资源论文Co-Segmentation of Textured 3D Shapes with Sparse Annotations

Co-Segmentation of Textured 3D Shapes with Sparse Annotations

2019-12-13 | |  45 |   38 |   0

Abstract

We present a novel co-segmentation method for textured 3D shapes. Our algorithm takes a collection of textured shapes belonging to the same category and sparse annotations of foreground segments, and produces a joint dense segmentation of the shapes in the collection. We model the segments by a collectively trained Gaussian mixture model. The final model segmentation is formulated as an energy minimization across all models jointly, where intra-model edges control the smoothness and separation of model seg-ments, and inter-model edges impart global consistency. We show promising results on two large real-world datasets, and also compare with previous shape-only 3D segmentation methods using publicly available datasets.

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