3D Shape Segmentation With Potential Consistency Mining and Enhancement | IEEE Journals & Magazine | IEEE Xplore

3D Shape Segmentation With Potential Consistency Mining and Enhancement


Abstract:

3D shape segmentation is a crucial task in the field of multimedia analysis and processing, and recent years have seen a surge in research on this topic. However, many ex...Show More

Abstract:

3D shape segmentation is a crucial task in the field of multimedia analysis and processing, and recent years have seen a surge in research on this topic. However, many existing methods only consider geometric features of 3D shapes and fail to explore the potential connections between faces, limiting their segmentation performance. In this paper, we propose a novel segmentation approach that mines and enhances the potential consistency of 3D shapes to overcome this limitation. The key idea is to mine the consistency between different partitions of 3D shapes and to use the unique consistency enhancement strategy to continuously optimize the consistency features for the network. Our method also includes a comprehensive set of network structures to mine and enhance consistent features, enabling more effective feature extraction and better utilization of contextual information around each face when processing complex shapes. We evaluate our approach on public benchmarks through extensive experiments and demonstrate its effectiveness in achieving higher accuracy than existing methods.
Published in: IEEE Transactions on Multimedia ( Volume: 27)
Page(s): 133 - 144
Date of Publication: 24 December 2024

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