dc.contributor.author |
Kaminskyi, Yurii
|
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dc.date.accessioned |
2019-02-19T10:19:06Z |
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dc.date.available |
2019-02-19T10:19:06Z |
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dc.date.issued |
2019 |
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dc.identifier.citation |
Kaminskyi, Yurii. Semantic segmentation for visual indoor localization : Master Thesis : manuscript / Yurii Kaminskyi ; Supervisor Jiri Sedlar, Ph. D. ; Ukrainian Catholic University, Department of Computer Sciences. – Lviv : [s.n.], 2019. – 30 p. : ill. |
uk |
dc.identifier.uri |
http://er.ucu.edu.ua/handle/1/1329 |
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dc.language.iso |
en |
uk |
dc.subject |
semantic segmentation |
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dc.subject |
indoor localization |
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dc.subject |
Mask R-CNN |
uk |
dc.title |
Semantic segmentation for visual indoor localization |
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dc.type |
Preprint |
uk |
dc.status |
Публікується вперше |
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dc.description.abstracten |
The problem of visual localization and navigation in the 3D environment is a key to
solving a vast variety of practical tasks. For example in robotics, where the machine
is required to locate itself on the 3D map and steer to a specific location. Another
example is a personal assistant in the form of a mobile phone or smart glasses that
uses augmented reality techniques to navigate the user seamlessly in large indoor
spaces such as airports, hospitals, shopping malls or office buildings.
The purpose of this work was to improve the performance of the InLoc localization
pipeline that gives state-of-the-art results for indoor visual localization problem.
That was done by developing relevant semantic features. Namely, we introduce a
variety of features as a result of two different segmentation models: Mask R-CNN
and CSAIL. We evaluate the quality of generated features and add the features of
the better performing model into the InLoc localization pipeline.
With the introduced features we improved the performance of the InLoc localization
pipeline and introduced approaches for further research. |
uk |