The experimental evaluation on a public dataset demonstrates that the proposed fixed-length coding framework provides at least two times the compression ratio relative to the raw EF representation and a close performance compared with variable-length video coding standards and variable-length state-of-the-art image codecs for lossless compression of ternary EFs generated at frequencies below one KHz.
This paper presents a novel technique for perceiving air convection using events and frames by providing the first theoretical analysis that connects event data and schlieren. We formulate the problem as a variational optimization one combining the linearized event generation model with a physically-motivated parameterization that estimates the temporal derivative of the air density.
Resident space objects in the size range of 0.1 mm–3 cm are not currently trackable but have enough kinetic energy to have lethal consequences for spacecraft. The assessment of small orbital debris, potentially posing a risk to most space missions, requires the combination of a large sensor area and large time coverage.
We benchmark our model against other event-graph and convolutional neural network based approaches on the challenging DVS-Lip dataset (spoken word classification). We find that not only does our method outperform state of the art approaches for similar model sizes, but that, relative to the convolutional models, the number of calculation operations per second was reduced by 81%.
To explore the potential of event cameras, Ultraleap have developed a prototype stereo camera using two Prophesee IMX636ES sensors. To go from event data to hand positions the event data is aggregated into event frames. This is then consumed by a hand tracking model which outputs 28 joint positions for each hand with respect to the camera.