Most recent 3D instance segmentation methods are open vocabulary, offering a greater flexibility than closedvocabulary methods. Yet, they are limited to reasoning within a specific set of concepts, i.e., the vocabulary, prompted by the user at test time. In essence, these models cannot reason in an open-ended fashion, i.e., answering “List the objects in the scene.” We introduce the first method to address 3D instance segmentation in a setting that is void of any vocabulary prior, namely a vocabularyfree setting. We leverage a large vision-language assistant and an open-vocabulary 2D instance segmenter to discover and ground semantic categories on the posed images. To form 3D instance masks, we first partition the input point cloud into dense superpoints, which are then merged into 3D instance masks. We propose a novel superpoint merging strategy via spectral clustering, accounting for both mask coherence and semantic coherence that are estimated from the 2D object instance masks. We evaluate our method using ScanNet200 and Replica, outperforming existing methods in both vocabulary-free and open-vocabulary settings.
Vocabulary-Free 3D Instance Segmentation with Vision-Language Assistant
Guofeng Mei
;Luigi Riz;Yiming Wang;Fabio Poiesi
2025-01-01
Abstract
Most recent 3D instance segmentation methods are open vocabulary, offering a greater flexibility than closedvocabulary methods. Yet, they are limited to reasoning within a specific set of concepts, i.e., the vocabulary, prompted by the user at test time. In essence, these models cannot reason in an open-ended fashion, i.e., answering “List the objects in the scene.” We introduce the first method to address 3D instance segmentation in a setting that is void of any vocabulary prior, namely a vocabularyfree setting. We leverage a large vision-language assistant and an open-vocabulary 2D instance segmenter to discover and ground semantic categories on the posed images. To form 3D instance masks, we first partition the input point cloud into dense superpoints, which are then merged into 3D instance masks. We propose a novel superpoint merging strategy via spectral clustering, accounting for both mask coherence and semantic coherence that are estimated from the 2D object instance masks. We evaluate our method using ScanNet200 and Replica, outperforming existing methods in both vocabulary-free and open-vocabulary settings.I documenti in IRIS sono protetti da copyright e tutti i diritti sono riservati, salvo diversa indicazione.
