Cross-Modal Contrastive Learning of Representations for Navigation using Lightweight, Low-Cost Millimeter Wave Radar for Adverse Environmental Conditions
Jui-Te Huang, Chen-Lung Lu, Po-Kai Chang, Ching-I Huang, Chao-Chun, Hsu, Zu Lin Ewe, Po-Jui Huang, Hsueh-Cheng Wang

TL;DR
This paper introduces a novel cross-modal contrastive learning approach for autonomous navigation using low-cost millimeter-wave radar, enabling effective robot navigation in adverse conditions like smoke where traditional sensors fail.
Contribution
It presents a new representation learning method that aligns mmWave radar data with LiDAR data, improving navigation robustness under challenging environmental conditions.
Findings
Successfully navigated smoke-filled mazes
Outperformed generative reconstruction baselines
Enhanced robustness in adverse environments
Abstract
Deep reinforcement learning (RL), where the agent learns from mistakes, has been successfully applied to a variety of tasks. With the aim of learning collision-free policies for unmanned vehicles, deep RL has been used for training with various types of data, such as colored images, depth images, and LiDAR point clouds, without the use of classic map--localize--plan approaches. However, existing methods are limited by their reliance on cameras and LiDAR devices, which have degraded sensing under adverse environmental conditions (e.g., smoky environments). In response, we propose the use of single-chip millimeter-wave (mmWave) radar, which is lightweight and inexpensive, for learning-based autonomous navigation. However, because mmWave radar signals are often noisy and sparse, we propose a cross-modal contrastive learning for representation (CM-CLR) method that maximizes the agreement…
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Taxonomy
MethodsContrastive Learning
