Distributed Multi Target Tracking In A Wireless Sensor Network Using Diffusion Strategies And Adaptive Combiners PDF Download

Are you looking for read ebook online? Search for your book and save it on your Kindle device, PC, phones or tablets. Download Distributed Multi Target Tracking In A Wireless Sensor Network Using Diffusion Strategies And Adaptive Combiners PDF full book. Access full book title Distributed Multi Target Tracking In A Wireless Sensor Network Using Diffusion Strategies And Adaptive Combiners.

Distributed Multi-target Tracking in a Wireless Sensor Network Using Diffusion Strategies and Adaptive Combiners

Distributed Multi-target Tracking in a Wireless Sensor Network Using Diffusion Strategies and Adaptive Combiners
Author: Jaume Anguera-Peris
Publisher:
Total Pages:
Release: 2016
Genre:
ISBN:

Download Distributed Multi-target Tracking in a Wireless Sensor Network Using Diffusion Strategies and Adaptive Combiners Book in PDF, ePub and Kindle

Wireless sensor networks (WSN) have been attracting attention over the past years owing to their capability to observe the environment, process the data, and make decisions. These features have gained importance in the context of object detection and localization, surveillance, and environmental monitoring. Specifically, there is an ongoing trend of solving these problems in a distributed manner, i.e., without the use of a central node controlling all the data generated and exchanged over the network. This project presents an algorithm for tracking multiple objects in a distributed manner using a wireless sensor network. In addition to the objects' locations, the strength of the field that they generate is considered as an unknown parameter to be estimated. The proposed algorithm is based on a diffusion cooperation scheme, which has been shown to provide good performance in distributed implementations. Our algorithm is based on explicit, non-linear tracking, and as such is not restricted to a pre-specified quantization grid in space. We allow for imperfect communication links, where information packets can be lost, and rely on an efficient adaptive combination strategy to improve robust- ness to node and link failures. Performance is analyzed in terms of the mean-squared error (MSE) as a function of the signal-to-noise ratio (SNR), in situations with different number of objects moving across the field and different probability of packet loss.


Distributed Target Tracking and Synchronization in Wireless Sensor Networks

Distributed Target Tracking and Synchronization in Wireless Sensor Networks
Author: Jichuan Li
Publisher:
Total Pages: 122
Release: 2016
Genre: Electronic dissertations
ISBN:

Download Distributed Target Tracking and Synchronization in Wireless Sensor Networks Book in PDF, ePub and Kindle

Wireless sensor networks provide useful information for various applications but pose challenges in scalable information processing and network maintenance. This dissertation focuses on statistical methods for distributed information fusion and sensor synchronization for target tracking in wireless sensor networks. We perform target tracking using particle filtering. For scalability, we extend centralized particle filtering to distributed particle filtering via distributed fusion of local estimates provided by individual sensors. We derive a distributed fusion rule from Bayes' theorem and implement it via average consensus. We approximate each local estimate as a Gaussian mixture and develop a sampling-based approach to the nonlinear fusion of Gaussian mixtures. By using the sampling-based approach in the fusion of Gaussian mixtures, we do not require each Gaussian mixture to have a uniform number of mixture components, and thus give each sensor the flexibility to adaptively learn a Gaussian mixture model with the optimal number of mixture components, based on its local information. Given such flexibility, we develop an adaptive method for Gaussian mixture fitting through a combination of hierarchical clustering and the expectation-maximization algorithm. Using numerical examples, we show that the proposed distributed particle filtering algorithm improves the accuracy and communication efficiency of distributed target tracking, and that the proposed adaptive Gaussian mixture learning method improves the accuracy and computational efficiency of distributed target tracking. We also consider the synchronization problem of a wireless sensor network. When sensors in a network are not synchronized, we model their relative clock offsets as unknown parameters in a state-space model that connects sensor observations to target state transition. We formulate the synchronization problem as a joint state and parameter estimation problem and solve it via the expectation-maximization algorithm to find the maximum likelihood solution for the unknown parameters, without knowledge of the target states. We also study the performance of the expectation-maximization algorithm under the Monte Carlo approximations used by particle filtering in target tracking. Numerical examples show that the proposed synchronization method converges to the ground truth, and that sensor synchronization significantly improves the accuracy of target tracking.


