Large scale visual place recognition with sub-linear storage growth
Huu Le, Michael Milford

TL;DR
This paper introduces an advanced visual place recognition system that employs a novel encoding method inspired by mammalian grid cells, achieving sub-linear storage growth, scalability, and robustness in large environments.
Contribution
It presents a new encoding approach with flexible pattern selection, parallel processing, and feature filtering, significantly improving storage efficiency and robustness over previous models.
Findings
Achieves better sub-linear storage growth
Reduces storage requirements per map location
Demonstrates scalability and robustness on large datasets
Abstract
Robotic and animal mapping systems share many of the same objectives and challenges, but differ in one key aspect: where much of the research in robotic mapping has focused on solving the data association problem, the grid cell neurons underlying maps in the mammalian brain appear to intentionally break data association by encoding many locations with a single grid cell neuron. One potential benefit of this intentional aliasing is both sub-linear map storage and computational requirements growth with environment size, which we demonstrated in a previous proof-of-concept study that detected and encoded mutually complementary co-prime pattern frequencies in the visual map data. In this research, we solve several of the key theoretical and practical limitations of that prototype model and achieve significantly better sub-linear storage growth, a factor reduction in storage requirements per…
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Taxonomy
TopicsAdvanced Image and Video Retrieval Techniques · Robotics and Sensor-Based Localization · Domain Adaptation and Few-Shot Learning
