AutoSDF: Shape Priors for 3D Completion, Reconstruction and GenerationDownload PDFOpen Website

2022 (modified: 19 Nov 2022)CVPR 2022Readers: Everyone
Abstract: Powerful priors allow us to perform inference with in-sufficient information. In this paper, we propose an au-toregressive prior for 3D shapes to solve multimodal 3D tasks such as shape completion, reconstruction, and gener-ation. We model the distribution over 3D shapes as a non-sequential autoregressive distribution over a discretized, low-dimensional, symbolic grid-like latent representation of 3D shapes. This enables us to represent distributions over 3D shapes conditioned on information from an arbitrary set of spatially anchored query locations and thus perform shape completion in such arbitrary settings (e.g. generating a complete chair given only a view of the back leg). We also show that the learned autoregressive prior can be leveraged for conditional tasks such as single-view reconstruction and language-based generation. This is achieved by learning task-specific ‘naive’ conditionals which can be approxi-mated by light-weight models trained on minimal paired data. We validate the effectiveness of the proposed method using both quantitative and qualitative evaluation and show that the proposed method outperforms the specialized state-of-the-art methods trained for individual tasks. The project page with code and video visualizations can be found at https://yccyenchicheng.github.io/AutoSDF/.
0 Replies

Loading