Energy Efficient Multi-target Tracking in Heterogeneous Wireless Sensor Networks

Energy Efficient Multi-target Tracking in Heterogeneous Wireless Sensor Networks
Author: Kaustubh Dhondge
Publisher:
Total Pages: 40
Release: 2011
Genre: Electronic dissertations
ISBN:

Download Energy Efficient Multi-target Tracking in Heterogeneous Wireless Sensor Networks Book in PDF, ePub and Kindle

Tracking multiple targets in an energy efficient way is an important challenge in wireless sensor networks (WSNs). While most of the prior work consider tracking multiple targets as execution of single target tracking algorithms multiple times and utilize only single parameters for efficient energy consumption, we identify multiple parameters that can influence the energy efficiency of sensors in the WSN. We observe that there are several impacting parameters that can affect the energy efficiency of the sensors in the WSN which are: the relative location of the sensor with respect to the target's motion, multiple targets tracked by the sensor, and the remaining energy in the sensor. These impacting parameters are used to decide the tracking state of the sensors and further, our observations reveal the implications of combining these parameters and we identify that the optimal energy consumption is governed by their usage in particular network conditions. Based on these observations we proceed to propose our Adaptive Multi-Target Tracking (AMTT) algorithm that can identify the local network conditions for individual sensors in distributed environment without any centralized co-ordination, and uses required combination of impacting parameters to achieve energy efficiency.


Distributed Tracking and Information-drivien Control for Mobile Sensor Networks

Distributed Tracking and Information-drivien Control for Mobile Sensor Networks
Author: Parisa Jalalkamali
Publisher:
Total Pages: 238
Release: 2012
Genre:
ISBN:

Download Distributed Tracking and Information-drivien Control for Mobile Sensor Networks Book in PDF, ePub and Kindle

"The main research objective of this thesis is to address distributed target tracking for mobile sensor networks. Based on real-life limitations, we are particularly interested in mobile sensors with Limited Sensing Range (LSR). There are three possible multi-target tracking scenarios for n mobile sensors tracking m targets: i) many sensors tracking few targets n ” m (e.g. tracking high-valued targets), ii) a few sensors track many targets n “ m (e.g. the sensor coverage problem and situational awareness in a crowded airport terminal), and iii) swarms of sensors tracking swarms of targets n,m ” 1 (e.g. selflocalization of autonomous vehicles in intellegent transportation systems). First, we show that all three problems can be posed as coupled distributed estimation and control problems for mobile sensor networks. To tackle this estimation and control problem, we propose a unified theoretical framework in which every mobile agent (or sensor) has a two-fold objective: a) maintaining a safe distance (or minimum separation) from neighboring mobile agents during target tracking and b) enhancing the quality of sensed information collectively by the team of sensors to improve the performance of distributed estimation. In many real-life applications, the quality of sensed data is a function of the proximity to the target. We propose an information-theoretic measure for quality of sensed data by each sensor called the information value as the trace of the Fisher Information Matrix (FIM). This metric of quality of sensed data plays a key role in all of our proposed distributed tracking and control algorithms. We show that objective a) of any mobile agent is fundamentally a "collision-avoidance" (or "separation") objective that is a byproduct of flocking behavior for multi-agent systems [48], while objective b) for LSR-type sensors requires solving an additional control problem to enhance the collective information value of the team of agents. We refer to the latter problem as the information-driven control problem. For distributed tracking on mobile networks, we apply Information Filter and Kalman-Consensus Filter (KCF) as effective algorithms for distributed multi-target tracking on networks. The other problem of interest is the formal stability analysis of the coupled distributed estimation and flocking-based mobility-control and self-deployment algorithms for problems i) and ii). We prove that the error dynamics of the KCF and the structural dynamics of the flock of sensors from a cascade nonlinear system and provide a Lyapunov-based stability analysis of case i). We present additional theoretical results on analysis of information-driven control and tracking algoritjms for problems i) and ii) together with successful experimental results. In addition, we identify the key questions regarding problem iii) that remains the subject of ongoing and future research."


