Title :
A touch interface for soft data modeling in Bayesian estimation
Author :
Mehta, S.S. ; McCourt, Michael ; Doucette, E.A. ; Curtis, J.W.
Author_Institution :
Res. & Eng. Educ. Facility, Univ. of Florida, Shalimar, FL, USA
Abstract :
A novel approach for human-generated “soft information” modeling and Bayesian fusion using touch interface devices is presented. The human-generated soft information can be encoded using a combination of single, multiple, and overlapping strokes that represent arbitrary measurement likelihood functions which can be approximated using non-parametric density estimators. The proposed interface offers a flexible and natural medium to encode a large class of qualitatively distinct types of information for both positive and negative observations. The touch interface naturally provides robustness with respect to human variability in terms of psycho-physiological and environmental parameters without the need for offline training. An urban-target tracking example is provided to illustrate fusion of soft information (generated using the proposed soft sensor model) with measurements from traditional automated sensors.
Keywords :
Bayes methods; control engineering computing; nonparametric statistics; sensor fusion; target tracking; user interfaces; Bayesian estimation; Bayesian fusion; arbitrary measurement likelihood function; automated sensor; environmental parameter; human variability; human-generated soft information modeling; nonparametric density estimator; offline training; overlapping strokes; psycho-physiological parameter; robustness; soft data modeling; soft sensor model; touch interface devices; urban-target tracking example; Atmospheric measurements; Bayes methods; Density measurement; Observers; Particle measurements; Target tracking;
Conference_Titel :
Systems, Man and Cybernetics (SMC), 2014 IEEE International Conference on
Conference_Location :
San Diego, CA
DOI :
10.1109/SMC.2014.6974511