Producing high-precision flood maps requires integrating and correctly classifying information coming from heterogeneous sources. Methods to perform such integration have to rely on different knowledge bases. A useful tool to perform this task consists in the use of Bayesian methods to assign probabilities to areas being subject to flood phenomena, fusing a priori information and modeling with data coming from radar or optical imagery. In this chapter we review the use of Bayesian networks, an elegant framework to cast probabilistic descriptions of complex systems, applied to flood monitoring from multi-sensor, multi-temporal remotely sensed and ancillary data.

Data Fusion Through Bayesian Methods for Flood Monitoring from Remotely Sensed Data / D’Addabbo, Annarita; Refice, Alberto; Capolongo, Domenico; Pasquariello, Guido; Manfreda, Salvatore. - (2018), pp. 181-208. [10.1007/978-3-319-63959-8_8]

Data Fusion Through Bayesian Methods for Flood Monitoring from Remotely Sensed Data

Manfreda, Salvatore
2018

Abstract

Producing high-precision flood maps requires integrating and correctly classifying information coming from heterogeneous sources. Methods to perform such integration have to rely on different knowledge bases. A useful tool to perform this task consists in the use of Bayesian methods to assign probabilities to areas being subject to flood phenomena, fusing a priori information and modeling with data coming from radar or optical imagery. In this chapter we review the use of Bayesian networks, an elegant framework to cast probabilistic descriptions of complex systems, applied to flood monitoring from multi-sensor, multi-temporal remotely sensed and ancillary data.
2018
978-3-319-63958-1
Data Fusion Through Bayesian Methods for Flood Monitoring from Remotely Sensed Data / D’Addabbo, Annarita; Refice, Alberto; Capolongo, Domenico; Pasquariello, Guido; Manfreda, Salvatore. - (2018), pp. 181-208. [10.1007/978-3-319-63959-8_8]
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Utilizza questo identificativo per citare o creare un link a questo documento: https://hdl.handle.net/11588/793299
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