of the rotorcraft is at best a very demanding task and the pilot will need help from on-board automation tools in order to devote more time to mission-related.
N90-22238 Kalman
Filter
Based
Range
Estimation
for Autonomous
Banavar NASA Rotorcraft surrounding enemy.
operating terrain,
The piloting
on-board
environments
tool, which
The planning (Cheng
to devote
more
has the potential
of rotorcraft
low-altitude
and Sridhar,
1988).
resolution
information system
to modify
forward
looking
detection
to indicate
to assess
are detection There
using
the nominal infrared
are many
in the rotorcraft
involves
parameters
buildings,
sensor
methods.
computed
using
differential relative
an onboard
equations,
coordinates
translational
inertial
navigation
filter (Sridhar
and the Earth
coordinates
used in a predictive
mode
features
effort
extraction
in the feature
for different rotorcraft not, however, include results
obtained
restricted
to linear
wires
Initially,
motion
be evaluated generation
presented
The method further
the
problems
and near-field
and a nominal
and transmission
passive
the current using
rotational
system.
Given
and Phatak, of objects
imaging
sensors
for
for obstacle
avoidance
position.
a sequence
of images.
The approach
ways: (i) we do not attempt lies in recursive algorithms.
velocity
and attitude)
a sequence
of images,
using
The Kalman
to a significant
The performance
to The
are assumed
1988) can be used to estimate leading
This
such as
will be considered
rotorcraft
on the ground.
in the images,
towers.
into the navigation/guidance
(LLLTV)
of range
step of the algorithm.
the Kalman in order
of range
a simple produces using
the image
to real images during
recursive good range
several
part of the algorithm
filter for use with actual
to reduce
of this algorithm
to the estimation
We have images.
warn
image-object both the
filter
reduction
of three different
to be
can also be of search
Kalman
filters
maneuvers were examined in Sridhar and Phatak, 1988. This previous study did the processing of real images. The purpose of this paper is to summarize early
in extending
from the application proceeding
to track
planning
of goals
The two basic requirements
from
velocity,
a Kalman
path,
challenging
into far-field
and integrated
of the rotorcraft.
to the estimation
(position,
The development
flight
presents
the selection
used in this analysis differs from previous methods in two significant estimate the rotorcraft's motion from the images, and (ii) our interest rotorcraft
by the
is based on a priori information and requires a detailed for even the best surveyed landscape will not have
of the objects
approaches
to utilize detected
activities.
obstacles,
can be divided
such as trees,
of passive
estimation
Sensors
task and the pilot will need help from
and low-light-level-television
the limitation
and range
Imaging
surface
the risk of being
obstacles
detected
planning
an onboard
trajectory
(FLIR)
to the Earth's
to minimize
time to mission-related
missions
Far-field
objects
has to be acquired
fly close
to detect
trajectory between the goals. Far-field planning map of the local terrain. However, the database adequate
Center
objects
crew, and interact with the guidance system to avoid in control, computer vision and image understanding.
planning
Research
is at best a very demanding
tools in order
Using
Sridhar
Ames
or man-made
of the rotorcraft
automation
of an automation
in high-threat
vegetation,
Navigation
different requires
processing
image further
range
sequences
47
tests were
The experience
gained
step before
flight. to objects
using real images
refinement
These
and is a necessary
curvilinear
to estimate
estimates
sequences.
requirements.
is very valuable
low-altitude
method
image
using
in a laboratory
to test its robustness. on the strategies
a sequence
of
set up and needs The feature
to limit the number
of
to
features(SridharandPhatak,1989).The extensionof thework reported require
the use of the extended
The research technologies estimation
reported
in this paper
for the automation algorithms
autonomous
navigation
Kalman
discussed
is part of an ongoing
of rotorcraft
low-altitude
are quite general
of vehicles.
here to curvilinear
flight may
filter.
In addition
efforts to investigate field-based techniques Sridhar, 1989; Kendall and Jacobi, 1989).
effort
flight.
and have
at NASA
The object
potential
algorithms,
estimation
to develop
detection
applications
to these feature-based
for the same range
Ames
and range
in robotics there
applications
and
are parallel (Menon
and
References Cheng,
V. H. L., and Sridhar, B., Considerations American Control Conference, Atlanta,
Kendall,
W. B., and Jacobi, W. J., Passive Electro-Optical Sensor Processing Avoidance, NASA Contractor Report, Contract NAS2-12774, 1989.
Menon,
P. K., and Sridhar, Navigation
Sridhar,
B., Passive
and Control
B., and Phatak,
for Automated Nap-Of-The-Earth GA, June 15-17, 1988.
Navigation
Conference,
A. V., Simulation
Using
Boston,
Image
Irradiance
MA, August
and Analysis
B., and Phatak, Using Japan,
A. V., Kalman
Imaging Sensors, July 1989.
Filter
Xlth IFAC
Based
of Image-Based
Range
Symposium
48
Estimation
on Automatic
for Helicopter
Tracking,
A/AA
1988
Obstacle
Guidance,
1989.
Rotorcraft Low-Altitude Flight, American Helicopter Society Applications of Rotorcraft, Atlanta, GA, April 4-6, 1988. Sridhar,
Flight,
Navigation Meeting
for Autonomous Control
System
for
on Automation
Navigation
in Aerospace,
Tsukuba,