Abstract
This thesis investigates the problem of visual place recognition, which is a fundamental part of many visual-based localization systems, and therefore of high value to the computer vision community. In particular, we address two problems in the field: the first half of this dissertation is devoted to the presentation and evaluation of a novel dataset in a very under-explored type of environment, namely garden environments. The second half of this thesis addresses the algorithmic part of visual place recognition and proposes a shift of paradigm to learn visual descriptors that encode stronger, reliable, and quantifiable representations of image similarity.
Original language | English |
---|---|
Qualification | Doctor of Philosophy |
Awarding Institution |
|
Supervisors/Advisors |
|
Award date | 31-Oct-2023 |
Place of Publication | [Groningen] |
Publisher | |
DOIs | |
Publication status | Published - 2023 |