E2HQV: High-Quality Video Generation from Event Camera via Theory-Inspired Model-Aided Deep Learning
About
The bio-inspired event cameras or dynamic vision sensors are capable of asynchronously capturing per-pixel brightness changes (called event-streams) in high temporal resolution and high dynamic range. However, the non-structural spatial-temporal event-streams make it challenging for providing intuitive visualization with rich semantic information for human vision. It calls for events-to-video (E2V) solutions which take event-streams as input and generate high quality video frames for intuitive visualization. However, current solutions are predominantly data-driven without considering the prior knowledge of the underlying statistics relating event-streams and video frames. It highly relies on the non-linearity and generalization capability of the deep neural networks, thus, is struggling on reconstructing detailed textures when the scenes are complex. In this work, we propose \textbf{E2HQV}, a novel E2V paradigm designed to produce high-quality video frames from events. This approach leverages a model-aided deep learning framework, underpinned by a theory-inspired E2V model, which is meticulously derived from the fundamental imaging principles of event cameras. To deal with the issue of state-reset in the recurrent components of E2HQV, we also design a temporal shift embedding module to further improve the quality of the video frames. Comprehensive evaluations on the real world event camera datasets validate our approach, with E2HQV, notably outperforming state-of-the-art approaches, e.g., surpassing the second best by over 40\% for some evaluation metrics.
Related benchmarks
| Task | Dataset | Result | Rank | |
|---|---|---|---|---|
| Video Frame Prediction | GoPro 7 frames | PSNR10.81 | 10 | |
| Video Frame Prediction | GoPro 15 frames | PSNR10.86 | 10 | |
| Video Frame Prediction | BS-ERGB 1 frame (test) | PSNR14.19 | 10 | |
| Video Frame Prediction | BS-ERGB 3 frames (test) | PSNR13.88 | 10 | |
| Video Frame Prediction | HS-ERGB 7 frames (test) | PSNR17.91 | 10 |