Closed-Loop Bayesian Semantic Data Fusion for Collaborative Human-Autonomy Target Search

In search applications, autonomous unmanned vehicles must be able to efficiently reacquire and localize mobile targets that can remain out of view for long periods of time in large spaces. As such, all available information sources must be actively leveraged - including imprecise but readily available semantic observations provided by humans. To achieve this, this work develops and validates a novel collaborative human-machine sensing solution for dynamic target search. Our approach uses continuous partially observable Markov decision process (CPOMDP) planning to generate vehicle trajectories that optimally exploit imperfect detection data from onboard sensors, as well as semantic natural language observations that can be specifically requested from human sensors. The key innovation is a scalable hierarchical Gaussian mixture model formulation for efficiently solving CPOMDPs with semantic observations in continuous dynamic state spaces. The approach is demonstrated and validated with a real human-robot team engaged in dynamic indoor target search and capture scenarios on a custom testbed.

[1]  Nisar Ahmed,et al.  Structured synthesis and compression of semantic human sensor models for Bayesian estimation , 2016, 2016 American Control Conference (ACC).

[2]  Joelle Pineau,et al.  Point-based value iteration: An anytime algorithm for POMDPs , 2003, IJCAI.

[3]  Nisar R. Ahmed,et al.  Bayesian Multicategorical Soft Data Fusion for Human–Robot Collaboration , 2013, IEEE Transactions on Robotics.

[4]  Mark E. Campbell,et al.  Scalable Bayesian human-robot cooperation in mobile sensor networks , 2008, 2008 IEEE/RSJ International Conference on Intelligent Robots and Systems.

[5]  FGAN-FKIE Neuenahrer On ‘ Negative ’ Information in Tracking and Sensor Data Fusion : Discussion of Selected Examples , 2004 .

[6]  Alexei Makarenko,et al.  Human-robot communication for collaborative decision making - A probabilistic approach , 2010, Robotics Auton. Syst..

[7]  Pascal Poupart,et al.  Point-Based Value Iteration for Continuous POMDPs , 2006, J. Mach. Learn. Res..

[8]  Alexei Makarenko,et al.  Shared environment representation for a human‐robot team performing information fusion , 2007, J. Field Robotics.

[9]  Siddhartha S. Mehta,et al.  Information fusion in human-robot collaboration using neural network representation , 2014, 2014 IEEE International Conference on Systems, Man, and Cybernetics (SMC).

[10]  Leslie Pack Kaelbling,et al.  Planning in partially-observable switching-mode continuous domains , 2010, Annals of Mathematics and Artificial Intelligence.

[11]  A.R. Runnalls,et al.  A Kullback-Leibler Approach to Gaussian Mixture Reduction , 2007 .

[12]  Luke Burks,et al.  Optimal continuous state POMDP planning with semantic observations , 2017, 2017 IEEE 56th Annual Conference on Decision and Control (CDC).

[13]  Fakhri Karray,et al.  Random finite set theoretic based soft/hard data fusion with application for target tracking , 2010, 2010 IEEE Conference on Multisensor Fusion and Integration.

[14]  Nikos A. Vlassis,et al.  Perseus: Randomized Point-based Value Iteration for POMDPs , 2005, J. Artif. Intell. Res..

[15]  David Hsu,et al.  SARSOP: Efficient Point-Based POMDP Planning by Approximating Optimally Reachable Belief Spaces , 2008, Robotics: Science and Systems.