Результаты исследований: Рабочие материалы › Препринт
Dominating Set Database Selection for Visual Place Recognition. / Kornilova, Anastasiia; Moskalenko, Ivan; Pushkin, Timofei; Tojiboev, Fakhriddin; Tariverdizadeh, Rahim; Ferrer, Gonzalo.
2023.Результаты исследований: Рабочие материалы › Препринт
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TY - UNPB
T1 - Dominating Set Database Selection for Visual Place Recognition
AU - Kornilova, Anastasiia
AU - Moskalenko, Ivan
AU - Pushkin, Timofei
AU - Tojiboev, Fakhriddin
AU - Tariverdizadeh, Rahim
AU - Ferrer, Gonzalo
PY - 2023/3/9
Y1 - 2023/3/9
N2 - This paper presents an approach for creating a visual place recognition (VPR) database for localization in indoor environments from RGBD scanning sequences. The proposed approach is formulated as a minimization problem in terms of dominating set algorithm for graph, constructed from spatial information, and referred as DominatingSet. Our algorithm shows better scene coverage in comparison to other methodologies that are used for database creation. Also, we demonstrate that using DominatingSet, a database size could be up to 250-1400 times smaller than the original scanning sequence while maintaining a recall rate of more than 80% on testing sequences. We evaluated our algorithm on 7-scenes and BundleFusion datasets and an additionally recorded sequence in a highly repetitive office setting. In addition, the database selection can produce weakly-supervised labels for fine-tuning neural place recognition algorithms to particular settings, improving even more their accuracy. The paper also presents a fully automated pipeline for VPR database creation from RGBD scanning sequences, as well as a set of metrics for VPR database evaluation. The code and released data are available on our web-page — https://prime-slam.github.io/place-recognition-db/
AB - This paper presents an approach for creating a visual place recognition (VPR) database for localization in indoor environments from RGBD scanning sequences. The proposed approach is formulated as a minimization problem in terms of dominating set algorithm for graph, constructed from spatial information, and referred as DominatingSet. Our algorithm shows better scene coverage in comparison to other methodologies that are used for database creation. Also, we demonstrate that using DominatingSet, a database size could be up to 250-1400 times smaller than the original scanning sequence while maintaining a recall rate of more than 80% on testing sequences. We evaluated our algorithm on 7-scenes and BundleFusion datasets and an additionally recorded sequence in a highly repetitive office setting. In addition, the database selection can produce weakly-supervised labels for fine-tuning neural place recognition algorithms to particular settings, improving even more their accuracy. The paper also presents a fully automated pipeline for VPR database creation from RGBD scanning sequences, as well as a set of metrics for VPR database evaluation. The code and released data are available on our web-page — https://prime-slam.github.io/place-recognition-db/
KW - RGB-D Perception
KW - Robot Vision
KW - Simultaneous Localization and Mapping
M3 - Preprint
BT - Dominating Set Database Selection for Visual Place Recognition
ER -
ID: 116352141