Example-Based Sketch Segmentation and Labeling Using CRFsOpen Website

2016 (modified: 04 Oct 2022)ACM Trans. Graph. 2016Readers: Everyone
Abstract: We introduce a new approach for segmentation and label transfer in sketches that substantially improves the state of the art. We build on successful techniques to find how likely each segment is to belong to a label, and use a Conditional Random Field to find the most probable global configuration. Our method is trained fully on the sketch domain, such that it can handle abstract sketches that are very far from 3D meshes. It also requires a small quantity of annotated data, which makes it easily adaptable to new datasets. The testing phase is completely automatic, and our performance is comparable to state-of-the-art methods that require manual tuning and a considerable amount of previous annotation [Huang et al. 2014].
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