Spelling suggestions: "subject:"multitarget cracking (MTT)"" "subject:"multitarget fracking (MTT)""
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MULTI-TARGET TRACKING AND IDENTITY MANAGEMENT USING MULTIPLE MOBILE SENSORSChiyu Zhang (8660301) 16 April 2020 (has links)
<p>Due to their rapid
technological advancement, mobile sensors such as unmanned aerial vehicles (UAVs) are
seeing growing application in the area of multi-target tracking and identity management
(MTIM). For efficient and sustainable performance of a MTIM system with mobile
sensors, proper algorithms are needed to both effectively estimate the
states/identities of targets from sensing data and optimally guide the mobile sensors based
on the target estimates. One major challenge in MTIM is that a target may be
temporarily lost due to line-of-sight breaks or corrupted sensing data in cluttered
environments. It is desired that these targets are kept tracking and identification, especially
when they reappear after the temporary loss of detection. Another challenging task
in MTIM is to correctly track and identify targets during track coalescence,
where multiple targets get close to each other and could be hardly distinguishable.
In addition, while the number of targets in the sensors’ surveillance region is
usually unknown and time-varying in practice, many existing MTIM algorithms assume
their number of targets to be known and constant, thus those algorithms could not
be directly applied to real scenarios.</p>
<p>In this research, a set of
solutions is developed to address three particular issues in MTIM that involves the
above challenges: 1) using a single mobile sensor with a limited sensing range to
track multiple targets, where the targets may occasionally lose detection; 2) using a
network of mobile sensors to actively seek and identify targets to improve the accuracy of
multi-target identity management; and 3) tracking and managing the identities of an unknown and
time-varying number of targets in clutter.</p>
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ILoViT: Indoor Localization via Vibration TrackingPoston, Jeffrey Duane 23 April 2018 (has links)
Indoor localization remains an open problem in geolocation research, and once this is solved the localization enables counting and tracking of building occupants.
This information is vital in an emergency, enables occupancy-optimized heating or cooling, and assists smart buildings in tailoring services for occupants. Unfortunately, two prevalent technologies---GPS and cellular-based positioning---perform poorly indoors due to attenuation and multipath from the building. To address this issue, the research community devised many alternatives for indoor localization (e.g., beacons, RFID tags, Wi-Fi fingerprinting, and UWB to cite just a few examples). A drawback with most is the requirement for those being located to carry a properly-configured device at all times. An alternative based on computer vision techniques poses significant privacy concerns due to cameras recording building occupants. By contrast, ILoViT research makes novel use of accelerometers already present in some buildings. These sensors were originally intended to monitor structural health or to study structural dynamics. The key idea is that when a person's footstep-generated floor vibrations can be detected and located then it becomes possible to locate persons moving within a building. Vibration propagation in buildings has complexities not encountered by acoustic or radio wave propagation in air; thus, conventional localization algorithms are inadequate. ILoVIT algorithms account for these conditions and have been demonstrated in a public building to provide sub-meter accuracy. Localization provides the foundation for counting and tracking, but providing these additional capabilities confronts new challenges. In particular, how does one determine the correct association of footsteps to the person making them? The ILoViT research created two methods for solving the data association problem. One method only provides occupancy counting but has modest, polynomial time complexity. The other method draws inspiration from prior work in the radar community on the multi-target tracking problem, specifically drawing from the multiple hypothesis tracking strategy. This dissertation research makes new enhancements to this tracking strategy to account for human gait and characteristics of footstep-derived multilateration. The Virginia Polytechnic Institute and State University's College of Engineering recognized this dissertation research with the Paul E. Torgersen Graduate Student Research Excellence Award. / Ph. D. / Indoor localization remains an open problem in geolocation research, and once this is solved the localization enables counting and tracking of building occupants. This information is vital in an emergency, enables occupancy-optimized heating or cooling and assists smart buildings in tailoring services for occupants. Unfortunately, two prevalent technologies—GPS and cellular-based positioning—are ill-suited here due to the way a building’s weakens and distorts wireless signals. To address this issue the research community devised many alternatives for indoor localization. A drawback with most is the requirement for those being located to carry a properly-configured device at all times. An alternative based on computer vision techniques poses significant privacy concerns due to cameras recording building occupants. By contrast, ILoViT research makes novel use of a mature sensor technology already present in some buildings. These sensors were originally intended to monitor structural health or to study structural dynamics. The key idea behind this unconventional role for building sensors is that when a person’s footstep-generated floor vibrations can be detected and located then it is possible to locate persons moving within a building. Vibration propagation in buildings has complexities not encountered by acoustic or radio wave propagation in air; thus, conventional localization algorithms designed for those applications are inadequate. ILoVIT algorithms account for these conditions and have been demonstrated in a public building to provide sub-meter accuracy. Localization provides the foundation for counting and tracking, but providing these additional capabilities confronts new challenges. In particular, how does one determine the correct association of footsteps to the person making them? The ILoViT research created two methods for solving the data association problem. One method only provides area occupancy counting but has modest complexity. The other method draws inspiration from prior work in the radar community on the multi-target tracking problem, and the dissertation research makes new enhancements to account for human gait and footstep-based localization. The Virginia Polytechnic Institute and State University’s College of Engineering recognized this dissertation research with the Paul E. Torgersen Graduate Student Research Excellence Award.
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MULTI-TARGET TRACKING ALGORITHMS FOR CLUTTERED ENVIRONMENTSDo hyeung Kim (8052491) 03 December 2019 (has links)
<div>Multi-target tracking (MTT) is the problem to simultaneously estimate the number of targets and their states or trajectories. Numerous techniques have been developed for over 50 years, with a multitude of applications in many fields of study; however, there are two most widely used approaches to MTT: i) data association-based traditional algorithms; and ii) finite set statistics (FISST)-based data association free Bayesian multi-target filtering algorithms. Most data association-based traditional filters mainly use a statistical or simple model of the feature without explicitly considering the correlation between the target behavior</div><div>and feature characteristics. The inaccurate model of the feature can lead to divergence of the estimation error or the loss of a target in heavily cluttered and/or low signal-to-noise ratio environments. Furthermore, the FISST-based data association free Bayesian multi-target filters can lose estimates of targets frequently in harsh environments mainly</div><div>attributed to insufficient consideration of uncertainties not only measurement origin but also target's maneuvers.</div><div>To address these problems, three main approaches are proposed in this research work: i) new feature models (e.g., target dimensions) dependent on the target behavior</div><div>(i.e., distance between the sensor and the target, and aspect-angle between the longitudinal axis of the target and the axis of sensor line of sight); ii) new Gaussian mixture probability hypothesis density (GM-PHD) filter which explicitly considers the uncertainty in the measurement origin; and iii) new GM-PHD filter and tracker with jump Markov system models. The effectiveness of the analytical findings is demonstrated and validated with illustrative target tracking examples and real data collected from the surveillance radar.</div>
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