Yibo Liu, Amaldev Haridevan, Hunter Schofield, Jinjun Shan
Feature extraction or localization based on the fiducial marker could fail due to motion blur in real-world robotic applications. To solve this problem, a lightweight generative adversarial network, named Ghost-DeblurGAN, for real-time motion deblurring is developed in this paper. Furthermore, on account that there is no existing deblurring benchmark for such task, a new large-scale dataset, YorkTag, is proposed that provides pairs of sharp/blurred images containing fiducial markers. With the proposed model trained and tested on YorkTag, it is demonstrated that when applied along with fiducial marker systems to motion-blurred images, Ghost-DeblurGAN improves the marker detection significantly. The datasets and codes used in this paper are available at: https://github.com/York-SDCNLab/Ghost-DeblurGAN.
| Task | Dataset | Metric | Value | Model |
|---|---|---|---|---|
| Deblurring | GoPro | PSNR | 28.75 | Ghost-DeblurGAN |
| Deblurring | GoPro | SSIM | 0.919 | Ghost-DeblurGAN |
| 2D Classification | GoPro | PSNR | 28.75 | Ghost-DeblurGAN |
| 2D Classification | GoPro | SSIM | 0.919 | Ghost-DeblurGAN |
| 10-shot image generation | GoPro | PSNR | 28.75 | Ghost-DeblurGAN |
| 10-shot image generation | GoPro | SSIM | 0.919 | Ghost-DeblurGAN |
| Blind Image Deblurring | GoPro | PSNR | 28.75 | Ghost-DeblurGAN |
| Blind Image Deblurring | GoPro | SSIM | 0.919 | Ghost-DeblurGAN |