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Neural Rendering Dataset Collection

Master's Thesis | Linköping University | 2025

Author: Shaoxuan Yin

Supervisor: Sergey Ignatenko

Examiner: Jonas Unger

Programme: Computer Science, Master's Programme (6MICS)

Course: TQDV30 - Degree Project (30 hp)


Abstract

This thesis investigates multi-view capture systems for neural rendering, comparing traditional photogrammetry with modern neural rendering methods (NeRF and 3D Gaussian Splatting). Two datasets were created: a controlled studio dataset of 15 objects with 432 images each, and a large-scale outdoor dataset of Gränsö Castle with 5,262 images. The work addresses how neural rendering handles view-dependent effects (reflections, transparency) and examines scalability limits for large scenes.


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Resource Link
Thesis PDF Download
Defense Slides View Online
Capture Software CamMatrixCapture
Studio Objects Dataset Internet Archive

Datasets

Studio Objects Dataset

  • 15 objects captured with a 12-camera synchronized rig
  • 432 images per object (12 cameras × 36 turntable positions)
  • Includes challenging materials: glass, metal, fur, translucent objects
  • ArUco marker-based geometric alignment

Gränsö Castle Dataset

  • Large-scale outdoor heritage site
  • 5,262 images (drone + SLR photography)
  • Multi-scale reconstruction from aerial to ground-level detail

Software

The CamMatrixCapture software was developed for this thesis to control the multi-camera capture system. Features include:

  • Synchronized capture from 12 Teledyne FLIR cameras
  • Parallel image transfer (1.85× speedup)
  • Automated turntable control
  • Real-time preview and camera configuration

Citation

@mastersthesis{yin2025neural,
  author  = {Yin, Shaoxuan},
  title   = {Neural Rendering Dataset Collection},
  school  = {Linköping University},
  year    = {2025},
  type    = {Master's thesis},
  number  = {LiU-ITN-TEK-A--25/070--SE},
  address = {Norrköping, Sweden}
}

License

The thesis document is available for academic and educational purposes. The dataset is released under CC BY 4.0.

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