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MILD: Multi-Index Hashing Based Loop Closure Detection

Lei Han, Lu Fang

Year
2017
Citations
3

Abstract

Loop Closure Detection (LCD) has been proved to be extremely useful in global consistent visual Simultaneously Localization and Mapping (SLAM) and appearance-based robot relocalization. Methods exploiting binary features in bag of words representation have recently gained a lot of popularity for their efficiency, but suffer from low recall due to the inherent drawback that high dimensional binary feature descriptors lack well-defined centroids. In this paper, we propose a realtime LCD approach called MILD (Multi-Index Hashing for Loop closure Detection), in which image similarity is measured by feature matching directly to achieve high recall without introducing extra computational complexity with the aid of Multi-Index Hashing (MIH). A theoretical analysis of the approximate image similarity measurement using MIH is presented, which reveals the trade-off between efficiency and accuracy from a probabilistic perspective. Extensive comparisons with state-of-the-art LCD methods demonstrate the superiority of MILD in both efficiency and accuracy.

Keywords

Computer scienceArtificial intelligenceHash functionFeature (linguistics)Similarity (geometry)Pattern recognition (psychology)Locality-sensitive hashingMatching (statistics)Probabilistic logicRepresentation (politics)

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