SOTAVerified

DISN: Deep Implicit Surface Network for High-quality Single-view 3D Reconstruction

2019-05-26NeurIPS 2019Code Available0· sign in to hype

Qiangeng Xu, Weiyue Wang, Duygu Ceylan, Radomir Mech, Ulrich Neumann

Code Available — Be the first to reproduce this paper.

Reproduce

Code

Abstract

Reconstructing 3D shapes from single-view images has been a long-standing research problem. In this paper, we present DISN, a Deep Implicit Surface Network which can generate a high-quality detail-rich 3D mesh from an 2D image by predicting the underlying signed distance fields. In addition to utilizing global image features, DISN predicts the projected location for each 3D point on the 2D image, and extracts local features from the image feature maps. Combining global and local features significantly improves the accuracy of the signed distance field prediction, especially for the detail-rich areas. To the best of our knowledge, DISN is the first method that constantly captures details such as holes and thin structures present in 3D shapes from single-view images. DISN achieves the state-of-the-art single-view reconstruction performance on a variety of shape categories reconstructed from both synthetic and real images. Code is available at https://github.com/xharlie/DISN The supplementary can be found at https://xharlie.github.io/images/neurips_2019_supp.pdf

Tasks

Benchmark Results

DatasetModelMetricClaimedVerifiedStatus
ShapeNetCoreDISN3DIoU0.57Unverified
ShapeNetCoreOccNet3DIoU0.56Unverified
ShapeNetCoreIMNET3DIoU0.55Unverified
ShapeNetCore3DN3DIoU0.49Unverified
ShapeNetCorePxl2mesh3DIoU0.47Unverified
ShapeNetCoreAtlasNet3DIoU3Unverified

Reproductions