RESSCAL3D is a novel deep learning-based architecture that enables resolution-scalable 3D semantic segmentation of point clouds, allowing early decision-making and efficient processing of additional points as they become available.
Geometrically-driven aggregation of vision-language model representations can effectively improve the quality of zero-shot 3D point cloud understanding across various downstream tasks.
A novel probability-driven framework (PDF) that leverages probability outputs to identify unknown objects and incrementally expand the knowledge base for open world 3D point cloud semantic segmentation.
An unsupervised deep learning method that decomposes large-scale aerial 3D point clouds into a small set of learned prototypical 3D shapes, enabling interpretable reconstruction, semantic segmentation, and instance segmentation of complex real-world scenes.