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Title: P.1


1
Sensor Modeling and Triangulation for an
Airborne Three Line Scanner lt 2008 ASPRS Annual
Conference gt
  • JAMES S. Bethel
  • Wonjo Jung
  • Geomatics Engineering
  • School of Civil Engineering
  • Purdue University
  • APR-30-2008

2
Outline
  • Introduction
  • Dataset
  • Camera Design
  • Flight and observations (3-OC Atlanta, GA)
  • Sensor Model
  • Trajectory Model
  • Pseudo Observation Equations
  • Data Ajustment
  • Implementation
  • Results
  • Conclusions
  • Future plans

3
1. Introduction
MAIN OBJECTIVE
Developing an algorithm to recover orientation
parameters for an airborne three line scanner
4
1. Introduction - Types of three line scanners
Three separate cameras
Linear arrays on the same focal plane
Lens
5
1. Introduction
Instantaneous gimbal rotation center
flight trajectory
  • While ADS40, TLS and JAS placed CCD arrays on the
    focal plane in a single optical system, 3-DAS-1
    and 3-OC use three optical systems, rigidly fixed
    to each other.
  • For this reason, we need to develop a
    photogrammetirc model for three different cameras
    moving together along a single flight trajectory

6
1. Introduction
  • Parameters to be estimated
  • Exterior orientation parameters
  • 6 parameters per an image line
  • Additional external parameters
  • Translation vector between a gimbal center to
    perspective centers
  • Rotation angles between gimbal axis and sensor
    coordinate systems
  • Interior orientation parameters
  • Focal lengths
  • Principal points
  • Radial distortions

7
1. Introduction
  • There have been two kinds of approaches.
  • Reducing number of unknown parameters
  • Piece-wise polynomials
  • Providing fictitious observations in addition to
    the real observations
  • Stochastic models

8
1. Introduction
  • Reducing number of unknown parameters
  • Piecewise polynomials

3618
estimated
100066000
given
9
1. Introduction
  • Providing fictitious observations in addition to
    the real observations
  • 1st-Order Gauss-Markov Model

observations
estimated
given
10
1. Introduction
  • Self-calibration
  • Partial camera calibration information is
    provided.
  • focal length, aperture ratio, shift of the
    distortion center, radial distortion
  • Coordinates of projection center of the camera
    relative to the gimbal center is not measured.
    Just design values are provided.
  • Need to refine some of the parameters

11
2. DATASET
  • Camera Design (3-OC)

12
2. DATASET
Strip ID Heading Altitude
2 E 5,500ft
3 W 5,500ft
4 E 5,500ft
5 W 5,500ft
6 S 5,500ft
8 N 5,500ft
9 S 5,500ft
10 N 5,500ft
11 S 10,500ft
12 N 10,500ft
13 S 10,500ft
14 N 10,500ft
15 E 10,500ft
16 W 10,500ft
17 E 10,500ft
18 W 10,500ft
20 GCPs
8Check points
13
3. Sensor Model
  • Collinearity Equation a line scanner

Sensor Coordinate System (SCS)
Perspective Center
scan line
flight direction
SCS
column
row
Ground
14
3. Sensor Model
  • Collinearity Equation - oblique camera

perspective Center
scan line
flight direction
Ground
15
3. Sensor Model
  • Collinearity in a three line scanner

three angles should be considered
flight direction
gimbal center
B
N
F
plumb line
16
4. Trajectory Model
  • 1st order Gauss-Markov trajectory model
  • Probability density function f(x(t)) at a certain
    time is dependent only upon previous point
  • Probability density function is assumed to be
    Gaussian
  • Autocorrelation function becomes

17
4. Trajectory Model
  • 1st order Gauss-Markov trajectory model

autocorrelation function
Parameters are highly correlated!
18
5. Pseudo Observation equations
One-sided equation
Symmetric pseudo observation equation
t
autocorrelation function
19
6. Data Adjustment
  • the Unified Least Squares Adjustment

20
7. Implementation
  • To reduce the number of parameters, only the
    parameters of lines containing image observations
    are implemented.
  • For the memory management, IMSL Ver. 6.0 library
    is used. IMSL contains a sparse matrix solver.
  • riptide.ecn.purdue.edu
  • Red Hat Enterprise Linux 4 operating systems
  • 16 multi core processors
  • 64GB of system memory

21
8. Results
  • Processing time 49 seconds
  • (16 core x86_64 Linux with 64GB ram)
  • Number of iteration 7
  • Converged at 0.58 pixels
  • RMSE 1.08 pixels for 8 check points

22
8. Results
  • Interior Orientation parameters are
    self-calibrated

23
9. Conclusions
  • We could successfully recover the orientation
    parameters using stochastic trajectory model
  • Interior orientation parameters of three cameras
    can be refined through the self calibration
    process

24
9. Future Plans
  • Analysis on the model properties
  • Adding pass points
  • Automated passpoints generation
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