Jiale Wu , Celimuge Wu , Yangfei Lin , Tsutomu Yoshinaga , Lei Zhong , Xianfu Chen , Yusheng Ji
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引用次数: 0
Abstract
With the rapid development of artificial intelligence and the widespread use of the Internet of Things, semantic communication, as an emerging communication paradigm, has been attracting great interest. Taking image transmission as an example, from the semantic communication's view, not all pixels in the images are equally important for certain receivers. The existing semantic communication systems directly perform semantic encoding and decoding on the whole image, in which the region of interest cannot be identified. In this paper, we propose a novel semantic communication system for image transmission that can distinguish between Regions Of Interest (ROI) and Regions Of Non-Interest (RONI) based on semantic segmentation, where a semantic segmentation algorithm is used to classify each pixel of the image and distinguish ROI and RONI. The system also enables high-quality transmission of ROI with lower communication overheads by transmissions through different semantic communication networks with different bandwidth requirements. An improved metric θPSNR is proposed to evaluate the transmission accuracy of the novel semantic transmission network. Experimental results show that our proposed system achieves a significant performance improvement compared with existing approaches, namely, existing semantic communication approaches and the conventional approach without semantics.
随着人工智能的快速发展和物联网的广泛应用,语义通信作为一种新兴的通信范式,一直备受关注。以图像传输为例,从语义通信的角度来看,图像中并非所有像素点对某些接收者都同样重要。现有的语义通信系统直接对整个图像进行语义编码和解码,无法识别其中的兴趣区域。在本文中,我们提出了一种新型的图像传输语义通信系统,该系统可根据语义分割区分感兴趣区域(ROI)和非感兴趣区域(RONI),其中语义分割算法用于对图像的每个像素进行分类,并区分 ROI 和 RONI。该系统还能通过不同带宽要求的语义通信网络,以较低的通信开销实现 ROI 的高质量传输。我们提出了一个改进指标θPSNR,用于评估新型语义传输网络的传输精度。实验结果表明,与现有方法(即现有语义通信方法和无语义的传统方法)相比,我们提出的系统实现了显著的性能提升。
期刊介绍:
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