Multi-period image collections are common in real-world applications. Cities are re-scanned for mapping, construction sites are revisited for progress tracking, and natural regions are monitored for environmental change. Such data form multi-period scenes, where geometry and appearance evolve. Reconstructing such scenes is an important yet underexplored problem. Existing pipelines rely on incompatible assumptions: static and in-the-wild methods enforce a single geometry, while dynamic ones assume smooth motion, both failing under long-term, discontinuous changes. To solve this problem, we introduce ChronoGS, a temporally modulated Gaussian representation that reconstructs all periods within a unified anchor scaffold. It's also designed to disentangle stable and evolving components, achieving temporally consistent reconstruction of multi-period scenes. To catalyze relevant research, we release ChronoScene dataset, a benchmark of real and synthetic multi-period scenes, capturing geometric and appearance variation. Experiments demonstrate that ChronoGS consistently outperforms baselines in reconstruction quality and temporal consistency. Our code and the ChronoScene dataset are publicly available at https://github.com/ZhongtaoWang/ChronoGS.
翻译:多时期图像集合在现实应用中十分常见。城市为测绘而重新扫描,建筑工地为进度跟踪而多次回访,自然区域为环境变化而持续监测。此类数据构成了多时期场景,其中几何结构与外观随时间演变。重建此类场景是一个重要但尚未充分探索的问题。现有流程依赖于不相容的假设:静态与野外方法强制采用单一几何结构,而动态方法则假设平滑运动,两者在长期、非连续变化下均告失效。为解决此问题,我们提出了ChronoGS,一种时间调制的高斯表示方法,可在统一的锚定框架内重建所有时期。该方法还旨在解耦稳定与演变成分,实现多时期场景的时间一致性重建。为促进相关研究,我们发布了ChronoScene数据集,这是一个包含真实与合成多时期场景的基准数据集,捕捉了几何与外观的变异。实验表明,ChronoGS在重建质量和时间一致性方面持续优于基线方法。我们的代码及ChronoScene数据集已在https://github.com/ZhongtaoWang/ChronoGS公开提供。