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simmediumpolicy-learningmetric · varies

Cross-Modal Reinforcement Learning for Navigation with Degraded Depth Measurements

Description

This paper presents a cross-modal learning framework that exploits complementary information from depth and grayscale images for robust navigation. We introduce a Cross-Modal Wasserstein Autoencoder that learns shared latent representations by enforcing cross-modal consistency, enabling the system to infer depth-relevant features from grayscale observations when depth measurements are corrupted. The learned representations are integrated with a Reinforcement Learning-based policy for collision-f

Source

http://arxiv.org/abs/2603.22182v1