Compared to regular cameras, Dynamic Vision Sensors or Event Cameras can output compact visual data based on a change in the intensity in each pixel location asynchronously. In this paper, we study the application of current image-based SLAM techniques to these novel sensors. To this end, the information in adaptively selected event windows is processed to form motion-compensated images. These images are then used to reconstruct the scene and estimate the 6-DOF pose of the camera. We also propose an inertial version of the event-only pipeline to assess its capabilities. We compare the results of different configurations of the proposed algorithm against the ground truth for sequences of two publicly available event datasets. We also compare the results of the proposed event-inertial pipeline with the state-of-the-art and show it can produce comparable or more accurate results provided the map estimate is reliable.
翻译:与常规摄像头相比,动态视觉传感器或事件摄像头能够根据每个像素位置的强度变化来生成紧凑的视觉数据。 在本文中,我们研究了将当前基于图像的 SLAM 技术应用到这些新式传感器的情况。 为此,对适应性选择的事件窗口中的信息进行了处理,以形成运动补偿图像。然后这些图像用于重建现场并估计摄像头的6-DOF 结构。 我们还提议一个仅使用事件管道的惯性版本,以评估其能力。我们对两种公开的事件数据集的序列,将拟议算法的不同配置结果与地面真相进行比较。我们还将拟议的事件-线性管道的结果与最新工艺进行比较,并显示它能够产生可比或更准确的结果,只要地图估计是可靠的。