2022
DOI: 10.1007/978-3-031-21065-5_26
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AttDLNet: Attention-Based Deep Network for 3D LiDAR Place Recognition

Abstract: Robust and reliable place recognition and loop closure detection in agricultural environments is still an open problem. In particular, orchards are a difficult case study due to structural similarity across the entire field. In this work, we address the place recognition problem in orchards resorting to 3D LiDAR data, which is considered a key modality for robustness. Hence, we propose ORCHNet, a deep-learning-based approach that maps 3D-LiDAR scans to global descriptors. Specifically, this work proposes a new… Show more

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Cited by 12 publications
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References 45 publications
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