基于语义通信的卷积神经网络增强图像分类

Nivine Guler , Zied Ben Hazem
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引用次数: 0

摘要

在AI-IoT环境下,传统的集中式云计算方式导致网络传输量大,通信延迟,对智能任务性能产生负面影响。本研究通过引入一种创新的智能任务语义通信系统模型,利用深度学习技术来解决这些问题。重点研究AI-IoT场景下受带宽和时延约束的图像分类任务。提出的模型具有定制的语义通信网络架构,其中在物联网设备上提取图像特征映射。然后根据提取的特征映射压缩这些语义关系,以降低物联网设备的功耗并减轻通信传输压力。各种网络性能指标的仿真和对比分析表明,与传统方法相比,所提出的语义通信系统在低信噪比下将图像分类精度提高了90%。当压缩比为80%时,当信噪比超过0时,分类精度损失最小,在2%以内。此外,在信噪比为20的情况下,与随机压缩相比,语义压缩传输方案的分类准确率提高了30%。此外,所提出的系统在执行时间上比传统方法高出约80%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Semantic communication-based convolutional neural network for enhanced image classification
In AI-IoT environments, the traditional centralized cloud computing approach leads to high network transmission volumes and communication delays, negatively affecting intelligent task performance. This study addresses these issues by introducing an innovative semantic communication system model for intelligent tasks, leveraging deep learning techniques. The research focuses on image classification tasks constrained by bandwidth and delay in AI-IoT scenarios. The proposed model features a tailored semantic communication network architecture, where image feature maps are extracted on IoT devices. These semantic relations are then compressed based on the extracted feature maps to reduce power consumption on IoT devices and mitigate communication transmission pressures. Simulations and comparative analyses of various network performance metrics show that the proposed semantic communication system improves image classification accuracy by 90%% at low signal-to-noise ratios compared to traditional methods. With an 80%% compression ratio, the classification accuracy loss is minimal—within 2%%—when the signal-to-noise ratio exceeds 0. Additionally, at a signal-to-noise ratio of 20, the semantic compression transmission scheme enhances classification accuracy by 30%% compared to random compression. Moreover, the proposed system outperforms traditional approaches in execution time by approximately 80%%.
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