CVMar 2

SimRecon: SimReady Compositional Scene Reconstruction from Real Videos

arXiv:2603.02133v24 citationsh-index: 13
Originality Incremental advance
AI Analysis

This work addresses the challenge of creating object-centric representations for simulation and interaction in real-world scenarios, representing an incremental improvement over existing methods.

The paper tackles the problem of compositional scene reconstruction from real videos by proposing SimRecon, a framework that improves visual fidelity and physical plausibility through bridging modules, achieving superior performance on the ScanNet dataset.

Compositional scene reconstruction seeks to create object-centric representations rather than holistic scenes from real-world videos, which is natively applicable for simulation and interaction. Conventional compositional reconstruction approaches primarily emphasize on visual appearance and show limited generalization ability to real-world scenarios. In this paper, we propose SimRecon, a framework that realizes a "Perception-Generation-Simulation" pipeline towards cluttered scene reconstruction, which first conducts scene-level semantic reconstruction from video input, then performs single-object generation, and finally assembles these assets in the simulator. However, naively combining these three stages leads to visual infidelity of generated assets and physical implausibility of the final scene, a problem particularly severe for complex scenes. Thus, we further propose two bridging modules between the three stages to address this problem. To be specific, for the transition from Perception to Generation, critical for visual fidelity, we introduce Active Viewpoint Optimization, which actively searches in 3D space to acquire optimal projected images as conditions for single-object completion. Moreover, for the transition from Generation to Simulation, essential for physical plausibility, we propose a Scene Graph Synthesizer, which guides the construction from scratch in 3D simulators, mirroring the native, constructive principle of the real world. Extensive experiments on the ScanNet dataset validate our method's superior performance over previous state-of-the-art approaches.

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