Context sensing for context-aware HCI challenges traditional sensor fusion methods with its requirements for (1) adaptability to a constantly changing sensor suite and (2) sensing quality commensurate with human perception. We build this paper on two IMTC2002 papers, where the Dempster-Shafer "theory of evidence" was shown to be a practical approach to implementing the sensor fusion system architecture. The implementation example involved fusing video and audio sensors to find and track a meeting participant's focus-of-attention. An extended Dempster-Shafer approach, incorporating weights representative of sensor precision, was newly suggested. In the present paper we examine the weighting mechanism in more detail; especially as the key point of this paper, we further extend the weighting idea by allowing the sensor-reliability-based weights to change over time. We will show that our novel idea - in a manner resembling Kalman filtering remnance effects that allow the weights to evolve in response to the evolution of dynamic factors can improve sensor fusion accuracy as well as better handle the evolving environments in which the system operates.
[1]
Glenn Shafer,et al.
A Mathematical Theory of Evidence
,
2020,
A Mathematical Theory of Evidence.
[2]
Lawrence A. Klein,et al.
Sensor and Data Fusion Concepts and Applications
,
1993
.
[3]
J. Kacprzyk,et al.
Advances in the Dempster-Shafer theory of evidence
,
1994
.
[4]
Jie Yang,et al.
Sensor Fusion Using Dempster-Shafer Theory
,
2002
.
[5]
Alexander H. Waibel,et al.
Estimating focus of attention based on gaze and sound
,
2001,
PUI '01.
[6]
Mel Siegel,et al.
Sensor fusion for context understanding
,
2002,
IMTC/2002. Proceedings of the 19th IEEE Instrumentation and Measurement Technology Conference (IEEE Cat. No.00CH37276).