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AGO: Adaptive Grounding for Open World 3D Occupancy Prediction

AGO: Adaptive Grounding for Open World 3D Occupancy Prediction

来源:Arxiv_logoArxiv
英文摘要

Open-world 3D semantic occupancy prediction aims to generate a voxelized 3D representation from sensor inputs while recognizing both known and unknown objects. Transferring open-vocabulary knowledge from vision-language models (VLMs) offers a promising direction but remains challenging. However, methods based on VLM-derived 2D pseudo-labels with traditional supervision are limited by a predefined label space and lack general prediction capabilities. Direct alignment with pretrained image embeddings, on the other hand, fails to achieve reliable performance due to often inconsistent image and text representations in VLMs. To address these challenges, we propose AGO, a novel 3D occupancy prediction framework with adaptive grounding to handle diverse open-world scenarios. AGO first encodes surrounding images and class prompts into 3D and text embeddings, respectively, leveraging similarity-based grounding training with 3D pseudo-labels. Additionally, a modality adapter maps 3D embeddings into a space aligned with VLM-derived image embeddings, reducing modality gaps. Experiments on Occ3D-nuScenes show that AGO improves unknown object prediction in zero-shot and few-shot transfer while achieving state-of-the-art closed-world self-supervised performance, surpassing prior methods by 4.09 mIoU.

Peizheng Li、Shuxiao Ding、You Zhou、Qingwen Zhang、Onat Inak、Larissa Triess、Niklas Hanselmann、Marius Cordts、Andreas Zell

计算技术、计算机技术

Peizheng Li,Shuxiao Ding,You Zhou,Qingwen Zhang,Onat Inak,Larissa Triess,Niklas Hanselmann,Marius Cordts,Andreas Zell.AGO: Adaptive Grounding for Open World 3D Occupancy Prediction[EB/OL].(2025-04-14)[2025-05-18].https://arxiv.org/abs/2504.10117.点此复制

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