Event-based cameras offer reliable measurements for preforming computer vision tasks in high-dynamic range environments and during fast motion maneuvers. However, adopting deep learning in event-based vision faces the challenge of annotated data scarcity due to recency of event cameras. Transferring the knowledge that can be obtained from conventional camera annotated data offers a practical solution to this challenge. We develop an unsupervised domain adaptation algorithm for training a deep network for event-based data image classification using contrastive learning and uncorrelated conditioning of data. Our solution outperforms the existing algorithms for this purpose.
翻译:事件驱动相机为计算机视觉在高动态范围环境和快速运动机动中提供了可靠的测量。然而,采用深度学习处理事件驱动视觉时面临着注释数据稀缺的挑战,这是由于事件相机的近期性质所致。从传统相机注释数据中获得的知识迁移提供了实用解决方案。我们开发了一种未监督域自适应算法,用于使用对比学习和不相关数据条件来训练事件驱动数据图像分类的深层网络。我们的解决方案优于现有的该目的算法。