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arxiv: 2110.06199 · v2 · pith:R4UCZSJ5 · submitted 2021-10-12 · cs.CV · cs.AI· cs.GR

ABO: Dataset and Benchmarks for Real-World 3D Object Understanding

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classification cs.CV cs.AIcs.GR
keywords objectbenchmarksdatasetobjectsrealreal-worldunderstandingamazon
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We introduce Amazon Berkeley Objects (ABO), a new large-scale dataset designed to help bridge the gap between real and virtual 3D worlds. ABO contains product catalog images, metadata, and artist-created 3D models with complex geometries and physically-based materials that correspond to real, household objects. We derive challenging benchmarks that exploit the unique properties of ABO and measure the current limits of the state-of-the-art on three open problems for real-world 3D object understanding: single-view 3D reconstruction, material estimation, and cross-domain multi-view object retrieval.

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