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Multimodal Information Bottleneck for Deep Reinforcement Learning with Multiple Sensors

Description

Reinforcement learning has achieved promising results on robotic control tasks but struggles to leverage information effectively from multiple sensory modalities that differ in many characteristics. Recent works construct auxiliary losses based on reconstruction or mutual information to extract joint representations from multiple sensory inputs to improve the sample efficiency and performance of reinforcement learning algorithms. However, the representations learned by these methods could captur

Source

http://arxiv.org/abs/2410.17551v1