CVROOct 24, 2024

On Model-Free Re-ranking for Visual Place Recognition with Deep Learned Local Features

arXiv:2410.18573v26 citationsh-index: 26IEEE Trans Intell Veh
Originality Incremental advance
AI Analysis

This work addresses visual place recognition for long-term autonomy systems, offering incremental improvements in re-ranking efficiency.

The paper tackles the problem of visual place recognition by introducing three new model-free re-ranking methods designed for deep-learned local features, achieving results on par with current state-of-the-art methods on challenging public datasets.

Re-ranking is the second stage of a visual place recognition task, in which the system chooses the best-matching images from a pre-selected subset of candidates. Model-free approaches compute the image pair similarity based on a spatial comparison of corresponding local visual features, eliminating the need for computationally expensive estimation of a model describing transformation between images. The article focuses on model-free re-ranking based on standard local visual features and their applicability in long-term autonomy systems. It introduces three new model-free re-ranking methods that were designed primarily for deep-learned local visual features. These features evince high robustness to various appearance changes, which stands as a crucial property for use with long-term autonomy systems. All the introduced methods were employed in a new visual place recognition system together with the D2-net feature detector (Dusmanu, 2019) and experimentally tested with diverse, challenging public datasets. The obtained results are on par with current state-of-the-art methods, affirming that model-free approaches are a viable and worthwhile path for long-term visual place recognition.

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