Event Enhanced High-Quality Image Recovery
About
With extremely high temporal resolution, event cameras have a large potential for robotics and computer vision. However, their asynchronous imaging mechanism often aggravates the measurement sensitivity to noises and brings a physical burden to increase the image spatial resolution. To recover high-quality intensity images, one should address both denoising and super-resolution problems for event cameras. Since events depict brightness changes, with the enhanced degeneration model by the events, the clear and sharp high-resolution latent images can be recovered from the noisy, blurry and low-resolution intensity observations. Exploiting the framework of sparse learning, the events and the low-resolution intensity observations can be jointly considered. Based on this, we propose an explainable network, an event-enhanced sparse learning network (eSL-Net), to recover the high-quality images from event cameras. After training with a synthetic dataset, the proposed eSL-Net can largely improve the performance of the state-of-the-art by 7-12 dB. Furthermore, without additional training process, the proposed eSL-Net can be easily extended to generate continuous frames with frame-rate as high as the events.
Related benchmarks
| Task | Dataset | Result | Rank | |
|---|---|---|---|---|
| Low-light Image Enhancement | SDSD-out | PSNR23.3921 | 52 | |
| Low-light Image Enhancement | SDE-in | PSNR21.3622 | 20 | |
| Motion Deblurring | MVSEC Single frame prediction | PSNR24.099 | 11 | |
| Motion Deblurring | DSEC-large Single frame prediction | PSNR19.004 | 11 | |
| Motion Deblurring | MVSEC | PSNR25.306 | 10 | |
| Low-light Image Enhancement | SDE out | PSNR20.6244 | 10 | |
| Motion Deblurring | DSEC large | PSNR17.671 | 10 | |
| Motion Deblurring | StEIC Single frame prediction | PSNR16.662 | 10 | |
| Motion Deblurring | StEIC | PSNR16.563 | 10 | |
| Deblurring | HQF real-world (test) | PSNR21.36 | 6 |