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Objaverse: A Universe of Annotated 3D Objects

About

Massive data corpora like WebText, Wikipedia, Conceptual Captions, WebImageText, and LAION have propelled recent dramatic progress in AI. Large neural models trained on such datasets produce impressive results and top many of today's benchmarks. A notable omission within this family of large-scale datasets is 3D data. Despite considerable interest and potential applications in 3D vision, datasets of high-fidelity 3D models continue to be mid-sized with limited diversity of object categories. Addressing this gap, we present Objaverse 1.0, a large dataset of objects with 800K+ (and growing) 3D models with descriptive captions, tags, and animations. Objaverse improves upon present day 3D repositories in terms of scale, number of categories, and in the visual diversity of instances within a category. We demonstrate the large potential of Objaverse via four diverse applications: training generative 3D models, improving tail category segmentation on the LVIS benchmark, training open-vocabulary object-navigation models for Embodied AI, and creating a new benchmark for robustness analysis of vision models. Objaverse can open new directions for research and enable new applications across the field of AI.

Matt Deitke, Dustin Schwenk, Jordi Salvador, Luca Weihs, Oscar Michel, Eli VanderBilt, Ludwig Schmidt, Kiana Ehsani, Aniruddha Kembhavi, Ali Farhadi• 2022

Related benchmarks

TaskDatasetResultRank
3D surface reconstructionDTU (test)
Mean Chamfer Distance (CD)1.35
69
3D Material Refinement PreferenceObjaverse
GPT Evaluation Score15.2
8
Surface ReconstructionDTU unfavorable sets (test)
CD (Scan 24)8.32
6
Depth EstimationDTU (Unfavorable set)
Threshold Accuracy (<1mm)6.21
5
Depth EstimationDTU (Favorable set)
Accuracy (<1mm)38.95
5
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