OccScene: Semantic Occupancy-based Cross-task Mutual Learning for 3D Scene Generation
- URL: http://arxiv.org/abs/2412.11183v1
- Date: Sun, 15 Dec 2024 13:26:51 GMT
- Title: OccScene: Semantic Occupancy-based Cross-task Mutual Learning for 3D Scene Generation
- Authors: Bohan Li, Xin Jin, Jianan Wang, Yukai Shi, Yasheng Sun, Xiaofeng Wang, Zhuang Ma, Baao Xie, Chao Ma, Xiaokang Yang, Wenjun Zeng,
- Abstract summary: OccScene integrates fine-grained 3D perception and high-quality generation in a unified framework.
OccScene generates new and consistent 3D realistic scenes only depending on text prompts.
Experiments show that OccScene achieves realistic 3D scene generation in broad indoor and outdoor scenarios.
- Score: 84.32038395034868
- License:
- Abstract: Recent diffusion models have demonstrated remarkable performance in both 3D scene generation and perception tasks. Nevertheless, existing methods typically separate these two processes, acting as a data augmenter to generate synthetic data for downstream perception tasks. In this work, we propose OccScene, a novel mutual learning paradigm that integrates fine-grained 3D perception and high-quality generation in a unified framework, achieving a cross-task win-win effect. OccScene generates new and consistent 3D realistic scenes only depending on text prompts, guided with semantic occupancy in a joint-training diffusion framework. To align the occupancy with the diffusion latent, a Mamba-based Dual Alignment module is introduced to incorporate fine-grained semantics and geometry as perception priors. Within OccScene, the perception module can be effectively improved with customized and diverse generated scenes, while the perception priors in return enhance the generation performance for mutual benefits. Extensive experiments show that OccScene achieves realistic 3D scene generation in broad indoor and outdoor scenarios, while concurrently boosting the perception models to achieve substantial performance improvements in the 3D perception task of semantic occupancy prediction.
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