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Data fusion in robotics and machine intelligence

Mongi A. Abidi, R. C. Gonzalez

Year
1992
Citations
448

Abstract

Data fusion and sensor integration - state-of-the-art 1990s, R.C. Luo and M.G. Gay multi-source spatial fusion using Bayesian reasoning, A. Elfes multi-sensor strategies using Dempster/Shafer belief accumulation, S.A. Hutchinson and A.C. Kak data fusion techniques using robust statistics, R. McKendall and M. Mintz recursive fusion operators - desirable properties and illustrations, Y. Chen and R.L. Kashyap distributed data fusion using Kalman filtering - a robotics application, C. Brown, et al kinematic and satistical models for data fusion using Kalman filtering, T.J. Broida and S.S. Blackman least-squares fusion of multi-sensory data, R.O. Eason and R.C. Gonzalez fusion of multi-dimensional data using regularization, M.A. Abidi geometric fusion - minimizing uncertainty ellipsoid volumes, Y. Nakamura combination of fuzzy information in the framework of possibility theory, D. Dubois and H. Prade data fusion - a neural networks implementation, T.L. Huntsberger.

Keywords

Sensor fusionArtificial intelligenceEllipsoidKalman filterFusionFuzzy logicComputer scienceMathematicsPattern recognition (psychology)Machine learning

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