Deja vu: Scalable Place Recognition Using Mutually Supportive Feature Frequencies
Adam Jacobson, Walter Scheirer, Michael Milford

TL;DR
This paper introduces a scalable place recognition method inspired by biological neural encoding, leveraging mutually supportive feature frequencies to improve efficiency and scalability in robotic mapping and localization.
Contribution
The paper proposes a novel place recognition algorithm based on repetitive, mutually complementary landmark frequencies, inspired by neural encoding in the brain, enabling efficient and scalable mapping.
Findings
Successfully recognized places using ground-based and aerial datasets.
Achieved potential for sub-linear storage growth in large environments.
Demonstrated scalability to large global datasets and dimensions.
Abstract
Learning and recognition is a fundamental process performed in many robot operations such as mapping and localization. The majority of approaches share some common characteristics, such as attempting to extract salient features, landmarks or signatures, and growth in data storage and computational requirements as the size of the environment increases. In biological systems, spatial encoding in the brain is definitively known to be performed using a fixed-size neural encoding framework - the place, head-direction and grid cells found in the mammalian hippocampus and entorhinal cortex. Particularly paradoxically, one of the main encoding centers - the grid cells - represents the world using a highly aliased, repetitive encoding structure where one neuron represents an unbounded number of places in the world. Inspired by this system, in this paper we invert the normal approach used in…
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