Encrypted traffic classification method based on twin neural network
A neural network and traffic classification technology, applied in the field of network encryption traffic classification, can solve the problems of complex model structure and inability to adapt to complex and changeable network environment, and achieve the effect of reducing the amount of parameters, simple and efficient discovery, classification and simple structure
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[0039] A method for classifying encrypted traffic based on a Siamese neural network of the present invention will be described in detail below in conjunction with the accompanying drawings and embodiments.
[0040] Method example:
[0041] An embodiment of an encrypted traffic classification method based on a twin neural network of the present invention, the process of which is as follows figure 1As shown, the process is as follows:
[0042] Step 1: After grouping the PCAP file according to the quintuple, for each piece of network flow data to be classified, based on the designed data packet characteristics, only the first three data packets after the three-way handshake data packet are selected for packet feature extraction, Information as streaming data.
[0043] Among them, the extracted packet feature is the effective feature of the network flow data packet, including the position, time stamp, direction, key flag bit of TCP / IP header, and load information in each data pa...
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