PointMamba, a state space model-based framework, achieves global modeling with linear complexity for point cloud analysis tasks.
The authors propose a novel two-stage training strategy that leverages cross-sample and intra-sample feature reallocation to densely propagate supervision signals from a small portion of labeled points to the unlabeled points, enabling weakly supervised semantic segmentation on 3D point clouds.
A novel meta-episodic learning framework with dynamic task sampling is proposed to effectively encode unknown generalized class information into CLIP-based point cloud classification models, enabling improved performance on challenging and underrepresented classes.
A kernel-based method is proposed to construct signature (defining) functions of subsets of Rd, ranging from full dimensional manifolds to point clouds. The signature function can be used to estimate the dimension, normal, and curvatures of the interpolated surface, without requiring explicit knowledge of local neighborhoods or other data structure.