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3dScene

This repository is part of master thesis titled : Synth2Real : 3D-Furniture Reconstruction in Ersatz Environment (S2R:3D-FREE)

This repository is coupled with Deep Learning pipeline which can be seen in https://github.com/kartikprabhu20/3dReconstruction

3DScene is a Unity-based pipeline to create synthetic dataset. As a sample the rooms are imported from SceneNet[1] and furnitures are imported from Pix3D[2] The GUI of the application as shown in the figure.

gui

Data Settings: The users can select the catagories/classes of the furnitures seperated by commma(,). The users can also select total images per catagory.

Path Settings: The user has to feed the paths for input which include room and furniture datasets, the path to textures and the destination path.

Texture Directory format: Texture folder
|_ Furniture1
|_ Furniture2
      |_ img1
      |_ img2

Room Directory format: Room folder
|_ roomType1
|_ roomType2
      |_ room1.obj
      |_ room2.obj
|_room3.obj

Furniture Directory format: Furniture folder
|_ class1
|_ class2
        |_ model_1_folderName
              |_ model.obj
        |_ model_2_folderName
               |_ model.obj

Camera Settings: The parameters include minimum height of the camera, and minimum and maximum distance from the target model.

Light Settings: The lights can be randomized with colors and intensity.

Pipeline Settings: The application supports 4 modes:

  • Single room
  • Multi-threaded single room
  • Multi-objects room
  • Manual pipeline

References:

[1] John McCormac, Ankur Handa, Stefan Leutenegger, and Andrew J. Davison. SceneNet RGB-D: Can 5M Synthetic Images Beat Generic ImageNet Pre-training on Indoor Segmentation? In Proceedings of the IEEE International Conference on Computer Vision, 2017.

[2] Xingyuan Sun, Jiajun Wu, Xiuming Zhang, Zhoutong Zhang, Chengkai Zhang, Tianfan Xue, Joshua B. Tenenbaum, and William T. Freeman. Pix3D: Dataset and Methods for Single-Image 3D Shape Modeling. In Proceedings of the IEEE Computer Society Conference on Computer Vision and Pattern Recognition, 2018.

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