An accurate identification method for network devices based on spatial attention mechanism

Xiuting Wang, Ruixiang Li, Shaoyong Du, X. Luo
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引用次数: 1

Abstract

With the metaverse being the development direction of the next generation Internet, the popularity of intelligent devices and the maturity of various emerging technologies, more and more intelligent devices try to connect to the Internet, which poses a major threat to the management and security protection of network equipment. At present, the mainstream method of network equipment identification in the metaverse is to obtain the network traffic data generated in the process of device communication, extract the device features through analysis and processing, and identify the device based on a variety of learning algorithms. Such methods often require manual participation, and it is difficult to capture the small differences between similar devices, leading to identification errors. Therefore, we propose a deep learning device recognition method based on spatial attention mechanism. Firstly, we extract the required feature fields from the acquired network traffic data. Then, Then, we normalize the data and convert it into grayscale images. After that, we add spatial attention mechanism to CNN and MLP respectively to increase the difference between similar network devices and further improve the recognition accuracy. Finally, we identify device based on the deep learning model. A large number of experiments were carried out on 31 types of network devices such as web cameras, wireless routers and smartwatches. The results show that the accuracy of the proposed recognition method based on spatial attention mechanism is increased by 0.8% and 2.0%, respectively, compared with the recognition method based only on deep learning model under the CNN and MLP models. The method proposed in this paper is significantly superior to the existing method of device type recognition based only on deep learning model.
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基于空间注意机制的网络设备准确识别方法
随着元宇宙作为下一代互联网的发展方向,智能设备的普及和各种新兴技术的成熟,越来越多的智能设备试图接入互联网,这对网络设备的管理和安全防护构成了重大威胁。目前,元宇宙中网络设备识别的主流方法是获取设备通信过程中产生的网络流量数据,通过分析处理提取设备特征,并基于多种学习算法对设备进行识别。这种方法通常需要人工参与,而且很难捕捉到类似设备之间的微小差异,从而导致识别错误。因此,我们提出了一种基于空间注意机制的深度学习设备识别方法。首先,从采集的网络流量数据中提取所需的特征域;然后,对数据进行归一化,并将其转换为灰度图像。之后,我们分别在CNN和MLP中加入空间注意机制,增加相似网络设备之间的差异,进一步提高识别准确率。最后,我们基于深度学习模型对设备进行识别。在网络摄像头、无线路由器、智能手表等31种网络设备上进行了大量实验。结果表明,与CNN和MLP模型下仅基于深度学习模型的识别方法相比,基于空间注意机制的识别方法的准确率分别提高了0.8%和2.0%。本文提出的方法明显优于现有的仅基于深度学习模型的设备类型识别方法。
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