Physically-Based Lighting for 3D Generative Models of Cars

被引:0
|
作者
Violante, N. [1 ,2 ]
Gauthier, A. [1 ,2 ]
Diolatzis, S. [3 ]
Leimkuehler, T. [4 ]
Drettakis, G. [1 ,2 ]
机构
[1] Inria, Le Chesnay, France
[2] Univ Cote Azur, Nice, France
[3] Intel, Boulogne Billancourt, France
[4] MPI Informat, Saarbrucken, Germany
关键词
2D images - 3D content - Environment maps - Generative model - Image collections - Multi-views - Network frameworks - Physically based - Relighting - View-dependent;
D O I
10.1111/cgf.15011
中图分类号
TP31 [计算机软件];
学科分类号
081202 ; 0835 ;
摘要
Recent work has demonstrated that Generative Adversarial Networks (GANs) can be trained to generate 3D content from 2D image collections, by synthesizing features for neural radiance field rendering. However, most such solutions generate radiance, with lighting entangled with materials. This results in unrealistic appearance, since lighting cannot be changed and view-dependent effects such as reflections do not move correctly with the viewpoint. In addition, many methods have difficulty for full, 360 degrees rotations, since they are often designed for mainly front-facing scenes such as faces. We introduce a new 3D GAN framework that addresses these shortcomings, allowing multi-view coherent 360 degrees viewing and at the same time relighting for objects with shiny reflections, which we exemplify using a car dataset. The success of our solution stems from three main contributions. First, we estimate initial camera poses for a dataset of car images, and then learn to refine the distribution of camera parameters while training the GAN. Second, we propose an efficient Image-Based Lighting model, that we use in a 3D GAN to generate disentangled reflectance, as opposed to the radiance synthesized in most previous work. The material is used for physically-based rendering with a dataset of environment maps. Third, we improve the 3D GAN architecture compared to previous work and design a careful training strategy that allows effective disentanglement. Our model is the first that generate a variety of 3D cars that are multi-view consistent and that can be relit interactively with any environment map.
引用
收藏
页数:16
相关论文
共 50 条
  • [31] Validation of a physically-based solid oxide fuel cell anode model combining 3D tomography and impedance spectroscopy
    Bertei, A.
    Ruiz-Trejo, E.
    Tariq, F.
    Yufit, V.
    Atkinson, A.
    Brandon, N. P.
    INTERNATIONAL JOURNAL OF HYDROGEN ENERGY, 2016, 41 (47) : 22381 - 22393
  • [32] Simulating the multi-seasonal response of a large-scale watershed with a 3D physically-based hydrologic model
    Li, Q.
    Unger, A. J. A.
    Sudicky, E. A.
    Kassenaar, D.
    Wexler, E. J.
    Shikaze, S.
    JOURNAL OF HYDROLOGY, 2008, 357 (3-4) : 317 - 336
  • [33] Physically-Based Facial Modeling and Animation with Unity3D Game Engine
    Li, Bo
    Gong, Guang-hong
    Zhao, Yao-pu
    MODELING, DESIGN AND SIMULATION OF SYSTEMS, ASIASIM 2017, PT II, 2017, 752 : 393 - 404
  • [34] Physically-based distributed models for multi-layer ceramic capacitors
    Sullivan, CR
    Sun, YQ
    ELECTRICAL PERFORMANCE OF ELECTRONIC PACKAGING, 2003, : 185 - 188
  • [35] Passive Remote Sensing of Sea Foam using Physically-Based Models
    Anguelova, Magdalena D.
    Bettenhausen, Michael H.
    Gaiser, Peter W.
    2006 IEEE INTERNATIONAL GEOSCIENCE AND REMOTE SENSING SYMPOSIUM, VOLS 1-8, 2006, : 3676 - 3679
  • [36] Generative Model With Coordinate Metric Learning for Object Recognition Based on 3D Models
    Wang, Yida
    Deng, Weihong
    IEEE TRANSACTIONS ON IMAGE PROCESSING, 2018, 27 (12) : 5813 - 5826
  • [37] De novo design with deep generative models based on 3D similarity scoring
    Papadopoulos, Kostas
    Giblin, Kathryn A.
    Janet, Jon Paul
    Patronov, Atanas
    Engkvist, Ola
    BIOORGANIC & MEDICINAL CHEMISTRY, 2021, 44
  • [38] Building 3D Generative Models from Minimal Data
    Sutherland, Skylar
    Egger, Bernhard
    Tenenbaum, Joshua
    INTERNATIONAL JOURNAL OF COMPUTER VISION, 2024, 132 (02) : 555 - 580
  • [39] 3D Brain and Heart Volume Generative Models: A Survey
    Liu, Yanbin
    Dwivedi, Girish
    Boussaid, Farid
    Bennamoun, Mohammed
    ACM COMPUTING SURVEYS, 2024, 56 (06)
  • [40] Learning Representations and Generative Models for 3D Point Clouds
    Achlioptas, Panos
    Diamanti, Olga
    Mitliagkas, Ioannis
    Guibas, Leonidas
    INTERNATIONAL CONFERENCE ON MACHINE LEARNING, VOL 80, 2018, 80