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Eintrag in der Universitätsbibliographie der TU Chemnitz


Schubert, Stefan
Protzel, Peter (Prof. Dr.) ; Lilienthal, Achim (Prof. Dr.) (Gutachter)

Visual Place Recognition in Changing Environments using Additional Data-Inherent Knowledge


Kurzfassung in englisch

Visual place recognition is the task of finding same places in a set of database images for a given set of query images. This becomes particularly challenging for long-term applications when the environmental condition changes between or within the database and query set, e.g., from day to night. Visual place recognition in changing environments can be used if global position data like GPS is not available or very inaccurate, or for redundancy. It is required for tasks like loop closure detection in SLAM, candidate selection for global localization, or multi-robot/multi-session mapping and map merging.

In contrast to pure image retrieval, visual place recognition can often build upon additional information and data for improvements in performance, runtime, or memory usage. This includes additional data-inherent knowledge about information that is contained in the image sets themselves because of the way they were recorded. Using data-inherent knowledge avoids the dependency on other sensors, which increases the generality of methods for an integration into many existing place recognition pipelines.

This thesis focuses on the usage of additional data-inherent knowledge. After the discussion of basics about visual place recognition, the thesis gives a systematic overview of existing data-inherent knowledge and corresponding methods. Subsequently, the thesis concentrates on a deeper consideration and exploitation of four different types of additional data-inherent knowledge. This includes 1) sequences, i.e., the database and query set are recorded as spatio-temporal sequences so that consecutive images are also adjacent in the world, 2) knowledge of whether the environmental conditions within the database and query set are constant or continuously changing, 3) intra-database similarities between the database images, and 4) intra-query similarities between the query images. Except for sequences, all types have received only little attention in the literature so far.

For the exploitation of knowledge about constant conditions within the database and query set (e.g., database: summer, query: winter), the thesis evaluates different descriptor standardization techniques. For the alternative scenario of continuous condition changes (e.g., database: sunny to rainy, query: sunny to cloudy), the thesis first investigates the qualitative and quantitative impact on the performance of image descriptors. It then proposes and evaluates four unsupervised learning methods, including our novel clustering-based descriptor standardization method K-STD and three PCA-based methods from the literature. To address the high computational effort of descriptor comparisons during place recognition, our novel method EPR for efficient place recognition is proposed. Given a query descriptor, EPR uses sequence information and intra-database similarities to identify nearly all matching descriptors in the database. For a structured combination of several sources of additional knowledge in a single graph, the thesis presents our novel graphical framework for place recognition. After the minimization of the graph's error with our proposed ICM-based optimization, the place recognition performance can be significantly improved. For an extensive experimental evaluation of all methods in this thesis and beyond, a benchmark for visual place recognition in changing environments is presented, which is composed of six datasets with thirty sequence combinations.

Universität: Technische Universität Chemnitz
Institut: Professur Prozessautomatisierung
Fakultät: Fakultät für Elektrotechnik und Informationstechnik
Dokumentart: Dissertation
Betreuer: Protzel, Peter (Prof. Dr.)
URL/URN: https://nbn-resolving.org/urn:nbn:de:bsz:ch1-qucosa2-872740
Quelle: Chemnitz : Technische Universität Chemnitz, 2023. - 234 S.
SWD-Schlagwörter: Robotik , Lokalisation , Bildverarbeitung , SLAM-Verfahren
Freie Schlagwörter (Deutsch): kamerabasierte Wiedererkennung von Orten in sich verändernden Umgebungen , Schleifenschlusserkennung , Simultaneous Localization and Mapping , SLAM , Lokalisation , Deep Learning basierende Bilddeskriptoren , kontinuierlich veränderliche Umgebungen , Zufallsprojektion , Binarisierung , Deskriptorstandardisierung , effektiver Deskriptorvergleich , Sequenzmethode , Graphoptimierung , Faktorgraph , ICM
Freie Schlagwörter (Englisch): visual place recognition in changing environments , loop closure detection , simultaneous localization and mapping , SLAM , localization , deep learning image descriptors , continuously changing environments , random projection , binarization , descriptor standardization , efficient descriptor comparison , sequence method , graph optimization , factor graph , iterated conditional modes , ICM
DDC-Sachgruppe: Spezielle Computerverfahren
Sprache: englisch
Tag der mündlichen Prüfung 26.09.2023

 

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