Distributed Target Engagement in Large-scale Mobile Sensor Networks

Distributed Target Engagement in Large-scale Mobile Sensor Networks
Author: Samaneh Hosseini Semnani
Publisher:
Total Pages: 194
Release: 2015
Genre:
ISBN:

Download Distributed Target Engagement in Large-scale Mobile Sensor Networks Book in PDF, ePub and Kindle

Sensor networks comprise an emerging field of study that is expected to touch many aspects of our life. Research in this area was originally motivated by military applications. Afterward sensor networks have demonstrated tremendous promise in many other applications such as infrastructure security, environment and habitat monitoring, industrial sensing, traffic control, and surveillance applications. One key challenge in large-scale sensor networks is the efficient use of the network's resources to collect information about objects in a given Volume of Interest (VOI). Multi-sensor Multi-target tracking in surveillance applications is an example where the success of the network to track targets in a given volume of interest, efficiently and effectively, hinges significantly on the network's ability to allocate the right set of sensors to the right set of targets so as to achieve optimal performance. This task can be even more complicated if the surveillance application is such that the sensors and targets are expected to be mobile. To ensure timely tracking of targets in a given volume of interest, the surveillance sensor network needs to maintain engagement with all targets in this volume. Thus the network must be able to perform the following real-time tasks: 1) sensor-to-target allocation; 2) target tracking; 3) sensor mobility control and coordination. In this research I propose a combination of the Semi-Flocking algorithm, as a multi-target motion control and coordination approach, and a hierarchical Distributed Constraint Optimization Problem (DCOP) modelling algorithm, as an allocation approach, to tackle target engagement problem in large-scale mobile multi-target multi-sensor surveillance systems. Sensor-to-target allocation is an NP-hard problem. Thus, for sensor networks to succeed in such application, an efficient approach that can tackle this NP-hard problem in real-time is disparately needed. This research work proposes a novel approach to tackle this issue by modelling the problem as a Hierarchical DCOP. Although DCOPs has been proven to be both general and efficient they tend to be computationally expensive, and often intractable for large-scale problems. To address this challenge, this research proposes to divide the sensor-to-target allocation problem into smaller sub-DCOPs with shared constraints, eliminating significant computational and communication costs. Furthermore, a non-binary variable modelling is presented to reduce the number of inter-agent constraints. Target tracking and sensor mobility control and coordination are the other main challenges in these networks. Biologically inspired approaches have recently gained significant attention as a tool to address this issue. These approaches are exemplified by the two well-known algorithms, namely, the Flocking algorithm and the Anti-Flocking algorithm. Generally speaking, although these two biologically inspired algorithms have demonstrated promising performance, they expose deficiencies when it comes to their ability to maintain simultaneous reliable dynamic area coverage and target coverage. To address this challenge, Semi-Flocking, a biologically inspired algorithm that benefits from key characteristics of both the Flocking and Anti-Flocking algorithms, is proposed. The Semi-Flocking algorithm approaches the problem by assigning a small flock of sensors to each target, while at the same time leaving some sensors free to explore the environment. Also, this thesis presents an extension of the Semi-Flocking in which it is combined with a constrained clustering approach to provide better coverage over maneuverable targets. To have a reliable target tracking, another extension of Semi-Flocking algorithm is presented which is a coupled distributed estimation and motion control algorithm. In this extension the Semi-Flocking algorithm is employed for the purpose of a multi-target motion control, and Kalman-Consensus Filter (KCF) for the purpose of motion estimation. Finally, this research will show that the proposed Hierarchical DCOP algorithm can be elegantly combined with the Semi-Flocking algorithm and its extensions to create a coupled control and allocation approach. Several experimental analysis conducted in this research illustrate how the operation of the proposed algorithms outperforms other approaches in terms of incurred computational and communication costs, area coverage, target coverage for both linear and maneuverable targets, target detection time, number of undetected targets and target coverage in noise conditions sensor network. Also it is illustrated that this algorithmic combination can successfully engage multiple sensors to multiple mobile targets such that the number of uncovered targets is minimized and the sensors' mean utilization factor sensor surveillance systems.is maximized.


