Generating dynamic scenes from images has gained increasing attention. Existing methods have two major limitations: (1) They can hardly handle sparse images which exhibit limited geometry constraints and insufficient motion; (2) They struggle to maintain spatial-temporal consistency when rendering multi-view videos. To address these limitations, we propose SCSV, a spatial-temporal consistent dynamic scene generation method from sparse views. Our method consists of two stages: scene reconstruction and scene expansion, both of which decouple background and foreground. In the scene reconstruction stage, we first interpolate a set of images between the input images based on a video generation model, followed by the optimization of the scene Gaussian from the interpolated and input images. To improve the spatial-temporal consistency of the reconstructed scene, we propose an uncertainty-aware Gaussian training approach, which introduces adaptive weights of images and pixels. In the scene expansion stage, for background, we render novel views and refine them with a geometry-aware diffusion process. These refined images are then used to incrementally add the Gaussians. As to foreground, we generate human motion according to previous motion, enabling temporal coherent generation of motion. To further enhance the physical plausibility, we integrate the expanded foreground into the background using a gravity-aware alignment. Experiments on NeuMan, Bonn, and EMDB datasets demonstrate that our SCSV achieves superior performance compared to state-of-the-art methods. The code will be released upon acceptance.
Li et al. (Thu,) studied this question.
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