Probabilistic Framework for Sensor Management

Probabilistic Framework for Sensor Management

Author: Marco Huber

Publisher: KIT Scientific Publishing

Published: 2009

Total Pages: 184

ISBN-13: 3866444052

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A probabilistic sensor management framework is introduced, which maximizes the utility of sensor systems with many different sensing modalities by dynamically configuring the sensor system in the most beneficial way. For this purpose, techniques from stochastic control and Bayesian estimation are combined such that long-term effects of possible sensor configurations and stochastic uncertainties resulting from noisy measurements can be incorporated into the sensor management decisions.


Physics-Based Probabilistic Motion Compensation of Elastically Deformable Objects

Physics-Based Probabilistic Motion Compensation of Elastically Deformable Objects

Author: Evgeniya Ballmann

Publisher: KIT Scientific Publishing

Published: 2014-07-30

Total Pages: 244

ISBN-13: 3866448627

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A predictive tracking approach and a novel method for visual motion compensation are introduced, which accurately reconstruct and compensate the deformation of the elastic object, even in the case of complete measurement information loss. The core of the methods involves a probabilistic physical model of the object, from which all other mathematical models are systematically derived. Due to flexible adaptation of the models, the balance between their complexity and their accuracy is achieved.


Distributed Sensor Networks

Distributed Sensor Networks

Author: S. Sitharama Iyengar

Publisher: CRC Press

Published: 2004-12-29

Total Pages: 1142

ISBN-13: 1439870780

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The vision of researchers to create smart environments through the deployment of thousands of sensors, each with a short range wireless communications channel and capable of detecting ambient conditions such as temperature, movement, sound, light, or the presence of certain objects is becoming a reality. With the emergence of high-speed networks an


Linear Estimation in Interconnected Sensor Systems with Information Constraints

Linear Estimation in Interconnected Sensor Systems with Information Constraints

Author: Reinhardt, Marc

Publisher: KIT Scientific Publishing

Published: 2015-04-15

Total Pages: 262

ISBN-13: 3731503425

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A ubiquitous challenge in many technical applications is to estimate an unknown state by means of data that stems from several, often heterogeneous sensor sources. In this book, information is interpreted stochastically, and techniques for the distributed processing of data are derived that minimize the error of estimates about the unknown state. Methods for the reconstruction of dependencies are proposed and novel approaches for the distributed processing of noisy data are developed.


Optimal Sequence-Based Control of Networked Linear Systems

Optimal Sequence-Based Control of Networked Linear Systems

Author: Fischer, Joerg

Publisher: KIT Scientific Publishing

Published: 2015-01-12

Total Pages: 184

ISBN-13: 3731503050

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In Networked Control Systems (NCS), components of a control loop are connected by data networks that may introduce time-varying delays and packet losses into the system, which can severly degrade control performance. Hence, this book presents the newly developed S-LQG (Sequence-Based Linear Quadratic Gaussian) controller that combines the sequence-based control method with the well-known LQG approach to stochastic optimal control in order to compensate for the network-induced effects.


On Informative Path Planning for Tracking and Surveillance

On Informative Path Planning for Tracking and Surveillance

Author: Per Boström-Rost

Publisher: Linköping University Electronic Press

Published: 2019-05-23

Total Pages: 106

ISBN-13: 9176850757

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This thesis studies a class of sensor management problems called informative path planning (IPP). Sensor management refers to the problem of optimizing control inputs for sensor systems in dynamic environments in order to achieve operational objectives. The problems are commonly formulated as stochastic optimal control problems, where to objective is to maximize the information gained from future measurements. In IPP, the control inputs affect the movement of the sensor platforms, and the goal is to compute trajectories from where the sensors can obtain measurements that maximize the estimation performance. The core challenge lies in making decisions based on the predicted utility of future measurements. In linear Gaussian settings, the estimation performance is independent of the actual measurements. This means that IPP becomes a deterministic optimal control problem, for which standard numerical optimization techniques can be applied. This is exploited in the first part of this thesis. A surveillance application is considered, where a mobile sensor is gathering information about features of interest while avoiding being tracked by an adversarial observer. The problem is formulated as an optimization problem that allows for a trade-off between informativeness and stealth. We formulate a theorem that makes it possible to reformulate a class of nonconvex optimization problems with matrix-valued variables as convex optimization problems. This theorem is then used to prove that the seemingly intractable IPP problem can be solved to global optimality using off-the-shelf optimization tools. The second part of this thesis considers tracking of a maneuvering target using a mobile sensor with limited field of view. The problem is formulated as an IPP problem, where the goal is to generate a sensor trajectory that maximizes the expected tracking performance, captured by a measure of the covariance matrix of the target state estimate. When the measurements are nonlinear functions of the target state, the tracking performance depends on the actual measurements, which depend on the target’s trajectory. Since these are unavailable in the planning stage, the problem becomes a stochastic optimal control problem. An approximation of the problem based on deterministic sampling of the distribution of the predicted target trajectory is proposed. It is demonstrated in a simulation study that the proposed method significantly increases the tracking performance compared to a conventional approach that neglects the uncertainty in the future target trajectory.


Author:

Publisher: CRC Press

Published:

Total Pages: 1142

ISBN-13: 1135439621

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Proceedings of the 2009 Joint Workshop of Fraunhofer IOSB and Institute for Anthropomatics, Vision and Fusion Laboratory

Proceedings of the 2009 Joint Workshop of Fraunhofer IOSB and Institute for Anthropomatics, Vision and Fusion Laboratory

Author: Jürgen Beyerer

Publisher: KIT Scientific Publishing

Published: 2014-10-16

Total Pages: 258

ISBN-13: 3866444699

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The joint workshop of the Fraunhofer Institute of Optronics, System Technologies and Image Exploitation IOSB, Karlsruhe, and the Vision and Fusion Laboratory (Institute for Anthropomatics, Karlsruhe Institute of Technology (KIT)), is organized annually since 2005 with the aim to report on the latest research and development findings of the doctoral students of both institutions. This book provides a collection of 16 technical reports on the research results presented on the 2009 workshop.


Learning Dynamic Systems for Intention Recognition in Human-Robot-Cooperation

Learning Dynamic Systems for Intention Recognition in Human-Robot-Cooperation

Author: Peter Krauthausen

Publisher: KIT Scientific Publishing

Published: 2014-07-31

Total Pages: 240

ISBN-13: 3866449526

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This thesis is concerned with intention recognition for a humanoid robot and investigates how the challenges of uncertain and incomplete observations, a high degree of detail of the used models, and real-time inference may be addressed by modeling the human rationale as hybrid, dynamic Bayesian networks and performing inference with these models. The key focus lies on the automatic identification of the employed nonlinear stochastic dependencies and the situation-specific inference.


Deterministic Sampling for Nonlinear Dynamic State Estimation

Deterministic Sampling for Nonlinear Dynamic State Estimation

Author: Gilitschenski, Igor

Publisher: KIT Scientific Publishing

Published: 2016-04-19

Total Pages: 198

ISBN-13: 3731504731

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The goal of this work is improving existing and suggesting novel filtering algorithms for nonlinear dynamic state estimation. Nonlinearity is considered in two ways: First, propagation is improved by proposing novel methods for approximating continuous probability distributions by discrete distributions defined on the same continuous domain. Second, nonlinear underlying domains are considered by proposing novel filters that inherently take the underlying geometry of these domains into account.