Semantic Segmentation-Assisted Instance Feature Fusion for Multi-Level
3D Part Instance Segmentation
- URL: http://arxiv.org/abs/2208.04766v1
- Date: Tue, 9 Aug 2022 13:22:55 GMT
- Title: Semantic Segmentation-Assisted Instance Feature Fusion for Multi-Level
3D Part Instance Segmentation
- Authors: Chunyu Sun, Xin Tong, Yang Liu
- Abstract summary: We present a new method for 3D part instance segmentation.
Our method exploits semantic segmentation to fuse nonlocal instance features, such as center prediction.
Our method outperforms existing methods with a large-margin improvement in the PartNet benchmark.
- Score: 17.929866369256555
- License: http://creativecommons.org/licenses/by/4.0/
- Abstract: Recognizing 3D part instances from a 3D point cloud is crucial for 3D
structure and scene understanding. Several learning-based approaches use
semantic segmentation and instance center prediction as training tasks and fail
to further exploit the inherent relationship between shape semantics and part
instances. In this paper, we present a new method for 3D part instance
segmentation. Our method exploits semantic segmentation to fuse nonlocal
instance features, such as center prediction, and further enhances the fusion
scheme in a multi- and cross-level way. We also propose a semantic region
center prediction task to train and leverage the prediction results to improve
the clustering of instance points. Our method outperforms existing methods with
a large-margin improvement in the PartNet benchmark. We also demonstrate that
our feature fusion scheme can be applied to other existing methods to improve
their performance in indoor scene instance segmentation tasks.
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