# DensePose in Detectron2 **Dense Human Pose Estimation In The Wild** _Rıza Alp Güler, Natalia Neverova, Iasonas Kokkinos_ [[`densepose.org`](https://densepose.org)] [[`arXiv`](https://arxiv.org/abs/1802.00434)] [[`BibTeX`](#CitingDensePose)] Dense human pose estimation aims at mapping all human pixels of an RGB image to the 3D surface of the human body.
In this repository, we provide the code to train and evaluate DensePose-RCNN. We also provide tools to visualize DensePose annotation and results. # Quick Start See [ Getting Started ](doc/GETTING_STARTED.md) # Model Zoo and Baselines We provide a number of baseline results and trained models available for download. See [Model Zoo](doc/MODEL_ZOO.md) for details. # License Detectron2 is released under the [Apache 2.0 license](../../LICENSE) ## Citing DensePose If you use DensePose, please take the references from the following BibTeX entries: For DensePose with estimated confidences: ``` @InProceedings{Neverova2019DensePoseConfidences, title = {Correlated Uncertainty for Learning Dense Correspondences from Noisy Labels}, author = {Neverova, Natalia and Novotny, David and Vedaldi, Andrea}, journal = {Advances in Neural Information Processing Systems}, year = {2019}, } ``` For the original DensePose: ``` @InProceedings{Guler2018DensePose, title={DensePose: Dense Human Pose Estimation In The Wild}, author={R\{i}za Alp G\"uler, Natalia Neverova, Iasonas Kokkinos}, journal={The IEEE Conference on Computer Vision and Pattern Recognition (CVPR)}, year={2018} } ```