--- license: mit language: - en --- # Point·E ![Animation of four 3D point clouds rotating](point_e/examples/paper_banner.gif) This is the official code and model release for [Point-E: A System for Generating 3D Point Clouds from Complex Prompts](https://arxiv.org/abs/2212.08751). # Usage Install with `pip install -e .`. To get started with examples, see the following notebooks: * [image2pointcloud.ipynb](point_e/examples/image2pointcloud.ipynb) - sample a point cloud, conditioned on some example synthetic view images. * [text2pointcloud.ipynb](point_e/examples/text2pointcloud.ipynb) - use our small, worse quality pure text-to-3D model to produce 3D point clouds directly from text descriptions. This model's capabilities are limited, but it does understand some simple categories and colors. * [pointcloud2mesh.ipynb](point_e/examples/pointcloud2mesh.ipynb) - try our SDF regression model for producing meshes from point clouds. For our P-FID and P-IS evaluation scripts, see: * [evaluate_pfid.py](point_e/evals/scripts/evaluate_pfid.py) * [evaluate_pis.py](point_e/evals/scripts/evaluate_pis.py) For our Blender rendering code, see [blender_script.py](point_e/evals/scripts/blender_script.py) # Samples You can download the seed images and point clouds corresponding to the paper banner images [here](https://openaipublic.azureedge.net/main/point-e/banner_pcs.zip). You can download the seed images used for COCO CLIP R-Precision evaluations [here](https://openaipublic.azureedge.net/main/point-e/coco_images.zip).