Real-Time Intensity-Image Reconstruction for Event Cameras Using Manifold Regularisation
About
Event cameras or neuromorphic cameras mimic the human perception system as they measure the per-pixel intensity change rather than the actual intensity level. In contrast to traditional cameras, such cameras capture new information about the scene at MHz frequency in the form of sparse events. The high temporal resolution comes at the cost of losing the familiar per-pixel intensity information. In this work we propose a variational model that accurately models the behaviour of event cameras, enabling reconstruction of intensity images with arbitrary frame rate in real-time. Our method is formulated on a per-event-basis, where we explicitly incorporate information about the asynchronous nature of events via an event manifold induced by the relative timestamps of events. In our experiments we verify that solving the variational model on the manifold produces high-quality images without explicitly estimating optical flow.
Related benchmarks
| Task | Dataset | Result | Rank | |
|---|---|---|---|---|
| Single-image deblurring | Blur-DVS | PSNR10.59 | 11 | |
| Visual-Inertial Odometry | Event Camera Dataset | Translation Error (Boxes)0.45 | 6 | |
| Frame synthesis | Event-based sequences batch of N = 10,000 events | Frame Synthesis Time (ms)0.84 | 4 | |
| Video Reconstruction | Event Camera Dataset dynamic_6dof | Temporal Error1.91 | 4 | |
| Video Reconstruction | Event Camera Dataset boxes_6dof | Temporal Error1.79 | 4 | |
| Video Reconstruction | Event Camera Dataset poster_6dof | Temporal Error2.15 | 4 | |
| Video Reconstruction | Event Camera Dataset shapes_6dof | Temporal Error1.8 | 4 | |
| Video Reconstruction | Event Camera Dataset office_zigzag | Temporal Error1.58 | 4 | |
| Video Reconstruction | Event Camera Dataset slider_depth | Temporal Error1.62 | 4 | |
| Video Reconstruction | Event Camera Dataset calibration | Temporal Error1.52 | 4 |