Semantic communication has emerged as the breakthrough beyond the Shannon theorem by transmitting and receiving semantic information instead of data bits or symbols regardless of its content. This paper proposes a two-stage reconstruction process to boost the system's performance. In the first phase, the image information is first decoded from the noisy received data by exploiting the channel knowledge. The decoded image is enhanced by a post-filter and image statistics. Different metrics are exploited to evaluate the image restoration quality of our considered model. Numerical results are obtained using natural images that verify the superior improvements of the proposed two-stage reconstruction process over the traditional decoded data. Moreover, the different metrics assessing the system performance based on their criteria can be conflicted with each other.
翻译:语义交流作为超越香农定理的突破,通过传输和接收语义信息,而不是数据比特或符号,而不论其内容如何,成为超越香农定理的突破。本文件提出一个两个阶段的重建进程,以提高系统的性能。在第一阶段,图像信息首先通过利用频道知识,从杂乱的数据中解码出来。解码图像通过过滤后和图像统计数据得到加强。利用不同的指标来评价我们所考虑的模式的图像恢复质量。利用自然图像来核查拟议的两阶段重建进程的优劣,而不是传统的解码数据。此外,根据标准评估系统性能的不同指标可以相互冲突。