CompenHR: Efficient Full Compensation for High-resolution Projector
About
Full projector compensation is a practical task of projector-camera systems. It aims to find a projector input image, named compensation image, such that when projected it cancels the geometric and photometric distortions due to the physical environment and hardware. State-of-the-art methods use deep learning to address this problem and show promising performance for low-resolution setups. However, directly applying deep learning to high-resolution setups is impractical due to the long training time and high memory cost. To address this issue, this paper proposes a practical full compensation solution. Firstly, we design an attention-based grid refinement network to improve geometric correction quality. Secondly, we integrate a novel sampling scheme into an end-to-end compensation network to alleviate computation and introduce attention blocks to preserve key features. Finally, we construct a benchmark dataset for high-resolution projector full compensation. In experiments, our method demonstrates clear advantages in both efficiency and quality.
Related benchmarks
| Task | Dataset | Result | Rank | |
|---|---|---|---|---|
| Projector Compensation | Set A same ProCams devices (unseen setups) | PSNR23.69 | 22 | |
| Projector Compensation | Set B novel ProCams devices, unseen setups | PSNR23.74 | 11 | |
| Projector Compensation | Real-world ProCams (novel viewpoints and projections) | PSNR25.81 | 6 |