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MiKASA: Multi-Key-Anchor & Scene-Aware Transformer for 3D Visual Grounding

About

3D visual grounding involves matching natural language descriptions with their corresponding objects in 3D spaces. Existing methods often face challenges with accuracy in object recognition and struggle in interpreting complex linguistic queries, particularly with descriptions that involve multiple anchors or are view-dependent. In response, we present the MiKASA (Multi-Key-Anchor Scene-Aware) Transformer. Our novel end-to-end trained model integrates a self-attention-based scene-aware object encoder and an original multi-key-anchor technique, enhancing object recognition accuracy and the understanding of spatial relationships. Furthermore, MiKASA improves the explainability of decision-making, facilitating error diagnosis. Our model achieves the highest overall accuracy in the Referit3D challenge for both the Sr3D and Nr3D datasets, particularly excelling by a large margin in categories that require viewpoint-dependent descriptions.

Chun-Peng Chang, Shaoxiang Wang, Alain Pagani, Didier Stricker• 2024

Related benchmarks

TaskDatasetResultRank
3D Visual GroundingNr3D (test)
Overall Success Rate64.4
88
3D Visual GroundingSr3D (test)
Overall Accuracy75.2
73
3D Visual GroundingNr3D (val)
Easy Score69.7
13
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Code

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