论文标题
准平衡的自我训练在噪声吸引的综合对象点云的合成中,用于关闭域间隙
Quasi-Balanced Self-Training on Noise-Aware Synthesis of Object Point Clouds for Closing Domain Gap
论文作者
论文摘要
对象点云的语义分析在很大程度上是由释放基准数据集的驱动的,包括合成数据集的实例是从对象CAD模型中采样的。但是,从合成数据中学习可能不会推广到实际情况,在这种情况下,点云通常不完整,不均匀分布和嘈杂。可以通过学习域适应算法来减轻这种模拟对真实性(SIM2REAL)域间隙的挑战。但是,我们认为通过更现实的渲染来产生合成点云是一种强大的选择,因为可以捕获系统的非均匀噪声模式。为此,我们提出了一个集成方案,该方案是通过对对象点云进行物理逼真的综合,通过将斑点模式的投影渲染到CAD模型上,以及一种新型的准平衡自我训练,设计用于通过稀疏驱动的长期类型的样品,旨在通过稀疏驱动的样品进行更平衡的数据分布。实验结果可以验证我们方法的有效性及其两个模块,以适应点云分类,从而实现最新性能。源代码和SpeckLenet合成数据集可在https://github.com/gorilla-lab-scut/qs3上找到。
Semantic analyses of object point clouds are largely driven by releasing of benchmarking datasets, including synthetic ones whose instances are sampled from object CAD models. However, learning from synthetic data may not generalize to practical scenarios, where point clouds are typically incomplete, non-uniformly distributed, and noisy. Such a challenge of Simulation-to-Reality (Sim2Real) domain gap could be mitigated via learning algorithms of domain adaptation; however, we argue that generation of synthetic point clouds via more physically realistic rendering is a powerful alternative, as systematic non-uniform noise patterns can be captured. To this end, we propose an integrated scheme consisting of physically realistic synthesis of object point clouds via rendering stereo images via projection of speckle patterns onto CAD models and a novel quasi-balanced self-training designed for more balanced data distribution by sparsity-driven selection of pseudo labeled samples for long tailed classes. Experiment results can verify the effectiveness of our method as well as both of its modules for unsupervised domain adaptation on point cloud classification, achieving the state-of-the-art performance. Source codes and the SpeckleNet synthetic dataset are available at https://github.com/Gorilla-Lab-SCUT/QS3.