Zhang, YujiaPerusquia-Hernández, MonicaIsoyama, NaoyaKawai, NorihikoUchiyama, HideakiSakata, NobuchikaKiyokawa, KiyoshiTheophilus TeoRyota Kondo2022-11-292022-11-292022978-3-03868-192-21727-530Xhttps://doi.org/10.2312/egve.20221293https://diglib.eg.org:443/handle/10.2312/egve20221293We propose a method to relight scenes in a single image while removing unwanted objects by the combination of 3D-aware inpainting and relighting for a new functionality in image editing. First, the proposed method estimates the depth image from an RGB image using single-view depth estimation. Next, the RGB and depth images are masked by the user by specifying unwanted objects. Then, the masked RGB and depth images are simultaneously inpainted by our proposed neural network. For relighiting, a 3D mesh model is first reconstructed from the inpainted depth image, and is then relit with a standard relighting pipeline. In this process, removing cast shadows and sky areas and albedo estimation are optionally performed to suppress the artifacts in outdoor scenes. Through these processes, various types of relighting can be achieved from a single photograph while excluding the colors and shapes of unwanted objects.Attribution 4.0 International LicenseCCS Concepts: Computing methodologies -> Image processing; Human-centered computing -> Mixed / augmented realityComputing methodologiesImage processingHuman centered computingMixed / augmented reality3D-Aware Image Relighting with Object Removal from Single Image10.2312/egve.2022129313-142 pages