Multi-Session Visual SLAM for Illumination-Invariant Re-Localization in Indoor Environments
收藏DataCite Commons2026-03-04 更新2024-07-13 收录
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https://www.frdr-dfdr.ca/repo/dataset/2cb2a758-f9c4-460a-82b3-c1c206780b74
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For robots navigating using only a camera, illumination changes in indoor environments can cause re-localization failures during autonomous navigation. In this paper, a multi-session visual SLAM approach is presented to create a map made of multiple variations of the same locations in different illumination conditions. The multi-session map can then be used at any hour of the day for improved re-localization capability. The approach presented is independent of the visual features used, and this is demonstrated by comparing re-localization performance between multi-session maps created using the RTAB-Map library with SURF, SIFT, BRIEF, BRISK, KAZE, DAISY and SuperPoint visual features. The approach is tested on six mapping and six localization sessions recorded at 30 minute intervals during sunset using a Google Tango phone in a real apartment, which is the dataset provided here. This dataset has been used to evaluate the approach used in this paper: M. Labbé and F. Michaud, “Multi-Session Visual SLAM for Illumination-Invariant Re-Localization in Indoor Environments,” in Frontiers in Robotics and AI, vol. 9, 2022.
提供机构:
Federated Research Data Repository / dépôt fédéré de données de recherche
创建时间:
2024-04-05



