ESPEE: Event-Based Sensor Pose Estimation Using an Extended Kalman Filter

Sensors (Basel). 2021 Nov 25;21(23):7840. doi: 10.3390/s21237840.

Abstract

Event-based vision sensors show great promise for use in embedded applications requiring low-latency passive sensing at a low computational cost. In this paper, we present an event-based algorithm that relies on an Extended Kalman Filter for 6-Degree of Freedom sensor pose estimation. The algorithm updates the sensor pose event-by-event with low latency (worst case of less than 2 μs on an FPGA). Using a single handheld sensor, we test the algorithm on multiple recordings, ranging from a high contrast printed planar scene to a more natural scene consisting of objects viewed from above. The pose is accurately estimated under rapid motions, up to 2.7 m/s. Thereafter, an extension to multiple sensors is described and tested, highlighting the improved performance of such a setup, as well as the integration with an off-the-shelf mapping algorithm to allow point cloud updates with a 3D scene and enhance the potential applications of this visual odometry solution.

Keywords: computer vision; event-based sensor; extended Kalman filter; structureless measurement model; visual odometry.

MeSH terms

  • Algorithms*
  • Motion