3D Feature Distillation with Object-Centric Priors
Georgios Tziafas, Yucheng Xu, Zhibin Li, Hamidreza Kasaei

TL;DR
This paper introduces a novel object-centric multi-view feature fusion method for 3D grounding that improves spatial consistency and generalizes from single-view RGB-D data, benefiting robotic manipulation tasks.
Contribution
It proposes a multi-view feature fusion strategy using object priors and generates a large synthetic dataset for 3D feature distillation, enhancing 3D grounding and segmentation.
Findings
Improved 3D CLIP feature reconstruction with better grounding accuracy.
Effective single-view RGB-D 3D feature distillation from multi-view training.
Successful generalization to new domains and robotic grasping tasks.
Abstract
Grounding natural language to the physical world is a ubiquitous topic with a wide range of applications in computer vision and robotics. Recently, 2D vision-language models such as CLIP have been widely popularized, due to their impressive capabilities for open-vocabulary grounding in 2D images. Recent works aim to elevate 2D CLIP features to 3D via feature distillation, but either learn neural fields that are scene-specific and hence lack generalization, or focus on indoor room scan data that require access to multiple camera views, which is not practical in robot manipulation scenarios. Additionally, related methods typically fuse features at pixel-level and assume that all camera views are equally informative. In this work, we show that this approach leads to sub-optimal 3D features, both in terms of grounding accuracy, as well as segmentation crispness. To alleviate this, we…
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Taxonomy
TopicsImage Processing and 3D Reconstruction · Industrial Vision Systems and Defect Detection · Image and Object Detection Techniques
MethodsContrastive Language-Image Pre-training · Focus
