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End-to-End 3D Dense Captioning with Vote2Cap-DETR (2301.02508v1)

Published 6 Jan 2023 in cs.CV

Abstract: 3D dense captioning aims to generate multiple captions localized with their associated object regions. Existing methods follow a sophisticated ``detect-then-describe'' pipeline equipped with numerous hand-crafted components. However, these hand-crafted components would yield suboptimal performance given cluttered object spatial and class distributions among different scenes. In this paper, we propose a simple-yet-effective transformer framework Vote2Cap-DETR based on recent popular \textbf{DE}tection \textbf{TR}ansformer (DETR). Compared with prior arts, our framework has several appealing advantages: 1) Without resorting to numerous hand-crafted components, our method is based on a full transformer encoder-decoder architecture with a learnable vote query driven object decoder, and a caption decoder that produces the dense captions in a set-prediction manner. 2) In contrast to the two-stage scheme, our method can perform detection and captioning in one-stage. 3) Without bells and whistles, extensive experiments on two commonly used datasets, ScanRefer and Nr3D, demonstrate that our Vote2Cap-DETR surpasses current state-of-the-arts by 11.13\% and 7.11\% in [email protected], respectively. Codes will be released soon.

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Authors (6)
  1. Sijin Chen (12 papers)
  2. Hongyuan Zhu (36 papers)
  3. Xin Chen (457 papers)
  4. Yinjie Lei (30 papers)
  5. Tao Chen (397 papers)
  6. Gang Yu (114 papers)
Citations (35)

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