Point-In-Context: Understanding Point Cloud via In-Context Learning
CoRR(2024)
摘要
With the emergence of large-scale models trained on diverse datasets,
in-context learning has emerged as a promising paradigm for multitasking,
notably in natural language processing and image processing. However, its
application in 3D point cloud tasks remains largely unexplored. In this work,
we introduce Point-In-Context (PIC), a novel framework for 3D point cloud
understanding via in-context learning. We address the technical challenge of
effectively extending masked point modeling to 3D point clouds by introducing a
Joint Sampling module and proposing a vanilla version of PIC called
Point-In-Context-Generalist (PIC-G). PIC-G is designed as a generalist model
for various 3D point cloud tasks, with inputs and outputs modeled as
coordinates. In this paradigm, the challenging segmentation task is achieved by
assigning label points with XYZ coordinates for each category; the final
prediction is then chosen based on the label point closest to the predictions.
To break the limitation by the fixed label-coordinate assignment, which has
poor generalization upon novel classes, we propose two novel training
strategies, In-Context Labeling and In-Context Enhancing, forming an extended
version of PIC named Point-In-Context-Segmenter (PIC-S), targeting improving
dynamic context labeling and model training. By utilizing dynamic in-context
labels and extra in-context pairs, PIC-S achieves enhanced performance and
generalization capability in and across part segmentation datasets. PIC is a
general framework so that other tasks or datasets can be seamlessly introduced
into our PIC through a unified data format. We conduct extensive experiments to
validate the versatility and adaptability of our proposed methods in handling a
wide range of tasks and segmenting multi-datasets. Our PIC-S is capable of
generalizing unseen datasets and performing novel part segmentation by
customizing prompts.
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