The course introduces the key concepts related to information extraction from remote sensing images in the framework of disaster risk prevention and assessment. Basic knowledge will be provided about remote sensing image acquisition through passive sensors; land cover mapping through remote sensing image classification in the application to risk prevention; detection of ground changes from multitemporal remote sensing images in the application to damage assessment; and data representation in a geographic information system (GIS).
After the course, the student shall know the key concepts related to information extraction from remote sensing images in the framework of disaster risk prevention and assessment. He/she shall have and shall be able to apply, through dedicated software platforms, basic knowledge about: remote sensing images; land cover mapping through remote sensing image classification in the application to risk prevention; detection of ground changes from multitemporal remote sensing images in the application to damage assessment; bio/geophysical parameter estimation through regression from remote sensing data; and data representation in a geographic information system (GIS).
Class lectures (approximately 32 hours) and laboratory exercizes (approximately 8 hours). In relation to the COVID-19 pandemic and to the resulting travel restrictions and social distancing measures, classes will be given telematically and software exercizes will be organized online through the use of open software.
Ricevimento: By appointment
GABRIELE MOSER (President)
SILVANA DELLEPIANE
ALESSANDRO FEDELI
LUCA MAGGIOLO
MATTEO PASTORINO (President Substitute)
ANDREA RANDAZZO (President Substitute)
SEBASTIANO SERPICO (President Substitute)
https://courses.unige.it/10553/p/students-timetable
REMOTE SENSING OF NATURAL DISASTERS
Oral examination
Within the oral examination, the student's knowledge of the course topics and his/her capability to discuss how to address simple problems of remote sensing data analysis associated with disaster risk prevention and management shall be evaluated.