2021
DOI: 10.48550/arxiv.2111.02887
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Self-Supervised Radio-Visual Representation Learning for 6G Sensing

Abstract: In future 6G cellular networks, a joint communication and sensing protocol will allow the network to perceive the environment, opening the door for many new applications atop a unified communication-perception infrastructure. However, interpreting the sparse radio representation of sensing scenes is challenging, which hinders the potential of these emergent systems.We propose to combine radio and vision to automatically learn a radio-only sensing model with minimal human intervention. We want to build a radio … Show more

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