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Language-Assisted 3D Feature Learning for Semantic Scene Understanding

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arxiv 2211.14091 v2 pith:5JW2ZOPU submitted 2022-11-25 cs.CV

Language-Assisted 3D Feature Learning for Semantic Scene Understanding

classification cs.CV
keywords scenefeaturelearningunderstandingattributeslanguage-assistedobjecttasks
verification ladder T0 review T1 audit T2 compute T3 formal T4 reserved
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Learning descriptive 3D features is crucial for understanding 3D scenes with diverse objects and complex structures. However, it is usually unknown whether important geometric attributes and scene context obtain enough emphasis in an end-to-end trained 3D scene understanding network. To guide 3D feature learning toward important geometric attributes and scene context, we explore the help of textual scene descriptions. Given some free-form descriptions paired with 3D scenes, we extract the knowledge regarding the object relationships and object attributes. We then inject the knowledge to 3D feature learning through three classification-based auxiliary tasks. This language-assisted training can be combined with modern object detection and instance segmentation methods to promote 3D semantic scene understanding, especially in a label-deficient regime. Moreover, the 3D feature learned with language assistance is better aligned with the language features, which can benefit various 3D-language multimodal tasks. Experiments on several benchmarks of 3D-only and 3D-language tasks demonstrate the effectiveness of our language-assisted 3D feature learning. Code is available at https://github.com/Asterisci/Language-Assisted-3D.

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