Computer vision methods applied to person tracking and identification
Abstract
Computer vision methods for tracking and identification of people in constrained
and unconstrained environments have been widely explored in the last decades. De-
spite of the active research on these topics, they are still open problems for which
standards and/or common guidelines have not been defined yet. Application fields
of computer vision-based tracking systems are almost infinite. Nowadays, the Aug-
mented Reality is a very active field of the research that can benefit from vision-based
user’s tracking to work. Being defined as the fusion of real with virtual worlds, the
success of an augmented reality application is completely dependant on the efficiency
of the exploited tracking method. This work of thesis covers the issues related to
tracking systems in augmented reality applications proposing a comprehensive and
adaptable framework for marker-based tracking and a deep formal analysis. The
provided analysis makes possible to objectively assess and quantify the advantages
of using augmented reality principles in heterogeneous operative contexts. Two case
studies have been considered, that are the support to maintenance in an industrial
environment and to electrocardiography in a typical telemedicine scenario. Advan-
tages and drawback are provided as well as future directions of the proposed study.
The second topic covered in this thesis relates to the vision-based tracking solution
for unconstrained outdoor environments. In video surveillance domain, a tracker
is asked to handle variations in illumination, cope with appearance changes of the
tracked objects and, possibly, predict motion to better anticipate future positions. ... [edited by Author]