Title: P1252428721XqySY
1 Integrated GPS/INS System in Support of Direct
Geo-referencing Dorota A. Grejner-Brzezinska Ci
vil and Environmental Engineering and Geodetic
Science The Ohio State University 470 Hitchcock
Hall Columbus, OH 43210 Tel. (614)
292-8787 E-mail dorota_at_cfm.ohio-state.edu
2Presentation outline
- Direct georeferencing concept
- GPS/INS integration for positioning and
orientation - INS component
- GPS component
- Primary integration architectures
- Summary
3Georeferencing the Concept (1)
- Sensor orientation, also called image
georeferencing, is defined by a transformation
between the image coordinates specified in the
camera frame and the geodetic (mapping) reference
frame. - requires knowledge of the camera interior and
exterior orientation parameters (EOP) - interior orientation principal point
coordinates, focal length, and lens geometric
distortion are provided by the camera calibration
procedure - exterior orientation spatial coordinates of the
perspective center, and three rotation angles
known as ?, ?, and ?
4Georeferencing the Concept (2)
- Traditional aerial surveying
- EOP determined from the aerotriangulation,
defining correlation between ground control
points and their corresponding image
representations - requires scene pre-targeting
- high cost
- labor intensive
5Georeferencing the Concept (3)
- Modern aerial surveying
- EOP determined directly from integrated sensors
such as GPS/INS or GPS antenna array - no scene pre-targeting (no ground control,
except for GPS base station) - no aerotriangulation
- low cost
- allows automation of the data image processing
6Automation of Aerial Survey
- System augmentation by an inertial sensor offers
a number of advantages over a stand-alone GPS - immunity to GPS outages
- continuous attitude solution
- reduced ambiguity search volume/time
- high accuracy and stability over time
contributed by GPS, enabling a continuous
monitoring of inertial sensor errors - Result ? direct platform orientation
(geo-referencing)
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8Direct Geo-referencing
- Increased interest in the aerial survey and
remote sensing community - need to accommodate the new spatial data sensors
(LIDAR, SAR, multi/hyperspectral) - cost reduction of aerial mapping
- decreased need for control points
- maturity and cost-effectiveness of GPS/INS
systems - GPS multi-antenna systems for less demanding
applications - GPS/INS systems available
- experimental - University of Calgary, Center for
Mapping OSU - commercial - Applanix
9Direct Orientation Airborne System
INS Position Attitude (x, y, z) and (?, ?, ?)
GPS Position Time (x, y, z)
Imaging Stereo Digital Images
Digital Elevation Model
Digital Orthophoto
Hypsography Hydrography
Topography
10Direct Orientation Land-based System
11- For precise spatial positioning
12Direct Orientation Land-based System
13Direct Orientation Airborne System
GPS Antenna
INS
PC
Two Base Stations
Camera
GPS Receiver
14Direct Georeferencing
YBINS
XBINS
XC
YC
ZBINS
ZM
rM,INS
rm,i,j
- 3D INS coordinates in mapping frame
- 3D object coordinates in model frame (derived
from i,j stereo pair) attached to C-frame - 3D coordinates of point k in M-frame
- boresight matrix between INS body frame and
camera frame C - rotation matrix between INS body frame and
mapping frame M, measured by INS - boresight offset components
- scaling factor
rM,INS rm,i,j rM,k
YM
rM,k
XM
s
15GPS/INS Integration for Direct Orientation
(direct geo-referencing) of the Imaging Component
16Principles of Inertial Navigation
- Principles defined in the i-frame (inertial)
- Real time indication of position and velocity of
a moving vehicle using sensors that react on the
basis of Newtons laws of motion - these sensors are called Inertial Measurement
Units (IMU) - accelerometers
- sense linear acceleration in inertial frame
- does not sense the presence of a gravitational
field - gyroscopes (sense rotational motion)
- facilitate the rotation between navigation and
INS body frames (in fact rotation with respect to
the inertial frame is measured) - Integration with respect to time of the sensed
acceleration to obtain velocity, and subsequent
integration to obtain position
17Coordinate Frame Geometry
18Inertial Navigation System (INS)
- Provides self-contained independent means for
3-D positioning - Three gyros and three accelerometers (or less)
- Accuracy degrades exponentially with time due to
unbounded positioning errors caused by - uncompensated gyro errors
- uncompensated accelerometer errors
- fast degradation for low cost INS
- High update rate (up to 256 Hz)
- Mechanical (stabilized platform) systems
- sense acceleration in inertial frame
coordinatized in navigation frame - Strapdown systems (digital)
- sense acceleration in inertial frame
coordinatized in body frame
19INS LN-100 Body Axes
20Primary Error Sources
- The main sources of errors in an inertial
