Towards Efficient Visual Place Recognition Methods in Challenging Environments by Adaptive Representations
Citation:
Aljuaidi, Reem, Towards Efficient Visual Place Recognition Methods in Challenging Environments by Adaptive Representations, Trinity College Dublin, School of Computer Science & Statistics, Computer Science, 2023Download Item:

Abstract:
Visual Place Recognition (VPR) is the ability to recognize a place by providing a query im-
age of an unknown location. The goal is to identify an image from a geotagged database
of street-side imagery that depicts the same location as the query. In outdoor environ-
ments, recognizing a place is challenging due to the visual differences between query
and database images. To develop a robust VPR method capable of handling environ-
mental changes, the image representation must possess high discrimination to distinguish
relevant from non-relevant features. However, the vast number of features between the
query image and the dataset image complicates the computational process. The chal-
lenge here lies in finding an efficient way to represent images. The objective of this thesis
is to present VPR methods that are resilient to dynamic environmental changes while also
being efficient in terms of reducing computational demands. To achieve this goal, this dis-
sertation explores how to create image representations that adaptively focus on specific
image content. To this end, four contributions are proposed. The first and second contribu-
tions concentrate on developing efficient representation methods for accurate visual place
retrieval and recognition systems. We propose methods for reducing the computational
cost of calculating similarity between two vectors. As our third contribution, we suggest a
hybrid feature that remains robust in the face of environmental changes. Subsequently,
we extract valuable features from these hybrid representations to create an efficient VPR
system. As our fourth contribution, instead of compelling the algorithm to learn relevant
and irrelevant image examples, we propose a method that can predict unique features by
learning both relevant and non-relevant features in a data-driven manner. In conclusion,
the numerous experiments and analyses conducted in this thesis yield quantitative and
qualitative results that are on par with the most advanced VPR and retrieval techniques.
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Author's Homepage:
https://tcdlocalportal.tcd.ie/pls/EnterApex/f?p=800:71:0::::P71_USERNAME:ALJUAIDRDescription:
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Author: Aljuaidi, Reem
Advisor:
Manzke, MichaelPublisher:
Trinity College Dublin. School of Computer Science & Statistics. Discipline of Computer ScienceType of material:
ThesisCollections:
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