posted on 2022-01-12, 14:46authored byCiarán Eising, Leroy-Francisco Pereira, Jonathan Horgan, Anbuchezhiyan Selvaraju, John McDonald, Paul Moran
t is well understood that in ADAS applications, a good estimate of the pose of the vehi cle is required. This paper proposes a metaphorically named 2.5D odometry, whereby the
planar odometry derived from the yaw rate sensor and four wheel speed sensors is aug mented by a linear model of suspension. While the core of the planar odometry is a yaw rate
model that is already understood in the literature, this is augmented by fitting a quadratic
to the incoming signals, enabling interpolation, extrapolation, and a finer integration of the
vehicle position. It is shown, by experimental results with a DGPS/IMU reference, that
this model provides highly accurate odometry estimates, compared with existing methods.
Utilising sensors that return the change in height of vehicle reference points with chang ing suspension configurations, a planar model of the vehicle suspension is defined, thus
augmenting the odometry model. An experimental framework and evaluations criteria is
presented by which the goodness of the odometry is evaluated and compared with existing
methods. This odometry model has been designed to support low-speed surround-view
camera systems that are well-known. Thus, some application results that show a perfor mance boost for viewing and computer vision applications using the proposed odometry
are presented.