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Main Authors: Zheng, Henry, Shi, Hao, Peng, Qihang, Chng, Yong Xien, Huang, Rui, Weng, Yepeng, Shi, Zhongchao, Huang, Gao
Format: Preprint
Published: 2025
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Online Access:https://arxiv.org/abs/2505.04965
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author Zheng, Henry
Shi, Hao
Peng, Qihang
Chng, Yong Xien
Huang, Rui
Weng, Yepeng
Shi, Zhongchao
Huang, Gao
author_facet Zheng, Henry
Shi, Hao
Peng, Qihang
Chng, Yong Xien
Huang, Rui
Weng, Yepeng
Shi, Zhongchao
Huang, Gao
contents Enabling intelligent agents to comprehend and interact with 3D environments through natural language is crucial for advancing robotics and human-computer interaction. A fundamental task in this field is ego-centric 3D visual grounding, where agents locate target objects in real-world 3D spaces based on verbal descriptions. However, this task faces two significant challenges: (1) loss of fine-grained visual semantics due to sparse fusion of point clouds with ego-centric multi-view images, (2) limited textual semantic context due to arbitrary language descriptions. We propose DenseGrounding, a novel approach designed to address these issues by enhancing both visual and textual semantics. For visual features, we introduce the Hierarchical Scene Semantic Enhancer, which retains dense semantics by capturing fine-grained global scene features and facilitating cross-modal alignment. For text descriptions, we propose a Language Semantic Enhancer that leverages large language models to provide rich context and diverse language descriptions with additional context during model training. Extensive experiments show that DenseGrounding significantly outperforms existing methods in overall accuracy, with improvements of 5.81% and 7.56% when trained on the comprehensive full dataset and smaller mini subset, respectively, further advancing the SOTA in egocentric 3D visual grounding. Our method also achieves 1st place and receives the Innovation Award in the CVPR 2024 Autonomous Grand Challenge Multi-view 3D Visual Grounding Track, validating its effectiveness and robustness.
format Preprint
id arxiv_https___arxiv_org_abs_2505_04965
institution arXiv
publishDate 2025
record_format arxiv
spellingShingle DenseGrounding: Improving Dense Language-Vision Semantics for Ego-Centric 3D Visual Grounding
Zheng, Henry
Shi, Hao
Peng, Qihang
Chng, Yong Xien
Huang, Rui
Weng, Yepeng
Shi, Zhongchao
Huang, Gao
Computer Vision and Pattern Recognition
Enabling intelligent agents to comprehend and interact with 3D environments through natural language is crucial for advancing robotics and human-computer interaction. A fundamental task in this field is ego-centric 3D visual grounding, where agents locate target objects in real-world 3D spaces based on verbal descriptions. However, this task faces two significant challenges: (1) loss of fine-grained visual semantics due to sparse fusion of point clouds with ego-centric multi-view images, (2) limited textual semantic context due to arbitrary language descriptions. We propose DenseGrounding, a novel approach designed to address these issues by enhancing both visual and textual semantics. For visual features, we introduce the Hierarchical Scene Semantic Enhancer, which retains dense semantics by capturing fine-grained global scene features and facilitating cross-modal alignment. For text descriptions, we propose a Language Semantic Enhancer that leverages large language models to provide rich context and diverse language descriptions with additional context during model training. Extensive experiments show that DenseGrounding significantly outperforms existing methods in overall accuracy, with improvements of 5.81% and 7.56% when trained on the comprehensive full dataset and smaller mini subset, respectively, further advancing the SOTA in egocentric 3D visual grounding. Our method also achieves 1st place and receives the Innovation Award in the CVPR 2024 Autonomous Grand Challenge Multi-view 3D Visual Grounding Track, validating its effectiveness and robustness.
title DenseGrounding: Improving Dense Language-Vision Semantics for Ego-Centric 3D Visual Grounding
topic Computer Vision and Pattern Recognition
url https://arxiv.org/abs/2505.04965