球面分形卷积神经网络在点云识别中的应用

Yongming Rao, Jiwen Lu, Jie Zhou
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引用次数: 122

摘要

提出了一种通用的、灵活的、基于球对称的三维旋转不变性点云识别框架。通过引入规则的二十面体晶格及其分形来逼近和离散球体,可以方便地实现对三维点的卷积处理。基于分形结构,提出了一种分层特征学习框架和自适应球面投影模块,实现了端到端的深度特征学习。我们的框架不仅继承了卷积神经网络用于图像识别的强大表示能力和泛化能力,而且扩展了CNN学习抗旋转和扰动的鲁棒特征。该模型具有良好的鲁棒性和有效性。综合实验研究表明,我们的方法在三维物体分类和零件分割任务上都可以取得与现有技术相比具有竞争力的性能,同时在旋转三维物体分类和检索任务上也大大优于其他旋转不变量模型。
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Spherical Fractal Convolutional Neural Networks for Point Cloud Recognition
We present a generic, flexible and 3D rotation invariant framework based on spherical symmetry for point cloud recognition. By introducing regular icosahedral lattice and its fractals to approximate and discretize sphere, convolution can be easily implemented to process 3D points. Based on the fractal structure, a hierarchical feature learning framework together with an adaptive sphere projection module is proposed to learn deep feature in an end-to-end manner. Our framework not only inherits the strong representation power and generalization capability from convolutional neural networks for image recognition, but also extends CNN to learn robust feature resistant to rotations and perturbations. The proposed model is effective yet robust. Comprehensive experimental study demonstrates that our approach can achieve competitive performance compared to state-of-the-art techniques on both 3D object classification and part segmentation tasks, meanwhile, outperform other rotation invariant models on rotated 3D object classification and retrieval tasks by a large margin.
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