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ConvSequential-SLAM: a sequence-based, training-less visual place recognition technique for changing environments

ConvSequential-SLAM: a sequence-based, training-less visual place recognition technique for changing environments
ConvSequential-SLAM: a sequence-based, training-less visual place recognition technique for changing environments
Visual Place Recognition (VPR) is the ability to correctly recall a previously visited place under changing viewpoints and appearances. A large number of handcrafted and deep-learning-based VPR techniques exist, where the former suffer from appearance changes and the latter have significant computational needs. In this paper, we present a new handcrafted VPR technique, namely ConvSequential-SLAM, that achieves state-of-the-art place matching performance under challenging conditions. We utilise sequential information and block-normalisation to handle appearance changes, while using regional-convolutional matching to achieve viewpoint-invariance. We analyse content-overlap in-between query frames to find a minimum sequence length, while also re-using the image entropy information for environment-based sequence length tuning. State-of-the-art performance is reported in contrast to 9 contemporary VPR techniques on 4 public datasets. Qualitative insights and an ablation study on sequence length are also provided.
SLAM, sequence-based filtering, visual localization, visual place recognition
2169-3536
118673-118683
Tomita, Mihnea-Alexandru
9c6a0d8b-1793-47e3-ad9f-234834b81d61
Zaffar, Mubariz
4ecc6c61-2fff-48a2-9652-3c1564c34de9
Milford, Michael J.
9edf5ef3-4a6a-4d05-aec2-6146c00cd407
Mcdonald-Maier, Klaus D.
d35c2e77-744a-4318-9d9d-726459e64db9
Ehsan, Shoaib
ae8922f0-dbe0-4b22-8474-98e84d852de7
Tomita, Mihnea-Alexandru
9c6a0d8b-1793-47e3-ad9f-234834b81d61
Zaffar, Mubariz
4ecc6c61-2fff-48a2-9652-3c1564c34de9
Milford, Michael J.
9edf5ef3-4a6a-4d05-aec2-6146c00cd407
Mcdonald-Maier, Klaus D.
d35c2e77-744a-4318-9d9d-726459e64db9
Ehsan, Shoaib
ae8922f0-dbe0-4b22-8474-98e84d852de7

Tomita, Mihnea-Alexandru, Zaffar, Mubariz, Milford, Michael J., Mcdonald-Maier, Klaus D. and Ehsan, Shoaib (2021) ConvSequential-SLAM: a sequence-based, training-less visual place recognition technique for changing environments. IEEE Access, 9, 118673-118683. (doi:10.1109/ACCESS.2021.3107778).

Record type: Article

Abstract

Visual Place Recognition (VPR) is the ability to correctly recall a previously visited place under changing viewpoints and appearances. A large number of handcrafted and deep-learning-based VPR techniques exist, where the former suffer from appearance changes and the latter have significant computational needs. In this paper, we present a new handcrafted VPR technique, namely ConvSequential-SLAM, that achieves state-of-the-art place matching performance under challenging conditions. We utilise sequential information and block-normalisation to handle appearance changes, while using regional-convolutional matching to achieve viewpoint-invariance. We analyse content-overlap in-between query frames to find a minimum sequence length, while also re-using the image entropy information for environment-based sequence length tuning. State-of-the-art performance is reported in contrast to 9 contemporary VPR techniques on 4 public datasets. Qualitative insights and an ablation study on sequence length are also provided.

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ConvSequential-SLAM_A_Sequence-Based_Training-Less_Visual_Place_Recognition_Technique_for_Changing_Environments - Version of Record
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Accepted/In Press date: 18 August 2021
e-pub ahead of print date: 21 August 2021
Published date: 1 September 2021
Keywords: SLAM, sequence-based filtering, visual localization, visual place recognition

Identifiers

Local EPrints ID: 473479
URI: http://eprints.soton.ac.uk/id/eprint/473479
ISSN: 2169-3536
PURE UUID: 94e17571-dc19-4fc8-a400-23f18abd9fb3
ORCID for Shoaib Ehsan: ORCID iD orcid.org/0000-0001-9631-1898

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Date deposited: 19 Jan 2023 17:40
Last modified: 17 Mar 2024 04:16

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Contributors

Author: Mihnea-Alexandru Tomita
Author: Mubariz Zaffar
Author: Michael J. Milford
Author: Klaus D. Mcdonald-Maier
Author: Shoaib Ehsan ORCID iD

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