BEGIN:VCALENDAR
PRODID: University of Exeter
VERSION:2.0
BEGIN:VTIMEZONE
TZID:Europe/London
X-LIC-LOCATION:Europe/London
BEGIN:DAYLIGHT
TZOFFSETFROM:+0000
TZOFFSETTO:+0100
TZNAME:BST
DTSTART:20230420T000000
RRULE:FREQ=YEARLY;BYDAY=-1SU;BYMONTH=3
END:DAYLIGHT
BEGIN:STANDARD
TZOFFSETFROM:+0100
TZOFFSETTO:+0000
TZNAME:GMT
DTSTART:20230420T000000
RRULE:FREQ=YEARLY;BYDAY=-1SU;BYMONTH=10
END:STANDARD
END:VTIMEZONE
METHOD:PUBLISH
BEGIN:VEVENT
SUMMARY; CHARSET=UTF-8 :Machine Learning for Earth Observation with the Environmental Intelligence Network
UID:exeter_event_12691
URL:http://www.exeter.ac.uk/events/details/?event=12691
DTSTART;VALUE=DATE:20230420T000000
DTEND;VALUE=DATE:20230421T235900
X-MICROSOFT-CDO-ALLDAYEVENT:TRUE
ORGANIZER: MAILTO:
ATTACH: http://www.exeter.ac.uk/events/details/?event=12691
DTSTAMP:20230124T143145
LOCATION:Queens Building
DESCRIPTION; CHARSET=UTF-8 :Recent years have witnessed a dramatic increase in the acquisition of remote sensing observations from satellite, aircraft and drone-based sensors, and in-situ devices. Technological advances have led to improvements in measurement resolution and precision, which is shifting the paradigm of Earth observation from data scarcity to data abundance. While these data have enormous potential for helping us achieve a range of United Nations Sustainable Development Goals, identifying the optimal approaches for handling and analysing these large datasets remains a challenge for both academia and industry. Recent breakthroughs in AI/ML offers promising solutions to these challenges, including automated identification and extraction of key observations, predicting future trends, identifying key environment factors, and dealing with noisy signals under uncertainties.

http://www.exeter.ac.uk/events/details/?event=12691
SEQUENCE:0
PRIORITY:5
CLASS:
STATUS:CONFIRMED
TRANSP:TRANSPARENT
X-MICROSOFT-CDO-IMPORTANCE:1
X-Microsoft-CDO-BUSYSTATUS:FREE
X-MICROSOFT-CDO-INSTTYPE:0
X-Microsoft-CDO-INTENDEDSTATUS:FREE
END:VEVENT
END:VCALENDAR