TL;DR
This paper presents a hybrid visual localization system combining weightless neural networks for place recognition and CNNs for relative pose estimation, achieving high accuracy in GPS-denied environments.
Contribution
It introduces a novel hybrid approach integrating WNN-based place recognition with CNN-based relative pose estimation for improved global localization.
Findings
Achieves 90% localization accuracy with 1.20m mean error.
Outperforms traditional SLAM in accuracy.
Comparable to GPS in localization precision.
Abstract
Currently, self-driving cars rely greatly on the Global Positioning System (GPS) infrastructure, albeit there is an increasing demand for alternative methods for GPS-denied environments. One of them is known as place recognition, which associates images of places with their corresponding positions. We previously proposed systems based on Weightless Neural Networks (WNN) to address this problem as a classification task. This encompasses solely one part of the global localization, which is not precise enough for driverless cars. Instead of just recognizing past places and outputting their poses, it is desired that a global localization system estimates the pose of current place images. In this paper, we propose to tackle this problem as follows. Firstly, given a live image, the place recognition system returns the most similar image and its pose. Then, given live and recollected images, a…
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