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3D Vision-Language Gaussian Splatting

About

Recent advancements in 3D reconstruction methods and vision-language models have propelled the development of multi-modal 3D scene understanding, which has vital applications in robotics, autonomous driving, and virtual/augmented reality. However, current multi-modal scene understanding approaches have naively embedded semantic representations into 3D reconstruction methods without striking a balance between visual and language modalities, which leads to unsatisfying semantic rasterization of translucent or reflective objects, as well as over-fitting on color modality. To alleviate these limitations, we propose a solution that adequately handles the distinct visual and semantic modalities, i.e., a 3D vision-language Gaussian splatting model for scene understanding, to put emphasis on the representation learning of language modality. We propose a novel cross-modal rasterizer, using modality fusion along with a smoothed semantic indicator for enhancing semantic rasterization. We also employ a camera-view blending technique to improve semantic consistency between existing and synthesized views, thereby effectively mitigating over-fitting. Extensive experiments demonstrate that our method achieves state-of-the-art performance in open-vocabulary semantic segmentation, surpassing existing methods by a significant margin.

Qucheng Peng, Benjamin Planche, Zhongpai Gao, Meng Zheng, Anwesa Choudhuri, Terrence Chen, Chen Chen, Ziyan Wu• 2024

Related benchmarks

TaskDatasetResultRank
Open-Vocabulary 3D Scene SegmentationLeRF-mask
Figurines mIoU73.5
17
Novel-view Panoptic SegmentationNeu3D coffee martini
mAcc (Pixel)94.8
5
Novel-view Panoptic SegmentationNeu3D cook spinach
mAcc (Pixel)95.6
5
Novel-view Panoptic SegmentationNeu3D cut roasted beef
Pixel Accuracy (mAcc-pix)93.56
5
Novel-view Panoptic SegmentationNeu3D flame steak
Pixel Acc87.71
5
Novel-view Panoptic SegmentationNeu3D sear steak
mAcc (Pixel)90.2
5
Panoptic SegmentationHyperNeRF americano
Pixel Accuracy97.56
5
Panoptic SegmentationHyperNeRF split-cookie
mAcc (pix)96.35
5
Panoptic SegmentationHyperNeRF chickchicken
Pixel Accuracy (mAcc)95.38
5
Panoptic SegmentationHyperNeRF keyboard
mAcc (pix)93.79
5
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