3DJCG: A Unified Framework for Joint Dense Captioning and Visual Grounding on 3D Point Clouds

Daigang Cai, Lichen Zhao, Jing Zhang, Lu Sheng, Dong Xu
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引用次数: 38

Abstract

Observing that the 3D captioning task and the 3D grounding task contain both shared and complementary information in nature, in this work, we propose a unified framework to jointly solve these two distinct but closely related tasks in a synergistic fashion, which consists of both shared task-agnostic modules and lightweight task-specific modules. On one hand, the shared task-agnostic modules aim to learn precise locations of objects, fine-grained attribute features to characterize different objects, and complex relations between objects, which benefit both captioning and visual grounding. On the other hand, by casting each of the two tasks as the proxy task of another one, the lightweight task-specific modules solve the captioning task and the grounding task respectively. Extensive experiments and ablation study on three 3D vision and language datasets demonstrate that our joint training frame-work achieves significant performance gains for each individual task and finally improves the state-of-the-art performance for both captioning and grounding tasks.
三维点云的联合密集字幕和视觉接地的统一框架
鉴于三维字幕任务和三维接地任务在本质上既包含共享信息,又包含互补信息,在本工作中,我们提出了一个统一的框架,以协同方式共同解决这两个不同但密切相关的任务,该框架由共享任务不可知模块和轻量级任务特定模块组成。一方面,共享任务不可知模块旨在学习物体的精确位置、细粒度属性特征以表征不同物体,以及物体之间的复杂关系,这有利于字幕和视觉基础。另一方面,通过将这两个任务转换为另一个任务的代理任务,轻量级的特定任务模块分别解决了字幕任务和接地任务。在三个3D视觉和语言数据集上进行的大量实验和研究表明,我们的联合训练框架在每个单独的任务上都取得了显著的性能提升,并最终提高了字幕和基础任务的最先进性能。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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