VIDIT: Virtual Image Dataset for Illumination Transfer

Deep image relighting is gaining more interest lately, as it allows photo enhancement through illumination-specific retouching without human effort. Aside from aesthetic enhancement and photo montage, image relighting is valuable for domain adaptation, whether to augment datasets for training or to normalize input test data. Accurate relighting is, however, very challenging for various reasons, such as the difficulty in removing and recasting shadows and the modeling of different surfaces. We present a novel dataset, the Virtual Image Dataset for Illumination Transfer (VIDIT), in an effort to create a reference evaluation benchmark and to push forward the development of illumination manipulation methods. Virtual datasets are not only an important step towards achieving real-image performance but have also proven capable of improving training even when real datasets are possible to acquire and available. VIDIT contains 300 virtual scenes used for training, where every scene is captured 40 times in total: from 8 equally-spaced azimuthal angles, each lit with 5 different illuminants.

[1]  Chi-Wing Fu,et al.  Underexposed Photo Enhancement Using Deep Illumination Estimation , 2019, 2019 IEEE/CVF Conference on Computer Vision and Pattern Recognition (CVPR).

[2]  Zhengqi Li,et al.  Learning Intrinsic Image Decomposition from Watching the World , 2018, 2018 IEEE/CVF Conference on Computer Vision and Pattern Recognition.

[3]  Miika Aittala,et al.  A Dataset of Multi-Illumination Images in the Wild , 2019, 2019 IEEE/CVF International Conference on Computer Vision (ICCV).

[4]  Yun-Ta Tsai,et al.  Single image portrait relighting , 2019, ACM Trans. Graph..

[5]  Kalyan Sunkavalli,et al.  Deep image-based relighting from optimal sparse samples , 2018, ACM Trans. Graph..

[6]  Hao Li,et al.  Deep face normalization , 2019, ACM Trans. Graph..

[7]  Noah Snavely,et al.  Intrinsic images in the wild , 2014, ACM Trans. Graph..

[8]  Balazs Kovacs,et al.  Shading Annotations in the Wild , 2017, 2017 IEEE Conference on Computer Vision and Pattern Recognition (CVPR).