navigation are due to the following factors - The time rates of change of the velocity errors
are driven chiefly by accelerometer errors and
gravity anomalies - The attitude error rates are driven primarily by
gyroscope errors - Three basic classes of errors
- physical component error deviation of inertial
sensors from their design behavior (drifts, bias,
scaling factors) - construction errors errors in overall system
construction such as mechanical alignment errors - initial conditions errors that arise from
imperfect determination of the initial position
error, initial velocity error, and initial
platform misalignment
21Comparison of GPS and INS Free Navigation
Trajectories (Road Test)
22Strapdown INS
- Strapdown system algorithms are the mathematical
definitions of processes, which convert the
measured outputs of IMUs that are fixed to the
vehicle body axis, into quantities that can be
used to control the vehicle (attitude, velocity
and positions) - The outputs are angular rates and linear
velocities along the orthogonal axes - The measured angular rates are converted into
changes in attitude of the vehicle with respect
to its initial orientation - The resulting attitude transformation matrix is
used to convert the measured velocities from body
axes to the reference coordinate system - The major algorithms are
- Start-up
- Initialization
- Generation of the transformation algorithm
- Navigation
23Strapdown INS
- Start-up
- the operational readiness is determined
immediately after the power is turned on, by
buit-in stimuli-response go/no go tests - this tests isolate system faults to a single
gyro or accelerometer or control electronics - Initialization
- as a dead reckoning device, it INS must know the
initial conditions of the position and velocity
from the external source - direction of the initial velocity vector is
determined by the process of alignment - may include self-calibration
24Initial Alignment
- Process of initially locating the sensitive axes
of the accelerometers with respect to the
reference or navigation coordinate system axes
(transformation matrix) - can be autonomous (without recourse to other
equipment) - self-leveling in the stationary mode it is
accomplished by initial computation of the
direction cosine transformation matrix to
force the transformed velocity to have zero
components in the horizontal reference directions - gyrocompassing closed-loop process of locating
true North by computing heading as an element of
the transformation matrix that has been initially
leveled (analogous to torquing the gimbals until
the East gyro angular rate measurement is nulled) - can measure total drift rate about the vertical
axes by recursive solution (self-calibration) - or slaved (by matching the starpdown system
outputs to some external system
25Strapdown INS Alignment
- Coarse Alignment
- For stationary system utilizes the gravity and
earth rotation vectors as well as accelerometer
and gyro outputs to determine the initial
estimate of the transformation matrix (no sensor
errors assumed)
26Coarse Self-Alignment Using Analytic Alignment
Scheme
Determination of pitch angle q and the roll
angle f
time interval D T
Determination of azimuth angle y
27Strapdown INS Alignment
- Self-Corrective Alignment
- because an initial estimate of the
transformation matrix is available from the
initial (coarse) alignment, the misalignment
between the body and navigation frames can be
modeled as a small angle rotation - the updating method consists of detecting error
angles between these two frames via the processed
accelerometer and gyro signals and generating a
signal to the transformation computer in order to
drive these angles as close to zero as possible - at the same time compensation is provided for
the disturbance angular vibration
28Alignment (Optimal Estimator)
n
n
D
V
D
V
ib
nb
n
Known Velocity
C
_
b
_
_
b
D
q
nb
_
_
_
29Attitude Determination
- Euler method
- heading,pitch and roll, not suitable for
strapdown system because the differential
equations for their propagation contain
trigonometric terms with singularities - nonlinear differential equations
- Direction cosine method (DCM)
- differential equations for DCM propagation are
linear and very simple - the main disadvantage of DCM is that it has too
many elements to be integrated - computational burden
- Quaternion method
30Attitude Determination
- Quaternion method
- quaternion Q is a quadruple of real numbers, Q
q0q1iq2jq3k that evolve in accordance with a
simple differential equation and are only one
more in number than the minimum number required - three components define the axis of rotation,
the fourth one the amount of rotation - numerically stable characteristics
- can be converted to direction cosines and Euler
angles - preferred for strapdown systems
?b, ?n are skew-symmetric matrices containing the
rotation rates of the body-fixed frame w.r.t.
