Arrow Research search

Author name cluster

Hannes Becker

Possible papers associated with this exact author name in Arrow. This page groups case-insensitive exact name matches and is not a full identity disambiguation profile.

2 papers
2 author rows

Possible papers

2

AAAI Conference 2019 Conference Paper

Bounded Suboptimal Search with Learned Heuristics for Multi-Agent Systems

  • Markus Spies
  • Marco Todescato
  • Hannes Becker
  • Patrick Kesper
  • Nicolai Waniek
  • Meng Guo

A wide range of discrete planning problems can be solved optimally using graph search algorithms. However, optimal search quickly becomes infeasible with increased complexity of a problem. In such a case, heuristics that guide the planning process towards the goal state can increase performance considerably. Unfortunately, heuristics are often unavailable or need manual and time-consuming engineering. Building upon recent results on applying deep learning to learn generalized reactive policies, we propose to learn heuristics by imitation learning. After learning heuristics based on optimal examples, they are used to guide a classical search algorithm to solve unseen tasks. However, directly applying learned heuristics in search algorithms such as A∗ breaks optimality guarantees, since learned heuristics are not necessarily admissible. Therefore, we (i) propose a novel method that utilizes learned heuristics to guide Focal Search A∗, a variant of A∗ with guarantees on bounded suboptimality; (ii) compare the complexity and performance of jointly learning individual policies for multiple robots with an approach that learns one policy for all robots; (iii) thoroughly examine how learned policies generalize to previously unseen environments and demonstrate considerably improved performance in a simulated complex dynamic coverage problem.

IROS Conference 2010 Conference Paper

Recognizing people based on their footsteps using a wearable accelerometer

  • Hannes Becker
  • Wolfram Burgard

Collaboration of mobile robots and people generate the need for methods allowing the robot to reliable identify a person. The robust identification of the user is especially important in the context of people tracking when there are frequent occlusions. In this paper we present a novel approach for recognizing the user of a mobile robot. Our approach assumes that the user wears a mobile footstep sensor whose data are fused with footstep data extracted from leg movements of people. It relies on a recursive Bayesian estimation scheme to calculate a posterior about the potential associations between the different footstep perceptions. Our approach has been implemented and tested on real data. In simulated experiments, in which we use ground truth leg movement data recorded with a motion capture suite, and with a real robot we demonstrate the robustness of our method even when multiple people are present.