• Media type: Electronic Thesis; Doctoral Thesis; E-Book
  • Title: Knowledge-aided Sensor Data Processing for Maritime Situational Awareness
  • Contributor: Battistello, Giulia [Author]
  • imprint: Universitäts- und Landesbibliothek Bonn, 2021-10-05
  • Language: English
  • DOI: https://doi.org/20.500.11811/9341
  • Keywords: constrained Bayesian filtering ; Kullback-Leibler divergence ; Extended Kalman filter ; vessel route prediction ; vessel monitoring ; knowledge-based MHT ; target tracking ; particle filter ; context information ; maritime situational awareness ; sea lane assisted target tracking ; AIS ; passive radar ; navigational field assisted target tracking ; Knowledge base ; coastal radar ; data association
  • Origination:
  • Footnote: Diese Datenquelle enthält auch Bestandsnachweise, die nicht zu einem Volltext führen.
  • Description: The research work focuses on the development of innovative sensor data processing techniques for traffic surveillance, which aim at improving the performance yielded by state-of-the-art tracking solutions when a dynamically evolving target scenario is sensed by heterogeneous, geographically distributed sensors. Specifically, the maritime environment is considered, since the lack or deficiencies of customized techniques is currently in the spotlight due to the rising of events such as illegal migration, sea piracy, and accidents in new highly-trafficked sea routes. Maritime surveillance applications rely on multiple sensors, which might be located on the coast, on board patrolling or commercial vessels, or air/space-based platforms. This plethora of information sources urges for ad hoc data processing techniques. However, such techniques suffer from intrinsic problems due to the characteristics of the vessel traffic or to the space/time constraints of the observations. Specifically, the PhD work aims at facing the following - often recorded - phenomena that hinder target tracking and identification performance: (i) lack and/or intermittence of sensor measurements due to occlusions or limited sensor coverage; (ii) spoofed or erroneous position messages from ships and (iii) false alarms originated by the sensors due to the presence of clutter (e.g. echoes from land and wind parks). These phenomena, experienced by active and passive coastal radars and collaborative systems such as Automatic Identifications Systems or Long Range Identification and Tracking system, lead to discontinuous, inaccurate and false vessel tracks in the maritime traffic picture. The fundamental concept proposed by the PhD work is the exploitation of external information in the target tracking stage. This is specifically valid in the maritime context, which is rich in contextual (e.g., coastline, location of ports, sea lanes, corridors and interdicted areas, oil spills, clutter conditions) and target-related information (e.g., target ...
  • Access State: Open Access
  • Rights information: In Copyright