RadarLCD: Learnable Radar-based Loop Closure Detection Pipeline
Mirko Usuelli, Matteo Frosi, Paolo Cudrano, Simone Mentasti, Matteo, Matteucci

TL;DR
RadarLCD is a new deep learning pipeline that improves radar-based loop closure detection by leveraging pre-trained radar odometry features, outperforming existing methods across various datasets.
Contribution
Introduces RadarLCD, a supervised deep learning approach for radar-based LCD that utilizes HERO odometry features to enhance detection accuracy.
Findings
RadarLCD outperforms state-of-the-art LCD methods.
The approach effectively handles radar noise and distortion.
Evaluation across multiple datasets confirms its robustness.
Abstract
Loop Closure Detection (LCD) is an essential task in robotics and computer vision, serving as a fundamental component for various applications across diverse domains. These applications encompass object recognition, image retrieval, and video analysis. LCD consists in identifying whether a robot has returned to a previously visited location, referred to as a loop, and then estimating the related roto-translation with respect to the analyzed location. Despite the numerous advantages of radar sensors, such as their ability to operate under diverse weather conditions and provide a wider range of view compared to other commonly used sensors (e.g., cameras or LiDARs), integrating radar data remains an arduous task due to intrinsic noise and distortion. To address this challenge, this research introduces RadarLCD, a novel supervised deep learning pipeline specifically designed for Loop…
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Taxonomy
TopicsRobotics and Sensor-Based Localization · Advanced Optical Sensing Technologies · Remote Sensing and LiDAR Applications
