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Learning to Focus and Track Extreme Climate Events
2019
British Machine Vision Conference
This paper tackles the task of extreme climate event tracking. It has unique challenges compared to other visual object tracking problems, including a wider range of spatio-temporal dynamics, the unclear boundary of the target, and the shortage of a labeled dataset. We propose a simple but robust end-to-end model based on multi-layered ConvLSTMs, suitable for climate event tracking. It first learns to imprint the location and the appearance of the target at the first frame in an auto-encoding
dblp:conf/bmvc/KimPCLLKPC19
fatcat:c5vwzjhrynfqrmwhuufhjcaase