DenseReg: Fully Convolutional Dense Shape Regression In-the-Wild
Riza Alp Guler, Yuxiang Zhou, George Trigeorgis, Epameinondas, Antonakos, Patrick Snape, Stefanos Zafeiriou, Iasonas Kokkinos

TL;DR
DenseReg is a deep learning method that establishes dense correspondences between 3D models and in-the-wild images, improving pose estimation and landmark localization with a fully convolutional network that combines segmentation and regression.
Contribution
Introduces DenseReg, a novel fully convolutional network that densely regresses UV coordinates at every foreground pixel for accurate shape correspondence in unconstrained images.
Findings
Achieves state-of-the-art results on 300W, MPII, and LSP datasets.
Enhances pose estimation accuracy and landmark localization.
Serves as initialization for deformable models and improves training of pose networks.
Abstract
In this work we use deep learning to establish dense correspondences between a 3D object model and an image "in the wild". We introduce "DenseReg", a fully-convolutional neural network (F-CNN) that densely regresses at every foreground pixel a pair of U-V template coordinates in a single feedforward pass. To train DenseReg we construct a supervision signal by combining 3D deformable model fitting and 2D landmark annotations. We define the regression task in terms of the intrinsic, U-V coordinates of a 3D deformable model that is brought into correspondence with image instances at training time. A host of other object-related tasks (e.g. part segmentation, landmark localization) are shown to be by-products of this task, and to largely improve thanks to its introduction. We obtain highly-accurate regression results by combining ideas from semantic segmentation with regression networks,…
Peer Reviews
No public reviews on file for this paper yet. If you reviewed it on a platform where reviews are public (OpenReview, ICLR, NeurIPS, ICML), you can paste yours below so the community can read it here.
Videos
No videos yet. Explain this paper in a talk, walkthrough, or lecture? Add one.
