cs.AI updates on arXiv.org 09月08日
ModelNet-R:提升3D点云分类模型效率
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本文提出ModelNet-R,解决ModelNet40数据集的问题,并引入Point-SkipNet提升分类准确度。实验证明ModelNet-R显著提高模型性能,Point-SkipNet在ModelNet-R上取得最佳结果。

arXiv:2509.05198v1 Announce Type: cross Abstract: The classification of 3D point clouds is crucial for applications such as autonomous driving, robotics, and augmented reality. However, the commonly used ModelNet40 dataset suffers from limitations such as inconsistent labeling, 2D data, size mismatches, and inadequate class differentiation, which hinder model performance. This paper introduces ModelNet-R, a meticulously refined version of ModelNet40 designed to address these issues and serve as a more reliable benchmark. Additionally, this paper proposes Point-SkipNet, a lightweight graph-based neural network that leverages efficient sampling, neighborhood grouping, and skip connections to achieve high classification accuracy with reduced computational overhead. Extensive experiments demonstrate that models trained in ModelNet-R exhibit significant performance improvements. Notably, Point-SkipNet achieves state-of-the-art accuracy on ModelNet-R with a substantially lower parameter count compared to contemporary models. This research highlights the crucial role of dataset quality in optimizing model efficiency for 3D point cloud classification. For more details, see the code at: https://github.com/m-saeid/ModeNetR_PointSkipNet.

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3D点云 ModelNet-R 分类模型 Point-SkipNet 性能提升
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