Event Camera
Event cameras are bio-inspired sensors that asynchronously detect changes in light intensity, offering advantages over traditional cameras in high-speed, low-light, and high-dynamic-range scenarios. Current research focuses on developing algorithms and models, including neural networks (e.g., transformers, convolutional neural networks, and spiking neural networks), for tasks such as 3D reconstruction, object tracking, and depth estimation using event data, often integrating event streams with frame-based data for improved performance. This technology holds significant promise for applications in robotics, autonomous driving, and other fields requiring robust and efficient visual perception in challenging environments. The development of new datasets and improved event data augmentation techniques are also key areas of ongoing research.
Papers
E2HQV: High-Quality Video Generation from Event Camera via Theory-Inspired Model-Aided Deep Learning
Qiang Qu, Yiran Shen, Xiaoming Chen, Yuk Ying Chung, Tongliang Liu
Representation Learning on Event Stream via an Elastic Net-incorporated Tensor Network
Beibei Yang, Weiling Li, Yan Fang
Cross-Modal Semi-Dense 6-DoF Tracking of an Event Camera in Challenging Conditions
Yi-Fan Zuo, Wanting Xu, Xia Wang, Yifu Wang, Laurent Kneip