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University of Cambridge > Talks.cam > Cambridge Centre for Analysis talks > Modelling Systems of Weakly Characterised Sensors
Modelling Systems of Weakly Characterised SensorsAdd to your list(s) Download to your calendar using vCal
If you have a question about this talk, please contact CCA. Industrial Seminar The modelling of the Automatic Target Detection, Recognition and Identification performance in systems of multiple sensors and/or platforms is important in several respects. For example, in the selection of sensors or sensor combinations of sufficient performance to achieve operational requirements or; for understanding how the system might be best exploited. To this end a simulation framework has been developed examining sensor options across different sensor types, parameterisations, search strategies, and applications. It uses Bayesian Decision Theoretic principles, along with simple sensor models and Monte-Carlo simulation, to derive the expected performance of single deployed sensors and of sensor combinations. The basic framework has been significantly extended to include recognition and identification problems along with the detection problem for which it was originally designed. The framework has also been expanded to treat cases in which the sensors are poorly characterised, and recommendations for parameterisation in this mode are made. This talk is part of the Cambridge Centre for Analysis talks series. This talk is included in these lists:
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