My Account Log in

1 option

Active information acquisition with mobile robots / Nikolay Asenov Atanasov.

LIBRA TK001 2015 .A862
Loading location information...

Available from offsite location This item is stored in our repository but can be checked out.

Log in to request item
Format:
Book
Manuscript
Thesis/Dissertation
Author/Creator:
Atanasov, Nikolay Asenov, author.
Contributor:
Pappas, George J., degree supervisor.
Daniilidis, Kostas, degree supervisor.
Kumar, Vijay, degree committee member.
Le Ny, Jérôme, degree committee member.
Lee, Daniel D., degree committee member.
Soatto, Stefano, degree committee member.
University of Pennsylvania. Department of Electrical and Systems Engineering, degree granting institution.
Language:
English
Subjects (All):
Penn dissertations--Electrical and systems engineering.
Electrical and systems engineering--Penn dissertations.
Local Subjects:
Penn dissertations--Electrical and systems engineering.
Electrical and systems engineering--Penn dissertations.
Physical Description:
xix, 176 leaves : illustrations (some color) ; 29 cm
Production:
[Philadelphia, Pennsylvania] : University of Pennsylvania, 2015.
Summary:
The recent proliferation of sensors and robots has potential to transform fields as diverse as environmental monitoring, security and surveillance, localization and mapping, and structure inspection. One of the great technical challenges in these scenarios is to control the sensors and robots in order to extract accurate information about various physical phenomena autonomously. The goal of this dissertation is to provide a unified approach for active information acquisition with a team of sensing robots. We formulate a decision problem for maximizing relevant information measures, constrained by the motion capabilities and sensing modalities of the robots, and focus on the design of a scalable control strategy for the robot team.
The first part of the dissertation studies the active information acquisition problem in the special case of linear Gaussian sensing and mobility models. We show that the classical principle of separation between estimation and control holds in this case. It enables us to reduce the original stochastic optimal control problem to a deterministic version and to provide an optimal centralized solution. Unfortunately, the complexity of obtaining the optimal solution scales exponentially with the length of the planning horizon and the number of robots. We develop approximation algorithms to manage the complexity in both of these factors and provide theoretical performance guarantees. Applications in gas concentration mapping, joint localization and vehicle tracking in sensor networks, and active multi-robot localization and mapping are presented. Coupled with linearization and model predictive control, our algorithms can even generate adaptive control policies for nonlinear sensing and mobility models.
Linear Gaussian information seeking, however, cannot be applied directly in the presence of sensing nuisances such as missed detections, false alarms, and ambiguous data association or when some sensor observations are discrete (e.g., object classes, medical alarms) or, even worse, when the sensing and target models are entirely unknown. The second part of the dissertation considers these complications in the context of two applications: active localization from semantic observations (e.g., recognized objects) and radio signal source seeking. The complexity of the target inference problem forces us to resort to greedy planning of the sensor trajectories.
Non-greedy closed-loop information acquisition with general discrete models is achieved in the final part of the dissertation via dynamic programming and Monte Carlo tree search algorithms. Applications in active object recognition and pose estimation are presented. The techniques developed in this thesis offer an effective and scalable approach for controlled information acquisition with multiple sensing robots and have broad applications to environmental monitoring, search and rescue, security and surveillance, localization and mapping, precision agriculture, and structure inspection.
Notes:
Ph. D. University of Pennsylvania 2015.
Department: Electrical and Systems Engineering.
Supervisor: George J. Pappas; Kostas Daniilidis.
Includes bibliographical references.
OCLC:
950058393

The Penn Libraries is committed to describing library materials using current, accurate, and responsible language. If you discover outdated or inaccurate language, please fill out this feedback form to report it and suggest alternative language.

My Account

Shelf Request an item Bookmarks Fines and fees Settings

Guides

Using the Library Catalog Using Articles+ Library Account