Appearance-based loop closure detection combining lines and learned points for low-textured environments

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Abstract

Hand-crafted point descriptors have been traditionally used for visual loop closure detection. However, in low-textured environments, it is usually difficult to find enough point features and, hence, the performance of such algorithms degrade. Under this context, this paper proposes a loop closure detection method that combines lines and learned points to work, particularly, in scenarios where hand-crafted points fail. To index previous images, we adopt separate incremental binary Bag-of-Words (BoW) schemes for points and lines. Moreover, we adopt a binarization procedure for features’ descriptors to benefit from the advantages of learned features into a binary BoW model. Furthermore, image candidates from each BoW instance are merged using a novel query-adaptive late fusion approach. Finally, a spatial verification stage, which integrates appearance and geometry perspectives, allows us to enhance the global performance of the method. Our approach is validated using several public datasets, outperforming other state-of-the-art solutions in most cases, especially in low-textured scenarios.

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Company-Corcoles, J. P., Garcia-Fidalgo, E., & Ortiz, A. (2022). Appearance-based loop closure detection combining lines and learned points for low-textured environments. Autonomous Robots, 46(3), 451–467. https://doi.org/10.1007/s10514-021-10032-7

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