基于对象-属性-关系表示的视频语义通信

Qiyuan Du;Yiping Duan;Qianqian Yang;Xiaoming Tao;Mérouane Debbah
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引用次数: 0

摘要

随着多媒体数据量的快速增长,虚拟现实和未来视频流等应用对高效视频传输的需求越来越大。语义通信正在成为确保在低带宽、高噪声环境下高效、可靠传输的重要技术。然而,目前大多数方法都集中在依赖于端到端训练的联合源信道编码(JSCC)上。这些方法通常缺乏可解释的语义表示,难以适应各种下游任务。在本文中,我们介绍了使用对象-属性-关系(OAR)作为视频的语义框架,以促进低比特率编码和增强JSCC过程,从而实现更有效的视频传输。我们利用桨序列进行低比特率表示和生成视频重建。此外,我们将OAR合并到图像JSCC模型中,以优先考虑对下游任务更重要的区域的通信资源。我们在交通监控视频数据集上的实验评估了我们的方法在视频传输性能方面的有效性。实证结果表明,基于ar的视频编码方法不仅在较低比特率下优于H.265编码,而且可以与JSCC协同实现鲁棒高效的视频传输。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Object-Attribute-Relation Representation-Based Video Semantic Communication
With the rapid growth of multimedia data volume, there is an increasing need for efficient video transmission in applications such as virtual reality and future video streaming services. Semantic communication is emerging as a vital technique for ensuring efficient and reliable transmission in low-bandwidth, high-noise settings. However, most current approaches focus on joint source-channel coding (JSCC) that depends on end-to-end training. These methods often lack an interpretable semantic representation and struggle with adaptability to various downstream tasks. In this paper, we introduce the use of object-attribute-relation (OAR) as a semantic framework for videos to facilitate low bit-rate coding and enhance the JSCC process for more effective video transmission. We utilize OAR sequences for both low bit-rate representation and generative video reconstruction. Additionally, we incorporate OAR into the image JSCC model to prioritize communication resources for areas more critical to downstream tasks. Our experiments on traffic surveillance video datasets assess the effectiveness of our approach in terms of video transmission performance. The empirical findings demonstrate that our OAR-based video coding method not only outperforms H.265 coding at lower bit-rates but also synergizes with JSCC to deliver robust and efficient video transmission.
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