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MegaSynth: Scaling Up 3D Scene Reconstruction with Synthesized Data

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arxiv 2412.14166 v2 pith:2YCRMGU3 submitted 2024-12-18 cs.CV

MegaSynth: Scaling Up 3D Scene Reconstruction with Synthesized Data

classification cs.CV
keywords datamegasynthtrainingreconstructionmodelrealscalingscene
verification ladder T0 review T1 audit T2 compute T3 formal T4 reserved
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We propose scaling up 3D scene reconstruction by training with synthesized data. At the core of our work is MegaSynth, a procedurally generated 3D dataset comprising 700K scenes - over 50 times larger than the prior real dataset DL3DV - dramatically scaling the training data. To enable scalable data generation, our key idea is eliminating semantic information, removing the need to model complex semantic priors such as object affordances and scene composition. Instead, we model scenes with basic spatial structures and geometry primitives, offering scalability. Besides, we control data complexity to facilitate training while loosely aligning it with real-world data distribution to benefit real-world generalization. We explore training LRMs with both MegaSynth and available real data. Experiment results show that joint training or pre-training with MegaSynth improves reconstruction quality by 1.2 to 1.8 dB PSNR across diverse image domains. Moreover, models trained solely on MegaSynth perform comparably to those trained on real data, underscoring the low-level nature of 3D reconstruction. Additionally, we provide an in-depth analysis of MegaSynth's properties for enhancing model capability, training stability, and generalization, as well as application to other tasks.

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