Don't Look Back: Robustifying Place Categorization for Viewpoint- and Condition-Invariant Place Recognition
Sourav Garg, Niko Suenderhauf, Michael Milford

TL;DR
This paper introduces a novel semantic-based place recognition method that is robust to viewpoint and appearance changes, outperforming existing techniques in challenging reverse-route scenarios.
Contribution
The work develops a new descriptor normalization scheme and leverages higher-order deep neural network layers for improved place recognition under extreme conditions.
Findings
Significant performance improvements over state-of-the-art methods.
Robust place recognition across large viewpoint and appearance changes.
Effective in both road-based and pedestrian-based datasets.
Abstract
When a human drives a car along a road for the first time, they later recognize where they are on the return journey typically without needing to look in their rear-view mirror or turn around to look back, despite significant viewpoint and appearance change. Such navigation capabilities are typically attributed to our semantic visual understanding of the environment [1] beyond geometry to recognizing the types of places we are passing through such as "passing a shop on the left" or "moving through a forested area". Humans are in effect using place categorization [2] to perform specific place recognition even when the viewpoint is 180 degrees reversed. Recent advances in deep neural networks have enabled high-performance semantic understanding of visual places and scenes, opening up the possibility of emulating what humans do. In this work, we develop a novel methodology for using the…
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