Semantic communications represent a significant breakthrough with respect to the current communication paradigm, as they focus on recovering the meaning behind the transmitted sequence of symbols, rather than the symbols themselves. In semantic communications, the scope of the destination is not to recover a list of symbols identical to the transmitted ones, but rather to recover a message that is semantically equivalent to the message emitted by the source. This paradigm shift introduces many degrees of freedom to the encoding and decoding rules that can be exploited to make communication systems much more efficient. In this article, we present an approach to semantic communication, building on three fundamental ideas: represent data over a topological space as a formal way to capture semantics as expressed through relations; use the information bottleneck principle as a way to identify relevant information and adapt the information bottleneck online, as a function of the wireless channel state, in order to strike an optimal trade-off between transmit power, reconstruction accuracy, and delay; and exploit probabilistic generative models as a general tool to adapt the transmission rate to the wireless channel state and make possible the regeneration of the transmitted images, or run classification tasks at the receiver side.
Semantic Communications Based on Adaptive Generative Models and Information Bottleneck
Sardellitti, Stefania;
2023-01-01
Abstract
Semantic communications represent a significant breakthrough with respect to the current communication paradigm, as they focus on recovering the meaning behind the transmitted sequence of symbols, rather than the symbols themselves. In semantic communications, the scope of the destination is not to recover a list of symbols identical to the transmitted ones, but rather to recover a message that is semantically equivalent to the message emitted by the source. This paradigm shift introduces many degrees of freedom to the encoding and decoding rules that can be exploited to make communication systems much more efficient. In this article, we present an approach to semantic communication, building on three fundamental ideas: represent data over a topological space as a formal way to capture semantics as expressed through relations; use the information bottleneck principle as a way to identify relevant information and adapt the information bottleneck online, as a function of the wireless channel state, in order to strike an optimal trade-off between transmit power, reconstruction accuracy, and delay; and exploit probabilistic generative models as a general tool to adapt the transmission rate to the wireless channel state and make possible the regeneration of the transmitted images, or run classification tasks at the receiver side.I documenti in IRIS sono protetti da copyright e tutti i diritti sono riservati, salvo diversa indicazione.