inertial frame in body-fixed coordinates
31Rotation Axis of Vector about which System a is
Rotated in Order to Coordinate with System b
32Error Sources in Numerical Solution (critical
for updating transformation matrix)
- Commutation errors
- result from fixed-sequence numerical processing
in the strapdown algorithm - can be minimized by increasing the update rate
- Integration errors
- due to discrete approximate solution of a
continuous process - can be minimized by implementing sophisticated
algorithms and increasing the update rate - Round-off errors
- due to finite resolution of data
- can be minimized by using double precision for
critical operations - Quantization errors
- analog-to-digital conversion of sensor measured
outputs - can be minimized by increased storage hardware
and mathematical modeling
33Navigation Equations
- A general navigation equation that describes the
motion of a point mass over the surface of the
earth
f - acceleration due to applied force sensed by
accelerometer g(r) - gravitational acceleration r
geocentric vector of vehicle position v(t)
velocity of the vehicle relative to the earth
defined in the navigation system
- earth rotation vector
- angular rate of the navigation frame relative
to the earth
34Navigation Equations (cont)
- the Earths rotation rate L is the geodetic
latitude, and l is the longitude.
- the direction cosine matrix from body-fixed
coordinates (b-frame) to navigation coordinates
(n-frame)
- the superscript n means a vector is
coordinated in the n-frame
35Strapdown Inertial Mechanization
Position Velocity
n
n
D
V
D
V
ib
nb
Body-Mounted Accelerometers
n
C
b
_
Gravity Computation
Transformation Matrix Computation
Attitude
Euler Angle Computation
b
D
q
nb
b
Earth and Vehicle Rate Computation
b
D
q
D
q
ib
Body-Mounted Gyroscopes
in
_
b
D
V
Delta velocity from accelerometers
ib
b
Dq
Delta q from gyros (angular rates)
ib
n
C
Direction cosine matrix from b-frame to n-frame
b
36Why GPS/INS Integration?
- GPS and INS have complementary operational
characteristics - GPS contributes its white error spectrum, high
accuracy and stability over time, enabling a
continuous monitoring of inertial sensor errors - Calibrated INS offers high short-term accuracy
and high sampling rate - INS is self-contained no outages
- GPS/INS offers a number of advantages over a
stand-alone GPS - immunity to GPS outages and reduced ambiguity
search volume/time for the closed-loop systems - and more importantly, continuous attitude
solution - Implementation of a closed-loop error
calibration allows continuous, on-the-fly (OTF)
error update bounding INS errors, leading to
increased estimation accuracy - Two primary integration modes
- Loose coupling
- Tight coupling (closed-loop)
37GPS/INS Integration
- Limitations
- High cost of high quality INS
- Mission objectives (what INS is needed and what
can be afforded) - How complex is the integration scheme required
to achieve the emission objectives
38GPS/INS Integration
- Loosely coupled mode
- Separate filter to process GPS data
- IMU measurements are processed by inertial
navigation and attitude algorithms to give
inertial position, velocity, and attitude
solution - An integrated Kalman filter is then applied to
combine the GPS and inertial solutions - The main disadvantage positioning must be
performed on the basis of IMU measurements alone
when the number of tracked GPS satellites drops
below four
39GPS/INS Integration
- Tightly coupled mode
- A single Kalman filter is designed to process
both sets of sensor data raw GPS observations
and IMU measurements - OTF IMU error calibration by a feedback loop
- Allows use of GPS measurements from less than
four satellites - High accuracy of the inertial system over short
periods of time allows correction of undetected
cycle slips affecting GPS measurements - Makes it possible to perform a faster and more
robust OTF ambiguity resolution - Offers a possibility to support GPS tracking
loop by a direct feedback from the integrated
filter to maintain tracking during high dynamics - Offers superior performance compared to loosely
coupled mode
40Computation Diagram for Loosely Integrated
GPS/INS System
CONTROL.DAT
41Architecture of Tightly Integrated GPS/INS System
42Summary Major Components of Integration
Algorithm and Filter Design
- Choice of coupling mode
- Number of states that should be estimated
- Whole-value filter states vs error states
- How often should the filter be updated
- How should the correlated measurements be
treated - How to reduce the computational burden by proper
exploitation of the sparseness of the dynamics
matrix - How can the filter be used to detect the GPS or
INS failure - How can filter be made robust against varying
error characteristics of INS or GPS
43Kalman Filter Model A using Linear INS Error
Model
INS Psi-Angle Error Model
- ?v, ?r, and ?? are the velocity, position, and
attitude error vectors respectively - is the accelerometer error vector
- ?g is the error in the computed gravity vector
- ? is the gyro drift vector.
- subscript b stands for bias
- subscript f stands for scaling factor
Example 24 INS States
44Kalman Filter Model BUsing Nonlinear State
Equation
Nonlinear State Equation
- v, r, and q are the velocity, position, and
quaternion (associated with attitude
determination) components - subscript b stands for bias
- subscript f stands for scaling factor
Example 25 INS States