Due to its importance, video segmentation has regained interest recently. However, there is no common agreement about the necessary ingredients for best performance. This work contributes a thorough analysis of various within- and between-frame affinities suitable for video segmentation. Our results show that a frame-based superpixel segmentation combined with a few motion and appearance-based affinities are sufficient to obtain good video segmentation performance. A second contribution of the paper is the extension of [1] to include motion-cues, which makes the algorithm globally aware of motion, thus improving its performance for video sequences. Finally, we contribute an extension of an established image segmentation benchmark [1] to videos, allowing coarse-to-fine video segmentations and multiple human annotations. Our results are tested on BMDS [2], and compared to existing methods.

Video segmentation with superpixels / Galasso, F; Cipolla, R; Schiele, B. - 7724:1(2013), pp. 760-774. (Intervento presentato al convegno Asian Conference on Computer Vision tenutosi a Daejeon; South Korea) [10.1007/978-3-642-37331-2_57].

Video segmentation with superpixels

Galasso F
Primo
;
2013

Abstract

Due to its importance, video segmentation has regained interest recently. However, there is no common agreement about the necessary ingredients for best performance. This work contributes a thorough analysis of various within- and between-frame affinities suitable for video segmentation. Our results show that a frame-based superpixel segmentation combined with a few motion and appearance-based affinities are sufficient to obtain good video segmentation performance. A second contribution of the paper is the extension of [1] to include motion-cues, which makes the algorithm globally aware of motion, thus improving its performance for video sequences. Finally, we contribute an extension of an established image segmentation benchmark [1] to videos, allowing coarse-to-fine video segmentations and multiple human annotations. Our results are tested on BMDS [2], and compared to existing methods.
2013
Asian Conference on Computer Vision
computer vision; machine learning; video segmentation
04 Pubblicazione in atti di convegno::04b Atto di convegno in volume
Video segmentation with superpixels / Galasso, F; Cipolla, R; Schiele, B. - 7724:1(2013), pp. 760-774. (Intervento presentato al convegno Asian Conference on Computer Vision tenutosi a Daejeon; South Korea) [10.1007/978-3-642-37331-2_57].
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Utilizza questo identificativo per citare o creare un link a questo documento: https://hdl.handle.net/11573/1317744
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