Utilizing Computer Vision Algorithms to Detect and Classify Cyberattacks in IoT Environments in Real-Time.

eIT(2023)

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摘要
Computer vision has proven itself capable of accurately detecting and classifying objects within images. This also works in cases where images are used as a way of representing data, without being actual photographs. In cybersecurity, computer vision is rarely used, however it has been used to detect botnets successfully. We applied computer vision to determine how well it would be able to detect and classify a large number of attacks and determined that it would be able to run at a decent rate on a Jetson Nano. This was accomplished by training a convolutional neural network using data publicly available in the IoT-23 database, which contains packet captures of IoT devices with and without different malware infections. The neural network was evaluated on an RTX 3050 and a Jetson Nano to see if it could be used in IoT.
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关键词
computer vision algorithms,convolutional neural network,cyberattack classification,cyberattack detection,IoT environments,Jetson Nano,RTX 3050
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