Cooperative Target Tracking in a Distributed Autonomous Sensor Network

Cooperative Target Tracking in a Distributed Autonomous Sensor Network
Author:
Publisher:
Total Pages: 7
Release: 2006
Genre:
ISBN:

Download Cooperative Target Tracking in a Distributed Autonomous Sensor Network Book in PDF, ePub and Kindle

This paper describes an investigation into the control of multiple, cooperating autonomous sensor platforms operating in a marine sensor network. Distributed sensors allow us to view phenomena of interest from multiple, simultaneous vantage points, creating significant processing gain from the spatial diversity. The major objective of this paper is to describe a framework for adaptive and cooperative control of the autonomous sensor platforms in such a network. This framework has two major components, an intelligent sensor that provides highlevel state information to a behavior-based autonomous vehicle control system and a new approach to behavior-based control of autonomous vehicles using multiple objective functions that allows reactive control in complex environments with multiple constraints. Experimental results are presented for a 2-D target tracking application in which a pair of fully autonomous surface craft using simulated bearing sensors acquire and track a moving target. From these results, it is readily seen that there is the potential for potent synergy from the cooperation of multiple sensor platforms.


Multi-sensor Target Tracking

Multi-sensor Target Tracking
Author: Jun Ye Yu
Publisher:
Total Pages:
Release: 2019
Genre:
ISBN:

Download Multi-sensor Target Tracking Book in PDF, ePub and Kindle

"Target tracking is a well-studied research topic with a vast array of applications. The basic idea is to track one or more targets of interest using data collected by one or more sensors. While a single sensor may provide enough data, it is more beneficial to establish a network of sensors that collaborate with each other. In this thesis, we study multi-sensor target tracking and present three manuscripts.In the first manuscript, we present a distributed bearings-only single-target particle filter. Unlike the existing literature, the proposed filter incorporates the Earth's curvature in the measurement model to provide more accurate bearing computation. Furthermore, we derive an approximate joint log-likelihood function to reduce the total communication overhead. In the second manuscript, we extend our work in the first manuscript and present two compression algorithms for distributed particle filters. The proposed algorithms construct a graph over the particles and exploit the resulting graph Laplacian matrix to encode the particle log-likelihoods. The proposed algorithms are not limited to any measurement models and can be incorporated in any generic particle filter. We also derive theoretical results showing that the proposed algorithms outperform existing methods at low communication overhead. In the third manuscript, we study data assignment in multi-target tracking. We propose two heuristic but computationally efficient algorithms for multi-sensor multi-target data assignment that can generate a number of likely target-measurement associations. We also implement these algorithms in a generalized labeled multi-Bernoulli filter to validate their performance." --


Distributed Tracking in Wireless Ad Hoc Sensor Networks

Distributed Tracking in Wireless Ad Hoc Sensor Networks
Author:
Publisher:
Total Pages: 8
Release: 2003
Genre:
ISBN:

Download Distributed Tracking in Wireless Ad Hoc Sensor Networks Book in PDF, ePub and Kindle

Target tracking is an important application for wireless ad hoc sensor networks. Because of the energy and communication constraints imposed by the size of the sensors, the processing has to be distributed over the sensor nodes. This paper discusses issues associated with distributed multiple target tracking for ad hoc sensor networks and examines the applicability of tracking algorithms developed for traditional networks of large sensors. when data association is not an issue, the standard pre- predict/update structure in single target tracking can be used to assign individual tracks to the sensor nodes based on their locations. Track ownership will have to be carefully migrated, using for example information driven sensor tasking, to minimize the need for communication when targets move. when data association is needed in tracking multiple interacting targets, clusters of tracks should be assigned to groups of collaborating nodes. Some recent examples of this type of distributed processing are given. Keywords: Wireless ad hoc sensor networks, multiple target tracking, distributed tracking.