Publication (IEEE 2019): Online Optimal Perception-Aware Trajectory Generation

This article has been published in IEEE Transactions on Robotics.

Abstract

This article proposes an online optimal active perception strategy for differentially flat systems meant to maximize the information collected via the available measurements along the planned trajectory. The goal is to generate online a trajectory that minimizes the maximum state estimation uncertainty provided by the employed observer. To quantify the richness of the acquired information about the current state, the smallest eigenvalue of the constructibility Gramian is adopted as a metric. In this article, we use B-splines for parametrizing the trajectory of the flat outputs and we exploit a constrained gradient descent strategy for optimizing online the location of the B-spline control points in order to actively maximize the information gathered over the whole planning horizon. To show the effectiveness of our method in maximizing the estimation accuracy, we consider two case studies involving a unicycle and a quadrotor that need to estimate their poses while measuring two distances w.r.t. two fixed landmarks. Concurrent estimation of calibration/environment parameters is also considered for illustrating how the proposed method copes with instances of active self-calibration and map building.

Details

  • Title: Online Optimal Perception-Aware Trajectory Generation
  • Authors: Salaris, Paolo; Cognetti, Marco; Spica, Riccardo; Robuffo Giordano, Paolo
  • Date of publication: 9 September 2019
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