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Lp-TV model for structure extraction with end-to-end contour learning

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dc.creator Song, Chunwei
dc.creator Maiseli, Baraka J.
dc.creator Zuo, Wangmeng
dc.creator Gao, Huijun
dc.date 2019-05-05T11:42:07Z
dc.date 2019-05-05T11:42:07Z
dc.date 2017
dc.date.accessioned 2021-05-03T13:17:00Z
dc.date.available 2021-05-03T13:17:00Z
dc.identifier 978-1-5386-1127-2
dc.identifier http://hdl.handle.net/20.500.11810/5196
dc.identifier 10.1109/IECON.2017.8217241
dc.identifier.uri http://hdl.handle.net/20.500.11810/5196
dc.description Structure extraction is important for human perception. However, for various textured images, computers can hardly achieve this goal. Despite a plethora of studies to address the challenge, results from most previous methods contain unwanted artifacts and over-smoothed structures. Therefore, to address the weaknesses, we have proposed a variational model with end-to-end contour learning capability. Our formulation dwells in two observations: likelihood for representation of residual textures may be well abstracted using super Gaussian distribution, and edge metrics with semantic meaning may benefit structure preservation. The augmented Lagrangian method is adopted for optimal computation. Compared with classical approaches, our method offers a higher performance in structure extraction, including situations where the images have significant nonuniformity of the scale features.
dc.language en
dc.publisher IEEE
dc.subject Image edge detection
dc.subject Computational modeling
dc.subject TV
dc.subject Semantics
dc.subject Gaussian distribution
dc.subject Mathematical model
dc.subject Adaptation models
dc.title Lp-TV model for structure extraction with end-to-end contour learning
dc.type Conference Paper


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