4.4 Interface
The interface of the MARTA “Context evaluator”
system has the following methods to change the
state of a sensor and to retrieve information from it:
mGetContext(): return a vector of values that
contains information about the actual state of the
actors.
mGetResumeContext(): return a context of the
vehicle determined by an integer, where:
0–> ignition off, 1–>ignition on (car stopped), 2–>
favourable, 3 –> risky, 4 –> critical;
mReset(): assign the state Id=“999” to all actors,
resetting all machines states.
mSetSensor(int IdSensor, int Level): assign a
specific level (Level) to a sensor (IdSensor).
5 CONCLUSIONS
The main conclusions which could be mentioned
related to this work, the concept of “Context
evaluation”, the necessity for new HMI for cars, and
specially when it is applied the multimodality are the
followings:
Developments in recent years in the field of
electronics and applications in the automotive sector
have made it possible to integrate within vehicles
new technologies (mobile phones, GPS or ADAS).
The quantity of information for the vehicle driver
is increasing due to new applications and
functionalities are being added to cars.
Much information can have a strong negative
influence in terms of decreasing safety.
Consequently, there is an increasing demand for
more efficient control architectures and
technologies, especially for managing the data
provided to the driver by the HMI in order to not
disturb him from driving.
Tecnalia propose a particular methodology and
the corresponding “Context Model” solution,
oriented to evaluating the context and help on taking
decisions about “what data” to show, “where”, and
“when”, taking two essential concepts into account:
Multimodality and Ambient Intelligence.
Tecnalia “Context model” methodology is based
on four steps oriented to preparing a model capable
of reporting on any given occasion summarised
information to help with the taking of decisions
related to the vehicle HMI: Actors’ definition,
Sensors selection and grouping, Machine States
design, and Summarized states definition.
ACKNOWLEDGEMENTS
All activities reported in this paper have been
collected from tasks carried out within two R&D
projects supported by “Ministerio de Industria,
Turismo y Comercio” of Spain: MIDAS (TSI-
020400-2008-26) and MARTA (CENIT).
REFERENCES
David J. Wheatley, Joshua B. Hurwitz. The use of a multi-
modal interface to integrate in-vehicle information
presentation. User Centered Research, Motorola Labs,
Schaumburg, Illinois, USA, 2001.
Roberto Pieraccini, Krishna Dayanidhi, Jonathan Bloom,
Jean-Gui Dahan, Michael Phillips, Bryan R.
Goodman, K. Venkatesh Prasad. A Multimodal
Conversational Interface for a Concept Vehicle. The
Id: Graduate Faculty, Psychology Society Bulletin,
Volume 1, Nº1, 2003.
Gregor McGlaun, Frank Althoff, Hans-Wilhelm Ruhl,
Michael Alger, Manfred Lang. A Generic Operation
Concept for an Ergonomic Speech MMI Under Fixed
Constraints in The Automotive Environment. Institute
for Human-Machine Communication, Technical
University of Munich.
Alfonso Ortega, Federico Sukno, Eduardo Lleida,
Alejandro Frangi, Antonio Miguel, Luis Buera,
Ernesto Zacur. AV@CAR: A Spanish Multichannel
Multimodal Corpus for In Vehicle Automatic Audio-
Visual Speech Recognition. Communication
Technologies Group and Computer Vision Group,
Aragon Institute of Engineering Research (I3A),
University of Zaragoza, Spain, 2004.
Kai Richter, Michael Hellenschmidt. Interacting with the
Ambience: Multimodal Interaction and Ambient
Intelligence. Position Paper to the W3C Workshop on
Multimodal Interaction, 19-20 July 2004.
Fabio Paternò. Multimodality and Multi-device Interfaces.
ISTI-CNR, Pisa, Italy, 2004.
Frank Althoff, Gregor McGlaun, Manfred Lang, Gerhard
Rigol. Comparing an Innovative 3D and a Standard
2D User Interface for Automotive Infotainment
Applications. Institute for Human-Machine
Communication, Technical University of Munich.
2003.
Murgoitio J, Fernández JI. Car driver monitoring by
networking vital data. Advanced Microsystems for
automotive applications, AMAA 2008; 37-48.
Sanchez Pons Francisco, Sanchez Fernadez David, Saez
Tort Marga, Gonzalez Garcia Pilar, Robleda
Rodriguez Ana Belen. Data Fusion Strategies for Next
Generation ADAS: Towards Full Collision Avoidance.
FISITA 2010, 30 May-4 July 2010.
ICAART 2011 - 3rd International Conference on Agents and Artificial Intelligence
622