and its classification into the initial symbolic meaning
prevails. The figure movement parameters over time
are considered characteristic for a conveyed message
by gestures as part of nonverbal communication.
The idea is also to investigate how far methods of
image generation and visualisation (computer graphics
Ima can positively influence the results that can be
acchieved in the recognition field (computer vision
area). In order to point out these separate paths, this
paper splits into two major parts, a synthesis section
and an analysis section. In the first one an animation
tool for creating synthetic image sequences for the
application domain is described. It uses three different
model classes for the calculation of movement
trajectories. The second part deals with both state
estimation, which is explained in detail, and image
analysis (as a prerequisite for obtaining measurement
values).
1.3. System organization
The work that has been accomplished is reflected by
four coordinated partial process modules all being
implemented on a SGI graphics worksiation as a
simulation facility. Figure 2 gives an overview over the
main signal flow. Control values and sychronizing data
are exchanged by the UNIX message passing
mechanism.
real world
The first two processes serve as sources for pixel data:
An image sequence recall process is able to display
various stored CCD-camera images onto a screen for
purposes of testing image processing algorithms,
checking their robustness, and for preparing
applications outside the simulation environment.
Secondly, an animation process (described in the
synsthesis section) synthetically generates image
sequences with figures and background objects under
user control. It meets the requirements for handy test
signals, for having a performance measure for the
estimation procedure, and for obtaining multiple
training material for future classificators. Figure 3
gives an impression of used input images.
The next two modules belong to the analysis part of the
recognition task and are described in detail later in this
aper:
Tho image processing module is the mediator between
pixel source and state estimation and picks up screen
pixel data and searches for edges as basic image
features. It sends information marking search areas to
the imaging process and measurement values to the
state estimation. This module is the basis for early
recognition, proper initialization of state estimation
ang it supplies the necessary features for estimator
update.
The estimation process contains the generic models,
synchronizes and controls all other processes and may
receive reference values from the animation side.
movement
model
selection correction
dynamic
model
comparison
process prediction
model
geometric
object model
igeom. view- :
:ino model
Fig. 1: Signal relation and basic idea
signal flow
A » control flow