accident Reconstruction surveys with close-range
photogrammetry
Efficient automatic orientation followed by
semi-automatic and manual feature point extraction
40Automatic network orientation with manual curve
extraction
41Traffic Accident Reconstruction Difficult
Geometry
Camera is a 7 mpixel Olympus C7070Wz zoomed fully
out (f5.6mm)
Expected Accuracy Mean sigma of XYZ coords. 5
cm or 12100 of size RMS of image residuals
1.1 pixels
42First iWitness example
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47AR scenes can be complex with poor geometry
48AR scenes can be complex with poor geometry
49Texturing of 3D Models via iWitness
Rectified image on planar surface in object space
Texturing in this case achieved via plane
rectification of image patches
50Building the textured model 1) point cloud or 3D
curves, 2) wireframe model 3) texture mapping
via plane rectified image patches
- Higher definition can be achieved through smaller
image patches (even single pixels) in the texture
mapping, but at a cost of time and effort.
Automation of the process is feasible.
51Photogrammetry for heritage recording
- Mapping of monuments sites
- 3D reconstruction of objects
- Documentation
- Visualization and presentation
52(Patias, 2003)
Photogrammetric measurement outcomes
- 2D vector reconstructions
- Planar texture maps
- 3D vector reconstructions
- 3D texture representations
53Example 1 Recording visualization of BET
GIORGIS, Ethiopia
54 Model building, rendering visualization of
Bet Giorgis, Ethiopia
55(Patias, 2003)
Example 2 Church interior recording
reconstruction
Purpose Import to GIS Product
2D 3D vector, textured Methodology Multi
photo arrangement Emphasis Visualization
56Example 3 computer reconstruction of artifacts
57courtesy ETH Zurich
Example 4 Bayon Temple
Automated 3-D reconstruction of a complex
Buddhist tower of the Bayon Temple, Angkor Thom,
Cambodia
Project Aim Automated derivation of a texture
mapped 3-D model of a very complex object using
tourist-type terrestrial images.
58Bayon Temple
- The Angkor Site in Cambodia Hindu and Buddhist
monuments listed in the UNESCO World Heritage
List - Project goal Image-based reconstruction of one
of the many complex Buddha-faced towers of Bayon
Temple in Angkor Thom
Image acquisition
59Procedures and results
Semi-automated phototriangulation
Automated surface reconstruction, editing and
triangulation
Visualization
View-dependent texture mapping
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61The Great Buddha of Bamiyan
3-D reconstruction of the Great Buddha statue of
Bamiyan, Afghanistan
- Project Aim
- Reconstruction of a 3D model of the Great Buddha
of Bamiyan - The 3-D model could serve as the basis for future
physical reconstruction
62The Bamiyan Valley, Afghanistan
- 200 km N-W of Kabul
- 2500 m altitude
- Center of silk road
- Major Buddhist area (gt100 statues, 5000 monks)
- 3 larger Buddha statues cut out of the cliff (ca
200 AD)
ca 900 m
63Ikonos image, 1 m
64The Great Buddha of Bamiyan ca 200 AD - March
2001
- 53 m high - the tallest representation of a
standing Buddha - Cave was covered by frescos and paintings
- Statue was covered with mud and straw to model
face folds - Statue was probably painted in gold and colors
and decorated
65Photogrammetric Reconstruction Three Data Sets
(in parallel)
2. Amateur images provided by a tourist - no
information available
Research work to test algorithms
Research contribution to the possible
reconstruction project
66The Great Buddha of Bamiyan
Automated reconstruction with Multi-photo
Geometrically Constrained Least Squares Matching
Manual reconstruction
67The Great Buddha of Bamiyan
68The Great Buddha of Bamiyan
69Conclusion and Outlook for Automated Close-Range
Photogrammetry
- More automation ? greater ease of use
- Growing demand across broader applications
domains for more flexible and robust low- to
moderate-accuracy systems - More demand for low-cost systems
- Demand for better accommodation of difficult
image geometry - Better modelling visualisation capabilities
especially 3D - Integration with other measurement systems (eg
TLS) data fusion - Greater integration of derived 2D 3D
information into information systems (eg GIS) - leading to a very healthy future!